743 lines
29 KiB
Python
743 lines
29 KiB
Python
import numpy as np
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import math
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from map import Map, Obstacle
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from skimage.draw import line_aa
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import matplotlib.pyplot as plt
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from scipy import sparse
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import osqp
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# Colors
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DRIVABLE_AREA = '#BDC3C7'
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WAYPOINTS = '#D0D3D4'
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PATH_CONSTRAINTS = '#F5B041'
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OBSTACLE = '#2E4053'
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############
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# Waypoint #
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############
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class Waypoint:
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def __init__(self, x, y, psi, kappa):
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"""
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Waypoint object containing x, y location in global coordinate system,
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orientation of waypoint psi and local curvature kappa. Waypoint further
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contains an associated reference velocity computed by the speed profile
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and a path width specified by upper and lower bounds.
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:param x: x position in global coordinate system | [m]
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:param y: y position in global coordinate system | [m]
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:param psi: orientation of waypoint | [rad]
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:param kappa: local curvature | [1 / m]
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"""
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self.x = x
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self.y = y
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self.psi = psi
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self.kappa = kappa
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# Reference velocity at this waypoint according to speed profile
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self.v_ref = None
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# Information about drivable area at waypoint
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# upper and lower bound of drivable area orthogonal to
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# waypoint orientation.
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# Upper bound: free drivable area to the left of center-line in m
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# Lower bound: free drivable area to the right of center-line in m
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self.lb = None
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self.ub = None
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self.static_border_cells = None
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self.dynamic_border_cells = None
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def __sub__(self, other):
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"""
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Overload subtract operator. Difference of two waypoints is equal to
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their euclidean distance.
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:param other: subtrahend
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:return: euclidean distance between two waypoints
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"""
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return ((self.x - other.x)**2 + (self.y - other.y)**2)**0.5
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##################
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# Reference Path #
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##################
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class ReferencePath:
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def __init__(self, map, wp_x, wp_y, resolution, smoothing_distance,
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max_width, circular):
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"""
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Reference Path object. Create a reference trajectory from specified
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corner points with given resolution. Smoothing around corners can be
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applied. Waypoints represent center-line of the path with specified
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maximum width to both sides.
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:param map: map object on which path will be placed
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:param wp_x: x coordinates of corner points in global coordinates
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:param wp_y: y coordinates of corner points in global coordinates
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:param resolution: resolution of the path in m/wp
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:param smoothing_distance: number of waypoints used for smoothing the
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path by averaging neighborhood of waypoints
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:param max_width: maximum width of path to both sides in m
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:param circular: True if path circular
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"""
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# Precision
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self.eps = 1e-12
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# Map
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self.map = map
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# Resolution of the path
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self.resolution = resolution
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# Look ahead distance for path averaging
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self.smoothing_distance = smoothing_distance
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# Circular flag
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self.circular = circular
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# List of waypoint objects
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self.waypoints = self._construct_path(wp_x, wp_y)
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# Number of waypoints
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self.n_waypoints = len(self.waypoints)
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# Length of path
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self.length, self.segment_lengths = self._compute_length()
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# Compute path width (attribute of each waypoint)
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self._compute_width(max_width=max_width)
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def _construct_path(self, wp_x, wp_y):
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"""
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Construct path from given waypoints.
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:param wp_x: x coordinates of waypoints in global coordinates
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:param wp_y: y coordinates of waypoints in global coordinates
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:return: list of waypoint objects
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"""
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# Number of waypoints
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n_wp = [int(np.sqrt((wp_x[i + 1] - wp_x[i]) ** 2 +
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(wp_y[i + 1] - wp_y[i]) ** 2) /
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self.resolution) for i in range(len(wp_x) - 1)]
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# Construct waypoints with specified resolution
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gp_x, gp_y = wp_x[-1], wp_y[-1]
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wp_x = [np.linspace(wp_x[i], wp_x[i+1], n_wp[i], endpoint=False).
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tolist() for i in range(len(wp_x)-1)]
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wp_x = [wp for segment in wp_x for wp in segment] + [gp_x]
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wp_y = [np.linspace(wp_y[i], wp_y[i + 1], n_wp[i], endpoint=False).
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tolist() for i in range(len(wp_y) - 1)]
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wp_y = [wp for segment in wp_y for wp in segment] + [gp_y]
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# Smooth path
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wp_xs = []
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wp_ys = []
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for wp_id in range(self.smoothing_distance, len(wp_x) -
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self.smoothing_distance):
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wp_xs.append(np.mean(wp_x[wp_id - self.smoothing_distance:wp_id
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+ self.smoothing_distance + 1]))
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wp_ys.append(np.mean(wp_y[wp_id - self.smoothing_distance:wp_id
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+ self.smoothing_distance + 1]))
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# Construct list of waypoint objects
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waypoints = list(zip(wp_xs, wp_ys))
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waypoints = self._construct_waypoints(waypoints)
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return waypoints
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def _construct_waypoints(self, waypoint_coordinates):
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"""
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Reformulate conventional waypoints (x, y) coordinates into waypoint
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objects containing (x, y, psi, kappa, ub, lb)
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:param waypoint_coordinates: list of (x, y) coordinates of waypoints in
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global coordinates
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:return: list of waypoint objects for entire reference path
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"""
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# List containing waypoint objects
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waypoints = []
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# Iterate over all waypoints
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for wp_id in range(len(waypoint_coordinates) - 1):
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# Get start and goal waypoints
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current_wp = np.array(waypoint_coordinates[wp_id])
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next_wp = np.array(waypoint_coordinates[wp_id + 1])
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# Difference vector
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dif_ahead = next_wp - current_wp
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# Angle ahead
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psi = np.arctan2(dif_ahead[1], dif_ahead[0])
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# Distance to next waypoint
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dist_ahead = np.linalg.norm(dif_ahead, 2)
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# Get x and y coordinates of current waypoint
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x, y = current_wp[0], current_wp[1]
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# Compute local curvature at waypoint
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# first waypoint
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if wp_id == 0:
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kappa = 0
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else:
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prev_wp = np.array(waypoint_coordinates[wp_id - 1])
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dif_behind = current_wp - prev_wp
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angle_behind = np.arctan2(dif_behind[1], dif_behind[0])
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angle_dif = np.mod(psi - angle_behind + math.pi, 2 * math.pi) \
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- math.pi
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kappa = angle_dif / (dist_ahead + self.eps)
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waypoints.append(Waypoint(x, y, psi, kappa))
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return waypoints
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def _compute_length(self):
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"""
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Compute length of center-line path as sum of euclidean distance between
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waypoints.
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:return: length of center-line path in m
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"""
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segment_lengths = [0.0] + [self.waypoints[wp_id+1] - self.waypoints
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[wp_id] for wp_id in range(len(self.waypoints)-1)]
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s = sum(segment_lengths)
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return s, segment_lengths
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def _compute_width(self, max_width):
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"""
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Compute the width of the path by checking the maximum free space to
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the left and right of the center-line.
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:param max_width: maximum width of the path.
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"""
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# Iterate over all waypoints
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for wp_id, wp in enumerate(self.waypoints):
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# List containing information for current waypoint
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width_info = []
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# Check width left and right of the center-line
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for i, dir in enumerate(['left', 'right']):
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# Get angle orthogonal to path in current direction
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if dir == 'left':
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angle = np.mod(wp.psi + math.pi / 2 + math.pi,
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2 * math.pi) - math.pi
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else:
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angle = np.mod(wp.psi - math.pi / 2 + math.pi,
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2 * math.pi) - math.pi
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# Get closest cell to orthogonal vector
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t_x, t_y = self.map.w2m(wp.x + max_width * np.cos(angle), wp.y
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+ max_width * np.sin(angle))
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# Compute distance to orthogonal cell on path border
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b_value, b_cell = self._get_min_width(wp, t_x, t_y, max_width)
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# Add information to list for current waypoint
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width_info.append(b_value)
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width_info.append(b_cell)
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# Set waypoint attributes with width to the left and right
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wp.ub = width_info[0]
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wp.lb = -1 * width_info[2] # minus can be assumed as waypoints
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# represent center-line of the path
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# Set border cells of waypoint
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wp.static_border_cells = (width_info[1], width_info[3])
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wp.dynamic_border_cells = (width_info[1], width_info[3])
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def _get_min_width(self, wp, t_x, t_y, max_width):
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"""
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Compute the minimum distance between the current waypoint and the
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orthogonal cell on the border of the path
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:param wp: current waypoint
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:param t_x: x coordinate of border cell in map coordinates
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:param t_y: y coordinate of border cell in map coordinates
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:param max_width: maximum path width in m
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:return: min_width to border and corresponding cell
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"""
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# Get neighboring cells of orthogonal cell (account for
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# discretization inaccuracy)
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tn_x, tn_y = [], []
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for i in range(-1, 2, 1):
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for j in range(-1, 2, 1):
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tn_x.append(t_x+i)
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tn_y.append(t_y+j)
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# Get pixel coordinates of waypoint
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wp_x, wp_y = self.map.w2m(wp.x, wp.y)
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# Get Bresenham paths to all possible cells
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paths = []
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for t_x, t_y in zip(tn_x, tn_y):
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x_list, y_list, _ = line_aa(wp_x, wp_y, t_x, t_y)
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paths.append(zip(x_list, y_list))
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# Compute minimum distance to border cell
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min_width = max_width
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# map inspected cell to world coordinates
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min_cell = self.map.m2w(t_x, t_y)
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for path in paths:
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for cell in path:
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t_x, t_y = cell[0], cell[1]
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# If path goes through occupied cell
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if self.map.data[t_y, t_x] == 0:
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# Get world coordinates
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c_x, c_y = self.map.m2w(t_x, t_y)
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cell_dist = np.sqrt((wp.x - c_x) ** 2 + (wp.y - c_y) ** 2)
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if cell_dist < min_width:
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min_width = cell_dist
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min_cell = (c_x, c_y)
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return min_width, min_cell
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def compute_speed_profile(self, Constraints):
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"""
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Compute a speed profile for the path. Assign a reference velocity
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to each waypoint based on its curvature.
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:param Constraints: constraints on acceleration and velocity
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curvature of the path
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"""
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# Set optimization horizon
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N = self.n_waypoints - 1
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# Constraints
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a_min = np.ones(N-1) * Constraints['a_min']
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a_max = np.ones(N-1) * Constraints['a_max']
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v_min = np.ones(N) * Constraints['v_min']
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v_max = np.ones(N) * Constraints['v_max']
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# Maximum lateral acceleration
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ay_max = Constraints['ay_max']
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# Inequality Matrix
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D1 = np.zeros((N-1, N))
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# Iterate over horizon
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for i in range(N):
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# Get information about current waypoint
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current_waypoint = self.get_waypoint(i)
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next_waypoint = self.get_waypoint(i+1)
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# distance between waypoints
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li = next_waypoint - current_waypoint
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# curvature of waypoint
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ki = current_waypoint.kappa
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# Fill operator matrix
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# dynamics of acceleration
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if i < N-1:
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D1[i, i:i+2] = np.array([-1/(2*li), 1/(2*li)])
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# Compute dynamic constraint on velocity
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v_max_dyn = np.sqrt(ay_max / (np.abs(ki) + self.eps))
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if v_max_dyn < v_max[i]:
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v_max[i] = v_max_dyn
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# Construct inequality matrix
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D1 = sparse.csc_matrix(D1)
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D2 = sparse.eye(N)
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D = sparse.vstack([D1, D2], format='csc')
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# Get upper and lower bound vectors for inequality constraints
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l = np.hstack([a_min, v_min])
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u = np.hstack([a_max, v_max])
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# Set cost matrices
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P = sparse.eye(N, format='csc')
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q = -1 * v_max
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# Solve optimization problem
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problem = osqp.OSQP()
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problem.setup(P=P, q=q, A=D, l=l, u=u, verbose=False)
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speed_profile = problem.solve().x
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# Assign reference velocity to every waypoint
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for i, wp in enumerate(self.waypoints[:-1]):
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wp.v_ref = speed_profile[i]
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self.waypoints[-1].v_ref = self.waypoints[-2].v_ref
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def get_waypoint(self, wp_id):
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"""
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Get waypoint corresponding to wp_id. Circular indexing supported.
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:param wp_id: unique waypoint ID
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:return: waypoint object
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"""
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# Allow circular indexing if circular path
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if wp_id >= self.n_waypoints and self.circular:
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wp_id = np.mod(wp_id, self.n_waypoints)
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# Terminate execution if end of path reached
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elif wp_id >= self.n_waypoints and not self.circular:
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print('Reached end of path!')
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exit(1)
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return self.waypoints[wp_id]
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def show(self, display_drivable_area=True):
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"""
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Display path object on current figure.
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:param display_drivable_area: If True, display arrows indicating width
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of drivable area
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"""
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# Clear figure
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plt.clf()
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# Disabled ticks
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plt.xticks([])
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plt.yticks([])
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# Plot map in gray-scale and set extent to match world coordinates
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canvas = np.ones(self.map.data.shape)
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# canvas = np.flipud(self.map.data)
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plt.imshow(canvas, cmap='gray',
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extent=[self.map.origin[0], self.map.origin[0] +
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self.map.width * self.map.resolution,
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self.map.origin[1], self.map.origin[1] +
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self.map.height * self.map.resolution], vmin=0.0,
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vmax=1.0)
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# Get x and y coordinates for all waypoints
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wp_x = np.array([wp.x for wp in self.waypoints])
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wp_y = np.array([wp.y for wp in self.waypoints])
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# Get x and y locations of border cells for upper and lower bound
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wp_ub_x = np.array([wp.static_border_cells[0][0] for wp in self.waypoints])
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wp_ub_y = np.array([wp.static_border_cells[0][1] for wp in self.waypoints])
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wp_lb_x = np.array([wp.static_border_cells[1][0] for wp in self.waypoints])
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wp_lb_y = np.array([wp.static_border_cells[1][1] for wp in self.waypoints])
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# Plot waypoints
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# colors = [wp.v_ref for wp in self.waypoints]
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plt.scatter(wp_x, wp_y, c=WAYPOINTS, s=10)
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# Plot arrows indicating drivable area
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if display_drivable_area:
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plt.quiver(wp_x, wp_y, wp_ub_x - wp_x, wp_ub_y - wp_y, scale=1,
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units='xy', width=0.2*self.resolution, color=DRIVABLE_AREA,
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headwidth=1, headlength=0)
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plt.quiver(wp_x, wp_y, wp_lb_x - wp_x, wp_lb_y - wp_y, scale=1,
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units='xy', width=0.2*self.resolution, color=DRIVABLE_AREA,
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headwidth=1, headlength=0)
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# Plot border of path
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bl_x = np.array([wp.static_border_cells[0][0] for wp in
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self.waypoints] +
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[self.waypoints[0].static_border_cells[0][0]])
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bl_y = np.array([wp.static_border_cells[0][1] for wp in
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self.waypoints] +
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[self.waypoints[0].static_border_cells[0][1]])
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br_x = np.array([wp.static_border_cells[1][0] for wp in
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self.waypoints] +
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[self.waypoints[0].static_border_cells[1][0]])
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br_y = np.array([wp.static_border_cells[1][1] for wp in
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self.waypoints] +
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[self.waypoints[0].static_border_cells[1][1]])
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# If circular path, connect start and end point
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if self.circular:
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plt.plot(bl_x, bl_y, color='#5E5E5E')
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plt.plot(br_x, br_y, color='#5E5E5E')
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# If not circular, close path at start and end
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else:
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plt.plot(bl_x[:-1], bl_y[:-1], color=OBSTACLE)
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plt.plot(br_x[:-1], br_y[:-1], color=OBSTACLE)
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plt.plot((bl_x[-2], br_x[-2]), (bl_y[-2], br_y[-2]), color=OBSTACLE)
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plt.plot((bl_x[0], br_x[0]), (bl_y[0], br_y[0]), color=OBSTACLE)
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# Plot dynamic path constraints
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# Get x and y locations of border cells for upper and lower bound
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wp_ub_x = np.array(
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[wp.dynamic_border_cells[0][0] for wp in self.waypoints]+
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[self.waypoints[0].static_border_cells[0][0]])
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wp_ub_y = np.array(
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[wp.dynamic_border_cells[0][1] for wp in self.waypoints]+
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[self.waypoints[0].static_border_cells[0][1]])
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wp_lb_x = np.array(
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[wp.dynamic_border_cells[1][0] for wp in self.waypoints]+
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[self.waypoints[0].static_border_cells[1][0]])
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wp_lb_y = np.array(
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[wp.dynamic_border_cells[1][1] for wp in self.waypoints]+
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[self.waypoints[0].static_border_cells[1][1]])
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plt.plot(wp_ub_x, wp_ub_y, c=PATH_CONSTRAINTS)
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plt.plot(wp_lb_x, wp_lb_y, c=PATH_CONSTRAINTS)
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# Plot obstacles
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for obstacle in self.map.obstacles:
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obstacle.show()
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def _compute_free_segments(self, wp, min_width):
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"""
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Compute free path segments.
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:param wp: waypoint object
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:param min_width: minimum width of valid segment
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:return: segment candidates as list of tuples (ub_cell, lb_cell)
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"""
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# Candidate segments
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free_segments = []
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# Get waypoint's border cells in map coordinates
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ub_p = self.map.w2m(wp.static_border_cells[0][0],
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wp.static_border_cells[0][1])
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lb_p = self.map.w2m(wp.static_border_cells[1][0],
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wp.static_border_cells[1][1])
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# Compute path from left border cell to right border cell
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x_list, y_list, _ = line_aa(ub_p[0], ub_p[1], lb_p[0], lb_p[1])
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# Initialize upper and lower bound of drivable area to
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# upper bound of path
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ub_o, lb_o = ub_p, ub_p
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# Assume occupied path
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free_cells = False
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# Iterate over path from left border to right border
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for x, y in zip(x_list[1:], y_list[1:]):
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# If cell is free, update lower bound
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if self.map.data[y, x] == 1:
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# Free cell detected
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free_cells = True
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lb_o = (x, y)
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# If cell is occupied or end of path, end segment. Add segment
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# to list of candidates. Then, reset upper and lower bound to
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# current cell.
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if (self.map.data[y, x] == 0 or (x, y) == lb_p) and free_cells:
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# Set lower bound to border cell of segment
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lb_o = (x, y)
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# Transform upper and lower bound cells to world coordinates
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ub_o = self.map.m2w(ub_o[0], ub_o[1])
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lb_o = self.map.m2w(lb_o[0], lb_o[1])
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# If segment larger than threshold, add to candidates
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if np.sqrt((ub_o[0]-lb_o[0])**2 + (ub_o[1]-lb_o[1])**2) > \
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min_width:
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free_segments.append((ub_o, lb_o))
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# Start new segment
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ub_o = (x, y)
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free_cells = False
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elif self.map.data[y, x] == 0 and not free_cells:
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ub_o = (x, y)
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lb_o = (x, y)
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return free_segments
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def update_path_constraints(self, wp_id, N, min_width, safety_margin):
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"""
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Compute upper and lower bounds of the drivable area orthogonal to
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the given waypoint.
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"""
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# container for constraints and border cells
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ub_hor = []
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lb_hor = []
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border_cells_hor = []
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border_cells_hor_sm = []
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# Iterate over horizon
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for n in range(N):
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# get corresponding waypoint
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wp = self.get_waypoint(wp_id+n)
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# Get list of free segments
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free_segments = self._compute_free_segments(wp, min_width)
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# First waypoint in horizon uses largest segment
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if n == 0:
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segment_lengths = [np.sqrt((seg[0][0]-seg[1][0])**2 +
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(seg[0][1]-seg[1][1])**2) for seg in free_segments]
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ls_id = segment_lengths.index(max(segment_lengths))
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ub_ls, lb_ls = free_segments[ls_id]
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else:
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# Get border cells of selected segment at previous waypoint
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ub_pw, lb_pw = border_cells_hor[n-1]
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ub_pw, lb_pw = list(ub_pw), list(lb_pw)
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# Project border cells onto new waypoint in path direction
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wp_prev = self.get_waypoint(wp_id+n-1)
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delta_s = wp_prev - wp
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ub_pw[0] += delta_s * np.cos(wp_prev.psi)
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ub_pw[1] += delta_s * np.cos(wp_prev.psi)
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lb_pw[0] += delta_s * np.sin(wp_prev.psi)
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lb_pw[1] += delta_s * np.sin(wp_prev.psi)
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# Iterate over free segments for current waypoint
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if len(free_segments) >= 2:
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# container for overlap of segments with projection
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segment_offsets = []
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for free_segment in free_segments:
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# Get border cells of segment
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ub_fs, lb_fs = free_segment
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# distance between upper bounds and lower bounds
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d_ub = np.sqrt((ub_fs[0]-ub_pw[0])**2 + (ub_fs[1]-ub_pw[1])**2)
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d_lb = np.sqrt((lb_fs[0]-lb_pw[0])**2 + (lb_fs[1]-lb_pw[1])**2)
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mean_dist = (d_ub + d_lb) / 2
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# Append offset to projected previous segment
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segment_offsets.append(mean_dist)
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# Select segment with minimum offset to projected previous
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# segment
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ls_id = segment_offsets.index(min(segment_offsets))
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ub_ls, lb_ls = free_segments[ls_id]
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# Select free segment in case of only one candidate
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elif len(free_segments) == 1:
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ub_ls, lb_ls = free_segments[0]
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# Set waypoint coordinates as bound cells if no feasible
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# segment available
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else:
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ub_ls, lb_ls = (wp.x, wp.y), (wp.x, wp.y)
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# Check sign of upper and lower bound
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angle_ub = np.mod(np.arctan2(ub_ls[1] - wp.y, ub_ls[0] - wp.x)
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- wp.psi + math.pi, 2 * math.pi) - math.pi
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angle_lb = np.mod(np.arctan2(lb_ls[1] - wp.y, lb_ls[0] - wp.x)
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- wp.psi + math.pi, 2 * math.pi) - math.pi
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sign_ub = np.sign(angle_ub)
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sign_lb = np.sign(angle_lb)
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# Compute upper and lower bound of largest drivable area
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ub = sign_ub * np.sqrt(
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(ub_ls[0] - wp.x) ** 2 + (ub_ls[1] - wp.y) ** 2)
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lb = sign_lb * np.sqrt(
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(lb_ls[0] - wp.x) ** 2 + (lb_ls[1] - wp.y) ** 2)
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# Subtract safety margin
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ub -= safety_margin
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lb += safety_margin
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# Check feasibility of the path
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if ub < lb:
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# Upper and lower bound of 0 indicate an infeasible path
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# given the specified safety margin
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ub, lb = 0.0, 0.0
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# Compute absolute angle of bound cell
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angle_ub = np.mod(math.pi / 2 + wp.psi + math.pi,
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2 * math.pi) - math.pi
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angle_lb = np.mod(-math.pi / 2 + wp.psi + math.pi,
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2 * math.pi) - math.pi
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# Compute cell on bound for computed distance ub and lb
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ub_ls = wp.x + ub * np.cos(angle_ub), wp.y + ub * np.sin(
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angle_ub)
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lb_ls = wp.x - lb * np.cos(angle_lb), wp.y - lb * np.sin(
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angle_lb)
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bound_cells_sm = (ub_ls, lb_ls)
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# Compute cell on bound for computed distance ub and lb
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ub_ls = wp.x + (ub + safety_margin) * np.cos(angle_ub), wp.y + (ub + safety_margin) * np.sin(
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angle_ub)
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lb_ls = wp.x - (lb - safety_margin) * np.cos(angle_lb), wp.y - (lb - safety_margin) * np.sin(
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angle_lb)
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bound_cells = (ub_ls, lb_ls)
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# Append results
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ub_hor.append(ub)
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lb_hor.append(lb)
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border_cells_hor.append(list(bound_cells))
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border_cells_hor_sm.append(list(bound_cells_sm))
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# Assign dynamic border cells to waypoints
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wp.dynamic_border_cells = bound_cells_sm
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return np.array(ub_hor), np.array(lb_hor), border_cells_hor_sm
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if __name__ == '__main__':
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# Select Track | 'Real_Track' or 'Sim_Track'
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path = 'Sim_Track'
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if path == 'Sim_Track':
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# Load map file
|
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map = Map(file_path='sim_map.png', origin=[-1, -2], resolution=0.005)
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|
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# Specify waypoints
|
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wp_x = [-0.75, -0.25, -0.25, 0.25, 0.25, 1.25, 1.25, 0.75, 0.75, 1.25,
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1.25, -0.75, -0.75, -0.25]
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wp_y = [-1.5, -1.5, -0.5, -0.5, -1.5, -1.5, -1, -1, -0.5, -0.5, 0, 0,
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-1.5, -1.5]
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|
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# Specify path resolution
|
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path_resolution = 0.05 # m / wp
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|
|
# Create reference path
|
|
reference_path = ReferencePath(map, wp_x, wp_y, path_resolution,
|
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smoothing_distance=5, max_width=0.15,
|
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circular=True)
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|
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# Add obstacles
|
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obs1 = Obstacle(cx=0.0, cy=0.0, radius=0.05)
|
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obs2 = Obstacle(cx=-0.8, cy=-0.5, radius=0.08)
|
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obs3 = Obstacle(cx=-0.7, cy=-1.5, radius=0.05)
|
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obs4 = Obstacle(cx=-0.3, cy=-1.0, radius=0.08)
|
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obs5 = Obstacle(cx=0.3, cy=-1.0, radius=0.05)
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obs6 = Obstacle(cx=0.75, cy=-1.5, radius=0.05)
|
|
obs7 = Obstacle(cx=0.7, cy=-0.9, radius=0.07)
|
|
obs8 = Obstacle(cx=1.2, cy=0.0, radius=0.08)
|
|
reference_path.map.add_obstacles([obs1, obs2, obs3, obs4, obs5, obs6, obs7,
|
|
obs8])
|
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|
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elif path == 'Real_Track':
|
|
|
|
# Load map file
|
|
map = Map(file_path='real_map.png', origin=(-30.0, -24.0),
|
|
resolution=0.06)
|
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|
|
# Specify waypoints
|
|
wp_x = [-1.62, -6.04, -6.6, -5.36, -2.0, 5.9,
|
|
11.9, 7.3, 0.0, -1.62]
|
|
wp_y = [3.24, -1.4, -3.0, -5.36, -6.65, 3.5,
|
|
10.9, 14.5, 5.2, 3.24]
|
|
|
|
# Specify path resolution
|
|
path_resolution = 0.2 # m / wp
|
|
|
|
# Create reference path
|
|
reference_path = ReferencePath(map, wp_x, wp_y, path_resolution,
|
|
smoothing_distance=5, max_width=2.0,
|
|
circular=True)
|
|
|
|
# Add obstacles and bounds to map
|
|
cone1 = Obstacle(-5.9, -2.9, 0.2)
|
|
cone2 = Obstacle(-2.3, -5.9, 0.2)
|
|
cone3 = Obstacle(10.9, 10.7, 0.2)
|
|
cone4 = Obstacle(7.4, 13.5, 0.2)
|
|
table1 = Obstacle(-0.30, -1.75, 0.2)
|
|
table2 = Obstacle(1.55, 1.00, 0.2)
|
|
table3 = Obstacle(4.30, 3.22, 0.2)
|
|
obstacle_list = [cone1, cone2, cone3, cone4, table1, table2, table3]
|
|
map.add_obstacles(obstacle_list)
|
|
|
|
bound1 = ((-0.02, -2.72), (1.5, 1.0))
|
|
bound2 = ((4.43, 3.07), (1.5, 1.0))
|
|
bound3 = ((4.43, 3.07), (7.5, 6.93))
|
|
bound4 = ((7.28, 13.37), (-3.32, -0.12))
|
|
boundary_list = [bound1, bound2, bound3, bound4]
|
|
map.add_boundary(boundary_list)
|
|
|
|
else:
|
|
reference_path = None
|
|
print('Invalid path!')
|
|
exit(1)
|
|
|
|
ub, lb, border_cells = reference_path.update_path_constraints(0,
|
|
reference_path.n_waypoints, 0.1, 0.01)
|
|
SpeedProfileConstraints = {'a_min': -0.1, 'a_max': 0.5,
|
|
'v_min': 0, 'v_max': 1.0, 'ay_max': 4.0}
|
|
reference_path.compute_speed_profile(SpeedProfileConstraints)
|
|
# Get x and y locations of border cells for upper and lower bound
|
|
for wp_id in range(reference_path.n_waypoints):
|
|
reference_path.waypoints[wp_id].dynamic_border_cells = border_cells[wp_id]
|
|
reference_path.show()
|
|
plt.show()
|
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|
|
|
|
|