gtsam/gtsam/navigation/ImuFactor.h

592 lines
28 KiB
C++

/* ----------------------------------------------------------------------------
* GTSAM Copyright 2010, Georgia Tech Research Corporation,
* Atlanta, Georgia 30332-0415
* All Rights Reserved
* Authors: Frank Dellaert, et al. (see THANKS for the full author list)
* See LICENSE for the license information
* -------------------------------------------------------------------------- */
/**
* @file ImuFactor.h
* @author Luca Carlone, Stephen Williams, Richard Roberts, Vadim Indelman, David Jensen
**/
#pragma once
/* GTSAM includes */
#include <gtsam/nonlinear/NonlinearFactor.h>
#include <gtsam/linear/GaussianFactor.h>
#include <gtsam/navigation/ImuBias.h>
#include <gtsam/geometry/Pose3.h>
#include <gtsam/base/LieVector.h>
#include <gtsam/base/debug.h>
/* External or standard includes */
#include <ostream>
namespace gtsam {
/**
*
* @addtogroup SLAM
*
* If you are using the factor, please cite:
* L. Carlone, Z. Kira, C. Beall, V. Indelman, F. Dellaert, Eliminating conditionally
* independent sets in factor graphs: a unifying perspective based on smart factors,
* Int. Conf. on Robotics and Automation (ICRA), 2014.
*
** REFERENCES:
* [1] G.S. Chirikjian, "Stochastic Models, Information Theory, and Lie Groups", Volume 2, 2008.
* [2] T. Lupton and S.Sukkarieh, "Visual-Inertial-Aided Navigation for High-Dynamic Motion in Built
* Environments Without Initial Conditions", TRO, 28(1):61-76, 2012.
* [3] L. Carlone, S. Williams, R. Roberts, "Preintegrated IMU factor: Computation of the Jacobian Matrices", Tech. Report, 2013.
*/
class ImuFactor: public NoiseModelFactor5<Pose3,LieVector,Pose3,LieVector,imuBias::ConstantBias> {
public:
/** Struct to store results of preintegrating IMU measurements. Can be build
* incrementally so as to avoid costly integration at time of factor construction. */
/** CombinedPreintegratedMeasurements accumulates (integrates) the IMU measurements (rotation rates and accelerations)
* and the corresponding covariance matrix. The measurements are then used to build the Preintegrated IMU factor*/
class PreintegratedMeasurements {
public:
imuBias::ConstantBias biasHat; ///< Acceleration and angular rate bias values used during preintegration
Matrix measurementCovariance; ///< (Raw measurements uncertainty) Covariance of the vector [integrationError measuredAcc measuredOmega] in R^(9X9)
Vector3 deltaPij; ///< Preintegrated relative position (does not take into account velocity at time i, see deltap+, in [2]) (in frame i)
Vector3 deltaVij; ///< Preintegrated relative velocity (in global frame)
Rot3 deltaRij; ///< Preintegrated relative orientation (in frame i)
double deltaTij; ///< Time interval from i to j
Matrix3 delPdelBiasAcc; ///< Jacobian of preintegrated position w.r.t. acceleration bias
Matrix3 delPdelBiasOmega; ///< Jacobian of preintegrated position w.r.t. angular rate bias
Matrix3 delVdelBiasAcc; ///< Jacobian of preintegrated velocity w.r.t. acceleration bias
Matrix3 delVdelBiasOmega; ///< Jacobian of preintegrated velocity w.r.t. angular rate bias
Matrix3 delRdelBiasOmega; ///< Jacobian of preintegrated rotation w.r.t. angular rate bias
Matrix PreintMeasCov; ///< Covariance matrix of the preintegrated measurements (first-order propagation from *measurementCovariance*)
bool use2ndOrderIntegration_; ///< Controls the order of integration
/** Default constructor, initialize with no IMU measurements */
PreintegratedMeasurements(
const imuBias::ConstantBias& bias, ///< Current estimate of acceleration and rotation rate biases
const Matrix3& measuredAccCovariance, ///< Covariance matrix of measuredAcc
const Matrix3& measuredOmegaCovariance, ///< Covariance matrix of measuredAcc
const Matrix3& integrationErrorCovariance, ///< Covariance matrix of measuredAcc
const bool use2ndOrderIntegration = false ///< Controls the order of integration
) : biasHat(bias), measurementCovariance(9,9), deltaPij(Vector3::Zero()), deltaVij(Vector3::Zero()), deltaTij(0.0),
delPdelBiasAcc(Matrix3::Zero()), delPdelBiasOmega(Matrix3::Zero()),
delVdelBiasAcc(Matrix3::Zero()), delVdelBiasOmega(Matrix3::Zero()),
delRdelBiasOmega(Matrix3::Zero()), PreintMeasCov(9,9), use2ndOrderIntegration_(use2ndOrderIntegration)
{
measurementCovariance << integrationErrorCovariance , Matrix3::Zero(), Matrix3::Zero(),
Matrix3::Zero(), measuredAccCovariance, Matrix3::Zero(),
Matrix3::Zero(), Matrix3::Zero(), measuredOmegaCovariance;
PreintMeasCov = Matrix::Zero(9,9);
}
PreintegratedMeasurements() :
biasHat(imuBias::ConstantBias()), measurementCovariance(9,9), deltaPij(Vector3::Zero()), deltaVij(Vector3::Zero()), deltaTij(0.0),
delPdelBiasAcc(Matrix3::Zero()), delPdelBiasOmega(Matrix3::Zero()),
delVdelBiasAcc(Matrix3::Zero()), delVdelBiasOmega(Matrix3::Zero()),
delRdelBiasOmega(Matrix3::Zero()), PreintMeasCov(9,9)
{
measurementCovariance = Matrix::Zero(9,9);
PreintMeasCov = Matrix::Zero(9,9);
}
/** print */
void print(const std::string& s = "Preintegrated Measurements:") const {
std::cout << s << std::endl;
biasHat.print(" biasHat");
std::cout << " deltaTij " << deltaTij << std::endl;
std::cout << " deltaPij [ " << deltaPij.transpose() << " ]" << std::endl;
std::cout << " deltaVij [ " << deltaVij.transpose() << " ]" << std::endl;
deltaRij.print(" deltaRij ");
std::cout << " measurementCovariance [ " << measurementCovariance << " ]" << std::endl;
std::cout << " PreintMeasCov [ " << PreintMeasCov << " ]" << std::endl;
}
/** equals */
bool equals(const PreintegratedMeasurements& expected, double tol=1e-9) const {
return biasHat.equals(expected.biasHat, tol)
&& equal_with_abs_tol(measurementCovariance, expected.measurementCovariance, tol)
&& equal_with_abs_tol(deltaPij, expected.deltaPij, tol)
&& equal_with_abs_tol(deltaVij, expected.deltaVij, tol)
&& deltaRij.equals(expected.deltaRij, tol)
&& std::fabs(deltaTij - expected.deltaTij) < tol
&& equal_with_abs_tol(delPdelBiasAcc, expected.delPdelBiasAcc, tol)
&& equal_with_abs_tol(delPdelBiasOmega, expected.delPdelBiasOmega, tol)
&& equal_with_abs_tol(delVdelBiasAcc, expected.delVdelBiasAcc, tol)
&& equal_with_abs_tol(delVdelBiasOmega, expected.delVdelBiasOmega, tol)
&& equal_with_abs_tol(delRdelBiasOmega, expected.delRdelBiasOmega, tol);
}
void resetIntegration(){
deltaPij = Vector3::Zero();
deltaVij = Vector3::Zero();
deltaRij = Rot3();
deltaTij = 0.0;
delPdelBiasAcc = Matrix3::Zero();
delPdelBiasOmega = Matrix3::Zero();
delVdelBiasAcc = Matrix3::Zero();
delVdelBiasOmega = Matrix3::Zero();
delRdelBiasOmega = Matrix3::Zero();
PreintMeasCov = Matrix::Zero(9,9);
}
/** Add a single IMU measurement to the preintegration. */
void integrateMeasurement(
const Vector3& measuredAcc, ///< Measured linear acceleration (in body frame)
const Vector3& measuredOmega, ///< Measured angular velocity (in body frame)
double deltaT, ///< Time step
boost::optional<const Pose3&> body_P_sensor = boost::none ///< Sensor frame
) {
// NOTE: order is important here because each update uses old values.
// First we compensate the measurements for the bias
Vector3 correctedAcc = biasHat.correctAccelerometer(measuredAcc);
Vector3 correctedOmega = biasHat.correctGyroscope(measuredOmega);
// Then compensate for sensor-body displacement: we express the quantities (originally in the IMU frame) into the body frame
if(body_P_sensor){
Matrix3 body_R_sensor = body_P_sensor->rotation().matrix();
correctedOmega = body_R_sensor * correctedOmega; // rotation rate vector in the body frame
Matrix3 body_omega_body__cross = skewSymmetric(correctedOmega);
correctedAcc = body_R_sensor * correctedAcc - body_omega_body__cross * body_omega_body__cross * body_P_sensor->translation().vector();
// linear acceleration vector in the body frame
}
const Vector3 theta_incr = correctedOmega * deltaT; // rotation vector describing rotation increment computed from the current rotation rate measurement
const Rot3 Rincr = Rot3::Expmap(theta_incr); // rotation increment computed from the current rotation rate measurement
const Matrix3 Jr_theta_incr = Rot3::rightJacobianExpMapSO3(theta_incr); // Right jacobian computed at theta_incr
// Update Jacobians
/* ----------------------------------------------------------------------------------------------------------------------- */
if(!use2ndOrderIntegration_){
delPdelBiasAcc += delVdelBiasAcc * deltaT;
delPdelBiasOmega += delVdelBiasOmega * deltaT;
}else{
delPdelBiasAcc += delVdelBiasAcc * deltaT - 0.5 * deltaRij.matrix() * deltaT*deltaT;
delPdelBiasOmega += delVdelBiasOmega * deltaT - 0.5 * deltaRij.matrix()
* skewSymmetric(biasHat.correctAccelerometer(measuredAcc)) * deltaT*deltaT * delRdelBiasOmega;
}
delVdelBiasAcc += -deltaRij.matrix() * deltaT;
delVdelBiasOmega += -deltaRij.matrix() * skewSymmetric(correctedAcc) * deltaT * delRdelBiasOmega;
delRdelBiasOmega = Rincr.inverse().matrix() * delRdelBiasOmega - Jr_theta_incr * deltaT;
// Update preintegrated measurements covariance
/* ----------------------------------------------------------------------------------------------------------------------- */
Matrix3 Z_3x3 = Matrix3::Zero();
Matrix3 I_3x3 = Matrix3::Identity();
const Vector3 theta_i = Rot3::Logmap(deltaRij); // parametrization of so(3)
const Matrix3 Jr_theta_i = Rot3::rightJacobianExpMapSO3(theta_i);
Rot3 Rot_j = deltaRij * Rincr;
const Vector3 theta_j = Rot3::Logmap(Rot_j); // parametrization of so(3)
const Matrix3 Jrinv_theta_j = Rot3::rightJacobianExpMapSO3inverse(theta_j);
// Update preintegrated measurements covariance: as in [2] we consider a first order propagation that
// can be seen as a prediction phase in an EKF framework
Matrix H_pos_pos = I_3x3;
Matrix H_pos_vel = I_3x3 * deltaT;
Matrix H_pos_angles = Z_3x3;
Matrix H_vel_pos = Z_3x3;
Matrix H_vel_vel = I_3x3;
Matrix H_vel_angles = - deltaRij.matrix() * skewSymmetric(correctedAcc) * Jr_theta_i * deltaT;
// analytic expression corresponding to the following numerical derivative
// Matrix H_vel_angles = numericalDerivative11<LieVector, LieVector>(boost::bind(&PreIntegrateIMUObservations_delta_vel, correctedOmega, correctedAcc, deltaT, _1, deltaVij), theta_i);
Matrix H_angles_pos = Z_3x3;
Matrix H_angles_vel = Z_3x3;
Matrix H_angles_angles = Jrinv_theta_j * Rincr.inverse().matrix() * Jr_theta_i;
// analytic expression corresponding to the following numerical derivative
// Matrix H_angles_angles = numericalDerivative11<LieVector, LieVector>(boost::bind(&PreIntegrateIMUObservations_delta_angles, correctedOmega, deltaT, _1), thetaij);
// overall Jacobian wrt preintegrated measurements (df/dx)
Matrix F(9,9);
F << H_pos_pos, H_pos_vel, H_pos_angles,
H_vel_pos, H_vel_vel, H_vel_angles,
H_angles_pos, H_angles_vel, H_angles_angles;
// first order uncertainty propagation
// the deltaT allows to pass from continuous time noise to discrete time noise
PreintMeasCov = F * PreintMeasCov * F.transpose() + measurementCovariance * deltaT ;
// Update preintegrated measurements
/* ----------------------------------------------------------------------------------------------------------------------- */
if(!use2ndOrderIntegration_){
deltaPij += deltaVij * deltaT;
}else{
deltaPij += deltaVij * deltaT + 0.5 * deltaRij.matrix() * biasHat.correctAccelerometer(measuredAcc) * deltaT*deltaT;
}
deltaVij += deltaRij.matrix() * correctedAcc * deltaT;
deltaRij = deltaRij * Rincr;
deltaTij += deltaT;
}
/* ++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++ */
// This function is only used for test purposes (compare numerical derivatives wrt analytic ones)
static inline Vector PreIntegrateIMUObservations_delta_vel(const Vector& msr_gyro_t, const Vector& msr_acc_t, const double msr_dt,
const Vector3& delta_angles, const Vector& delta_vel_in_t0){
// Note: all delta terms refer to an IMU\sensor system at t0
Vector body_t_a_body = msr_acc_t;
Rot3 R_t_to_t0 = Rot3::Expmap(delta_angles);
return delta_vel_in_t0 + R_t_to_t0.matrix() * body_t_a_body * msr_dt;
}
// This function is only used for test purposes (compare numerical derivatives wrt analytic ones)
static inline Vector PreIntegrateIMUObservations_delta_angles(const Vector& msr_gyro_t, const double msr_dt,
const Vector3& delta_angles){
// Note: all delta terms refer to an IMU\sensor system at t0
// Calculate the corrected measurements using the Bias object
Vector body_t_omega_body= msr_gyro_t;
Rot3 R_t_to_t0 = Rot3::Expmap(delta_angles);
R_t_to_t0 = R_t_to_t0 * Rot3::Expmap( body_t_omega_body*msr_dt );
return Rot3::Logmap(R_t_to_t0);
}
/* ++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++++ */
private:
/** Serialization function */
friend class boost::serialization::access;
template<class ARCHIVE>
void serialize(ARCHIVE & ar, const unsigned int version) {
ar & BOOST_SERIALIZATION_NVP(biasHat);
ar & BOOST_SERIALIZATION_NVP(measurementCovariance);
ar & BOOST_SERIALIZATION_NVP(deltaPij);
ar & BOOST_SERIALIZATION_NVP(deltaVij);
ar & BOOST_SERIALIZATION_NVP(deltaRij);
ar & BOOST_SERIALIZATION_NVP(deltaTij);
ar & BOOST_SERIALIZATION_NVP(delPdelBiasAcc);
ar & BOOST_SERIALIZATION_NVP(delPdelBiasOmega);
ar & BOOST_SERIALIZATION_NVP(delVdelBiasAcc);
ar & BOOST_SERIALIZATION_NVP(delVdelBiasOmega);
ar & BOOST_SERIALIZATION_NVP(delRdelBiasOmega);
}
};
private:
typedef ImuFactor This;
typedef NoiseModelFactor5<Pose3,LieVector,Pose3,LieVector,imuBias::ConstantBias> Base;
PreintegratedMeasurements preintegratedMeasurements_;
Vector3 gravity_;
Vector3 omegaCoriolis_;
boost::optional<Pose3> body_P_sensor_; ///< The pose of the sensor in the body frame
bool use2ndOrderCoriolis_; ///< Controls whether higher order terms are included when calculating the Coriolis Effect
public:
/** Shorthand for a smart pointer to a factor */
#if !defined(_MSC_VER) && __GNUC__ == 4 && __GNUC_MINOR__ > 5
typedef typename boost::shared_ptr<ImuFactor> shared_ptr;
#else
typedef boost::shared_ptr<ImuFactor> shared_ptr;
#endif
/** Default constructor - only use for serialization */
ImuFactor() : preintegratedMeasurements_(imuBias::ConstantBias(), Matrix3::Zero(), Matrix3::Zero(), Matrix3::Zero()) {}
/** Constructor */
ImuFactor(
Key pose_i, ///< previous pose key
Key vel_i, ///< previous velocity key
Key pose_j, ///< current pose key
Key vel_j, ///< current velocity key
Key bias, ///< previous bias key
const PreintegratedMeasurements& preintegratedMeasurements, ///< preintegrated IMU measurements
const Vector3& gravity, ///< gravity vector
const Vector3& omegaCoriolis, ///< rotation rate of the inertial frame
boost::optional<const Pose3&> body_P_sensor = boost::none, ///< The Pose of the sensor frame in the body frame
const bool use2ndOrderCoriolis = false ///< When true, the second-order term is used in the calculation of the Coriolis Effect
) :
Base(noiseModel::Gaussian::Covariance(preintegratedMeasurements.PreintMeasCov), pose_i, vel_i, pose_j, vel_j, bias),
preintegratedMeasurements_(preintegratedMeasurements),
gravity_(gravity),
omegaCoriolis_(omegaCoriolis),
body_P_sensor_(body_P_sensor),
use2ndOrderCoriolis_(use2ndOrderCoriolis){
}
virtual ~ImuFactor() {}
/// @return a deep copy of this factor
virtual gtsam::NonlinearFactor::shared_ptr clone() const {
return boost::static_pointer_cast<gtsam::NonlinearFactor>(
gtsam::NonlinearFactor::shared_ptr(new This(*this))); }
/** implement functions needed for Testable */
/** print */
virtual void print(const std::string& s, const KeyFormatter& keyFormatter = DefaultKeyFormatter) const {
std::cout << s << "ImuFactor("
<< keyFormatter(this->key1()) << ","
<< keyFormatter(this->key2()) << ","
<< keyFormatter(this->key3()) << ","
<< keyFormatter(this->key4()) << ","
<< keyFormatter(this->key5()) << ")\n";
preintegratedMeasurements_.print(" preintegrated measurements:");
std::cout << " gravity: [ " << gravity_.transpose() << " ]" << std::endl;
std::cout << " omegaCoriolis: [ " << omegaCoriolis_.transpose() << " ]" << std::endl;
this->noiseModel_->print(" noise model: ");
if(this->body_P_sensor_)
this->body_P_sensor_->print(" sensor pose in body frame: ");
}
/** equals */
virtual bool equals(const NonlinearFactor& expected, double tol=1e-9) const {
const This *e = dynamic_cast<const This*> (&expected);
return e != NULL && Base::equals(*e, tol)
&& preintegratedMeasurements_.equals(e->preintegratedMeasurements_, tol)
&& equal_with_abs_tol(gravity_, e->gravity_, tol)
&& equal_with_abs_tol(omegaCoriolis_, e->omegaCoriolis_, tol)
&& ((!body_P_sensor_ && !e->body_P_sensor_) || (body_P_sensor_ && e->body_P_sensor_ && body_P_sensor_->equals(*e->body_P_sensor_)));
}
/** Access the preintegrated measurements. */
const PreintegratedMeasurements& preintegratedMeasurements() const {
return preintegratedMeasurements_; }
const Vector3& gravity() const { return gravity_; }
const Vector3& omegaCoriolis() const { return omegaCoriolis_; }
/** implement functions needed to derive from Factor */
/** vector of errors */
Vector evaluateError(const Pose3& pose_i, const LieVector& vel_i, const Pose3& pose_j, const LieVector& vel_j,
const imuBias::ConstantBias& bias,
boost::optional<Matrix&> H1 = boost::none,
boost::optional<Matrix&> H2 = boost::none,
boost::optional<Matrix&> H3 = boost::none,
boost::optional<Matrix&> H4 = boost::none,
boost::optional<Matrix&> H5 = boost::none) const
{
const double& deltaTij = preintegratedMeasurements_.deltaTij;
const Vector3 biasAccIncr = bias.accelerometer() - preintegratedMeasurements_.biasHat.accelerometer();
const Vector3 biasOmegaIncr = bias.gyroscope() - preintegratedMeasurements_.biasHat.gyroscope();
// we give some shorter name to rotations and translations
const Rot3 Rot_i = pose_i.rotation();
const Rot3 Rot_j = pose_j.rotation();
const Vector3 pos_i = pose_i.translation().vector();
const Vector3 pos_j = pose_j.translation().vector();
// We compute factor's Jacobians
/* ---------------------------------------------------------------------------------------------------- */
const Rot3 deltaRij_biascorrected = preintegratedMeasurements_.deltaRij.retract(preintegratedMeasurements_.delRdelBiasOmega * biasOmegaIncr, Rot3::EXPMAP);
// deltaRij_biascorrected is expmap(deltaRij) * expmap(delRdelBiasOmega * biasOmegaIncr)
Vector3 theta_biascorrected = Rot3::Logmap(deltaRij_biascorrected);
Vector3 theta_biascorrected_corioliscorrected = theta_biascorrected -
Rot_i.inverse().matrix() * omegaCoriolis_ * deltaTij; // Coriolis term
const Rot3 deltaRij_biascorrected_corioliscorrected =
Rot3::Expmap( theta_biascorrected_corioliscorrected );
const Rot3 fRhat = deltaRij_biascorrected_corioliscorrected.between(Rot_i.between(Rot_j));
const Matrix3 Jr_theta_bcc = Rot3::rightJacobianExpMapSO3(theta_biascorrected_corioliscorrected);
const Matrix3 Jtheta = -Jr_theta_bcc * skewSymmetric(Rot_i.inverse().matrix() * omegaCoriolis_ * deltaTij);
const Matrix3 Jrinv_fRhat = Rot3::rightJacobianExpMapSO3inverse(Rot3::Logmap(fRhat));
if(H1) {
H1->resize(9,6);
Matrix3 dfPdPi;
Matrix3 dfVdPi;
if(use2ndOrderCoriolis_){
dfPdPi = - Rot_i.matrix() + 0.5 * skewSymmetric(omegaCoriolis_) * skewSymmetric(omegaCoriolis_) * Rot_i.matrix() * deltaTij*deltaTij;
dfVdPi = skewSymmetric(omegaCoriolis_) * skewSymmetric(omegaCoriolis_) * Rot_i.matrix() * deltaTij;
}
else{
dfPdPi = - Rot_i.matrix();
dfVdPi = Matrix3::Zero();
}
(*H1) <<
// dfP/dRi
Rot_i.matrix() * skewSymmetric(preintegratedMeasurements_.deltaPij
+ preintegratedMeasurements_.delPdelBiasOmega * biasOmegaIncr + preintegratedMeasurements_.delPdelBiasAcc * biasAccIncr),
// dfP/dPi
dfPdPi,
// dfV/dRi
Rot_i.matrix() * skewSymmetric(preintegratedMeasurements_.deltaVij
+ preintegratedMeasurements_.delVdelBiasOmega * biasOmegaIncr + preintegratedMeasurements_.delVdelBiasAcc * biasAccIncr),
// dfV/dPi
dfVdPi,
// dfR/dRi
Jrinv_fRhat * (- Rot_j.between(Rot_i).matrix() - fRhat.inverse().matrix() * Jtheta),
// dfR/dPi
Matrix3::Zero();
}
if(H2) {
H2->resize(9,3);
(*H2) <<
// dfP/dVi
- Matrix3::Identity() * deltaTij
+ skewSymmetric(omegaCoriolis_) * deltaTij * deltaTij, // Coriolis term - we got rid of the 2 wrt ins paper
// dfV/dVi
- Matrix3::Identity()
+ 2 * skewSymmetric(omegaCoriolis_) * deltaTij, // Coriolis term
// dfR/dVi
Matrix3::Zero();
}
if(H3) {
H3->resize(9,6);
(*H3) <<
// dfP/dPosej
Matrix3::Zero(), Rot_j.matrix(),
// dfV/dPosej
Matrix::Zero(3,6),
// dfR/dPosej
Jrinv_fRhat * ( Matrix3::Identity() ), Matrix3::Zero();
}
if(H4) {
H4->resize(9,3);
(*H4) <<
// dfP/dVj
Matrix3::Zero(),
// dfV/dVj
Matrix3::Identity(),
// dfR/dVj
Matrix3::Zero();
}
if(H5) {
const Matrix3 Jrinv_theta_bc = Rot3::rightJacobianExpMapSO3inverse(theta_biascorrected);
const Matrix3 Jr_JbiasOmegaIncr = Rot3::rightJacobianExpMapSO3(preintegratedMeasurements_.delRdelBiasOmega * biasOmegaIncr);
const Matrix3 JbiasOmega = Jr_theta_bcc * Jrinv_theta_bc * Jr_JbiasOmegaIncr * preintegratedMeasurements_.delRdelBiasOmega;
H5->resize(9,6);
(*H5) <<
// dfP/dBias
- Rot_i.matrix() * preintegratedMeasurements_.delPdelBiasAcc,
- Rot_i.matrix() * preintegratedMeasurements_.delPdelBiasOmega,
// dfV/dBias
- Rot_i.matrix() * preintegratedMeasurements_.delVdelBiasAcc,
- Rot_i.matrix() * preintegratedMeasurements_.delVdelBiasOmega,
// dfR/dBias
Matrix::Zero(3,3),
Jrinv_fRhat * ( - fRhat.inverse().matrix() * JbiasOmega);
}
// Evaluate residual error, according to [3]
/* ---------------------------------------------------------------------------------------------------- */
const Vector3 fp =
pos_j - pos_i
- Rot_i.matrix() * (preintegratedMeasurements_.deltaPij
+ preintegratedMeasurements_.delPdelBiasAcc * biasAccIncr
+ preintegratedMeasurements_.delPdelBiasOmega * biasOmegaIncr)
- vel_i * deltaTij
+ skewSymmetric(omegaCoriolis_) * vel_i * deltaTij*deltaTij // Coriolis term - we got rid of the 2 wrt ins paper
- 0.5 * gravity_ * deltaTij*deltaTij;
const Vector3 fv =
vel_j - vel_i - Rot_i.matrix() * (preintegratedMeasurements_.deltaVij
+ preintegratedMeasurements_.delVdelBiasAcc * biasAccIncr
+ preintegratedMeasurements_.delVdelBiasOmega * biasOmegaIncr)
+ 2 * skewSymmetric(omegaCoriolis_) * vel_i * deltaTij // Coriolis term
- gravity_ * deltaTij;
const Vector3 fR = Rot3::Logmap(fRhat);
Vector r(9); r << fp, fv, fR;
return r;
}
/** predicted states from IMU */
static void Predict(const Pose3& pose_i, const LieVector& vel_i, Pose3& pose_j, LieVector& vel_j,
const imuBias::ConstantBias& bias, const PreintegratedMeasurements preintegratedMeasurements,
const Vector3& gravity, const Vector3& omegaCoriolis, boost::optional<const Pose3&> body_P_sensor = boost::none,
const bool use2ndOrderCoriolis = false)
{
const double& deltaTij = preintegratedMeasurements.deltaTij;
const Vector3 biasAccIncr = bias.accelerometer() - preintegratedMeasurements.biasHat.accelerometer();
const Vector3 biasOmegaIncr = bias.gyroscope() - preintegratedMeasurements.biasHat.gyroscope();
const Rot3 Rot_i = pose_i.rotation();
const Vector3 pos_i = pose_i.translation().vector();
// Predict state at time j
/* ---------------------------------------------------------------------------------------------------- */
Vector3 pos_j = pos_i + Rot_i.matrix() * (preintegratedMeasurements.deltaPij
+ preintegratedMeasurements.delPdelBiasAcc * biasAccIncr
+ preintegratedMeasurements.delPdelBiasOmega * biasOmegaIncr)
+ vel_i * deltaTij
- skewSymmetric(omegaCoriolis) * vel_i * deltaTij*deltaTij // Coriolis term - we got rid of the 2 wrt ins paper
+ 0.5 * gravity * deltaTij*deltaTij;
vel_j = LieVector(vel_i + Rot_i.matrix() * (preintegratedMeasurements.deltaVij
+ preintegratedMeasurements.delVdelBiasAcc * biasAccIncr
+ preintegratedMeasurements.delVdelBiasOmega * biasOmegaIncr)
- 2 * skewSymmetric(omegaCoriolis) * vel_i * deltaTij // Coriolis term
+ gravity * deltaTij);
if(use2ndOrderCoriolis){
pos_j += - 0.5 * skewSymmetric(omegaCoriolis) * skewSymmetric(omegaCoriolis) * pos_i * deltaTij*deltaTij; // 2nd order coriolis term for position
vel_j += - skewSymmetric(omegaCoriolis) * skewSymmetric(omegaCoriolis) * pos_i * deltaTij; // 2nd order term for velocity
}
const Rot3 deltaRij_biascorrected = preintegratedMeasurements.deltaRij.retract(preintegratedMeasurements.delRdelBiasOmega * biasOmegaIncr, Rot3::EXPMAP);
// deltaRij_biascorrected is expmap(deltaRij) * expmap(delRdelBiasOmega * biasOmegaIncr)
Vector3 theta_biascorrected = Rot3::Logmap(deltaRij_biascorrected);
Vector3 theta_biascorrected_corioliscorrected = theta_biascorrected -
Rot_i.inverse().matrix() * omegaCoriolis * deltaTij; // Coriolis term
const Rot3 deltaRij_biascorrected_corioliscorrected =
Rot3::Expmap( theta_biascorrected_corioliscorrected );
const Rot3 Rot_j = Rot_i.compose( deltaRij_biascorrected_corioliscorrected );
pose_j = Pose3( Rot_j, Point3(pos_j) );
}
private:
/** Serialization function */
friend class boost::serialization::access;
template<class ARCHIVE>
void serialize(ARCHIVE & ar, const unsigned int version) {
ar & boost::serialization::make_nvp("NoiseModelFactor5",
boost::serialization::base_object<Base>(*this));
ar & BOOST_SERIALIZATION_NVP(preintegratedMeasurements_);
ar & BOOST_SERIALIZATION_NVP(gravity_);
ar & BOOST_SERIALIZATION_NVP(omegaCoriolis_);
ar & BOOST_SERIALIZATION_NVP(body_P_sensor_);
}
}; // \class ImuFactor
typedef ImuFactor::PreintegratedMeasurements ImuFactorPreintegratedMeasurements;
} /// namespace gtsam