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EKF.m
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EKF.m
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%EKF Extended Kalman Filter for navigation
%
% Extended Kalman filter for optimal estimation of state from noisy
% measurments given a non-linear dynamic model. This class is specific to
% the problem of state estimation for a vehicle moving in SE(2).
%
% This class can be used for:
% - dead reckoning localization
% - map-based localization
% - map making
% - simultaneous localization and mapping (SLAM)
%
% It is used in conjunction with:
% - a kinematic vehicle model that provides odometry output, represented
% by a Vehicle sbuclass object.
% - The vehicle must be driven within the area of the map and this is
% achieved by connecting the Vehicle subclass object to a Driver object.
% - a map containing the position of a number of landmark points and is
% represented by a LandmarkMap object.
% - a sensor that returns measurements about landmarks relative to the
% vehicle's pose and is represented by a Sensor object subclass.
%
% The EKF object updates its state at each time step, and invokes the
% state update methods of the vehicle object. The complete history of estimated
% state and covariance is stored within the EKF object.
%
% Methods::
% run run the filter
% plot_xy plot the actual path of the vehicle
% plot_P plot the estimated covariance norm along the path
% plot_map plot estimated landmark points and confidence limits
% plot_vehicle plot estimated vehicle covariance ellipses
% plot_error plot estimation error with standard deviation bounds
% display print the filter state in human readable form
% char convert the filter state to human readable string
%
% Properties::
% x_est estimated state
% P estimated covariance
% V_est estimated odometry covariance
% W_est estimated sensor covariance
% landmarks maps sensor landmark id to filter state element
% robot reference to the Vehicle object
% sensor reference to the Sensor subclass object
% history vector of structs that hold the detailed filter state from
% each time step
% verbose show lots of detail (default false)
% joseph use Joseph form to represent covariance (default true)
%
% Vehicle position estimation (localization)::
%
% Create a vehicle with odometry covariance V, add a driver to it,
% create a Kalman filter with estimated covariance V_est and initial
% state covariance P0
% veh = Vehicle(V);
% veh.add_driver( RandomPath(20, 2) );
% ekf = EKF(veh, V_est, P0);
% We run the simulation for 1000 time steps
% ekf.run(1000);
% then plot true vehicle path
% veh.plot_xy('b');
% and overlay the estimated path
% ekf.plot_xy('r');
% and overlay uncertainty ellipses
% ekf.plot_ellipse('g');
% We can plot the covariance against time as
% clf
% ekf.plot_P();
%
% Map-based vehicle localization::
%
% Create a vehicle with odometry covariance V, add a driver to it,
% create a map with 20 point landmarks, create a sensor that uses the map
% and vehicle state to estimate landmark range and bearing with covariance
% W, the Kalman filter with estimated covariances V_est and W_est and initial
% vehicle state covariance P0
% veh = Bicycle(V);
% veh.add_driver( RandomPath(20, 2) );
% map = LandmarkMap(20);
% sensor = RangeBearingSensor(veh, map, W);
% ekf = EKF(veh, V_est, P0, sensor, W_est, map);
% We run the simulation for 1000 time steps
% ekf.run(1000);
% then plot the map and the true vehicle path
% map.plot();
% veh.plot_xy('b');
% and overlay the estimatd path
% ekf.plot_xy('r');
% and overlay uncertainty ellipses
% ekf.plot_ellipse('g');
% We can plot the covariance against time as
% clf
% ekf.plot_P();
%
% Vehicle-based map making::
%
% Create a vehicle with odometry covariance V, add a driver to it,
% create a sensor that uses the map and vehicle state to estimate landmark range
% and bearing with covariance W, the Kalman filter with estimated sensor
% covariance W_est and a "perfect" vehicle (no covariance),
% then run the filter for N time steps.
%
% veh = Vehicle(V);
% veh.add_driver( RandomPath(20, 2) );
% map = LandmarkMap(20);
% sensor = RangeBearingSensor(veh, map, W);
% ekf = EKF(veh, [], [], sensor, W_est, []);
% We run the simulation for 1000 time steps
% ekf.run(1000);
% Then plot the true map
% map.plot();
% and overlay the estimated map with 97% confidence ellipses
% ekf.plot_map('g', 'confidence', 0.97);
%
% Simultaneous localization and mapping (SLAM)::
%
% Create a vehicle with odometry covariance V, add a driver to it,
% create a map with 20 point landmarks, create a sensor that uses the map
% and vehicle state to estimate landmark range and bearing with covariance
% W, the Kalman filter with estimated covariances V_est and W_est and initial
% state covariance P0, then run the filter to estimate the vehicle state at
% each time step and the map.
%
% veh = Vehicle(V);
% veh.add_driver( RandomPath(20, 2) );
% map = PointMap(20);
% sensor = RangeBearingSensor(veh, map, W);
% ekf = EKF(veh, V_est, P0, sensor, W, []);
% We run the simulation for 1000 time steps
% ekf.run(1000);
% then plot the map and the true vehicle path
% map.plot();
% veh.plot_xy('b');
% and overlay the estimated path
% ekf.plot_xy('r');
% and overlay uncertainty ellipses
% ekf.plot_ellipse('g');
% We can plot the covariance against time as
% clf
% ekf.plot_P();
% Then plot the true map
% map.plot();
% and overlay the estimated map with 3 sigma ellipses
% ekf.plot_map(3, 'g');
%
% References::
%
% Robotics, Vision & Control, Chap 6,
% Peter Corke,
% Springer 2011
%
% Stochastic processes and filtering theory,
% AH Jazwinski
% Academic Press 1970
%
% Acknowledgement::
%
% Inspired by code of Paul Newman, Oxford University,
% http://www.robots.ox.ac.uk/~pnewman
%
% See also Vehicle, RandomPath, RangeBearingSensor, PointMap, ParticleFilter.
% Copyright (C) 1993-2017, by Peter I. Corke
%
% This file is part of The Robotics Toolbox for MATLAB (RTB).
%
% RTB is free software: you can redistribute it and/or modify
% it under the terms of the GNU Lesser General Public License as published by
% the Free Software Foundation, either version 3 of the License, or
% (at your option) any later version.
%
% RTB is distributed in the hope that it will be useful,
% but WITHOUT ANY WARRANTY; without even the implied warranty of
% MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
% GNU Lesser General Public License for more details.
%
% You should have received a copy of the GNU Leser General Public License
% along with RTB. If not, see <http://www.gnu.org/licenses/>.
%
% http://www.petercorke.com
classdef EKF < handle
%TODO
% add a hook for data association
% show landmark covar as ellipse or pole
% show vehicle covar as ellipse
% show track
% landmarks property should be an array of structs
properties
% STATE:
% the state vector is [x_vehicle x_map] where
% x_vehicle is 1x3 and
% x_map is 1x(2N) where N is the number of map landmarks
x_est % estimated state
P_est % estimated covariance
% landmarks keeps track of landmarks we've seen before.
% Each column represents a landmark. This is a fixed size
% array, indexed by landmark id.
% row 1: the start of this landmark's state in the state vector, initially NaN
% row 2: the number of times we've sighted the landmark
landmarks % map state
V_est % estimate of covariance V
W_est % estimate of covariance W
robot % reference to the robot vehicle
sensor % reference to the sensor
% FLAGS:
% estVehicle estMap
% 0 0
% 0 1 make map
% 1 0 dead reckoning
% 1 1 SLAM
estVehicle % flag: estimating vehicle location
estMap % flag: estimating map
joseph % flag: use Joseph form to compute p
verbose
keepHistory % keep history
P0 % passed initial covariance
map % passed map
% HISTORY:
% vector of structs to hold EKF history
% .x_est estimated state
% .odo vehicle odometry
% .P estimated covariance matrix
% .innov innovation
% .S
% .K Kalman gain matrix
history
dim % robot workspace dimensions
end
methods
% constructor
function ekf = EKF(robot, V_est, P0, varargin)
%EKF.EKF EKF object constructor
%
% E = EKF(VEHICLE, V_EST, P0, OPTIONS) is an EKF that estimates the state
% of the VEHICLE (subclass of Vehicle) with estimated odometry covariance V_EST (2x2) and
% initial covariance (3x3).
%
% E = EKF(VEHICLE, V_EST, P0, SENSOR, W_EST, MAP, OPTIONS) as above but
% uses information from a VEHICLE mounted sensor, estimated
% sensor covariance W_EST and a MAP (LandmarkMap class).
%
% Options::
% 'verbose' Be verbose.
% 'nohistory' Don't keep history.
% 'joseph' Use Joseph form for covariance
% 'dim',D Dimension of the robot's workspace.
% - D scalar; X: -D to +D, Y: -D to +D
% - D (1x2); X: -D(1) to +D(1), Y: -D(2) to +D(2)
% - D (1x4); X: D(1) to D(2), Y: D(3) to D(4)
%
% Notes::
% - If MAP is [] then it will be estimated.
% - If V_EST and P0 are [] the vehicle is assumed error free and
% the filter will only estimate the landmark positions (map).
% - If V_EST and P0 are finite the filter will estimate the
% vehicle pose and the landmark positions (map).
% - EKF subclasses Handle, so it is a reference object.
% - Dimensions of workspace are normally taken from the map if given.
%
% See also Vehicle, Bicycle, Unicycle, Sensor, RangeBearingSensor, LandmarkMap.
opt.history = true;
opt.joseph = true;
opt.dim = [];
[opt,args] = tb_optparse(opt, varargin);
% copy options to class properties
ekf.verbose = opt.verbose;
ekf.keepHistory = opt.history;
ekf.joseph = opt.joseph;
ekf.P0 = P0;
ekf.dim = opt.dim;
% figure what we need to estimate
ekf.estVehicle = false;
ekf.estMap = false;
switch length(args)
case 0
% Deadreckoning:
% E = EKF(VEHICLE, V_EST, P0, OPTIONS)
sensor = []; W_est = []; map = [];
ekf.estVehicle = true;
case 3
% Using a map:
% E = EKF(VEHICLE, V_EST, P0, SENSOR, W_EST, MAP, OPTIONS)
% Estimating a map:
% E = EKF(VEHICLE,[], [], SENSOR, W_EST, [], OPTIONS)
% Full SLAM:
% E = EKF(VEHICLE, V_EST, P0, SENSOR, W_EST, [], OPTIONS)
[sensor, W_est, map] = deal(args{:});
if isempty(map)
ekf.estMap = true;
end
if ~isempty(V_est)
ekf.estVehicle = true;
end
otherwise
error('RTB:EKF:badarg', 'incorrect number of non-option arguments');
end
% check types for passed objects
if ~isempty(map) && ~isa(map, 'LandmarkMap')
error('RTB:EKF:badarg', 'expecting LandmarkMap object');
end
if ~isempty(sensor) && ~isa(sensor, 'Sensor')
error('RTB:EKF:badarg', 'expecting Sensor object');
end
if ~isa(robot, 'Vehicle')
error('RTB:EKF:badarg', 'expecting Vehicle object');
end
% copy arguments to class properties
ekf.robot = robot;
ekf.V_est = V_est;
ekf.sensor = sensor;
ekf.map = map;
ekf.W_est = W_est;
ekf.init();
end
function init(ekf)
%EKF.init Reset the filter
%
% E.init() resets the filter state and clears landmarks and history.
ekf.robot.init();
% clear the history
ekf.history = [];
if isempty(ekf.V_est)
% perfect vehicle case
ekf.estVehicle = false;
ekf.x_est = [];
ekf.P_est = [];
else
% noisy odometry case
ekf.x_est = ekf.robot.x(:); % column vector
ekf.P_est = ekf.P0;
ekf.estVehicle = true;
end
if ~isempty(ekf.sensor)
ekf.landmarks = NaN*zeros(2, ekf.sensor.map.nlandmarks);
end
end
function run(ekf, n, varargin)
%EKF.run Run the filter
%
% E.run(N, OPTIONS) runs the filter for N time steps and shows an animation
% of the vehicle moving.
%
% Options::
% 'plot' Plot an animation of the vehicle moving
%
% Notes::
% - All previously estimated states and estimation history are initially
% cleared.
opt.plot = true;
opt.movie = [];
opt = tb_optparse(opt, varargin);
ekf.init();
if opt.plot
if ~isempty(ekf.sensor)
ekf.sensor.map.plot();
elseif ~isempty(ekf.dim)
switch length(ekf.dim)
case 1
d = ekf.dim;
axis([-d d -d d]);
case 2
w = ekf.dim(1), h = ekf.dim(2);
axis([-w w -h h]);
case 4
axis(ekf.dim);
end
set(gca, 'ALimMode', 'manual');
else
opt.plot = false;
end
axis manual
xlabel('X'); ylabel('Y')
end
% simulation loop
anim = Animate(opt.movie);
for k=1:n
if opt.plot
ekf.robot.plot();
drawnow
end
ekf.step(opt);
anim.add();
end
anim.close();
end
function xyt = get_xy(ekf)
%EKF.plot_xy Get vehicle position
%
% P = E.get_xy() is the estimated vehicle pose trajectory
% as a matrix (Nx3) where each row is x, y, theta.
%
% See also EKF.plot_xy, EKF.plot_error, EKF.plot_ellipse, EKF.plot_P.
if ekf.estVehicle
xyt = zeros(length(ekf.history), 3);
for i=1:length(ekf.history)
h = ekf.history(i);
xyt(i,:) = h.x_est(1:3)';
end
else
xyt = [];
end
end
function out = plot_xy(ekf, varargin)
%EKF.plot_xy Plot vehicle position
%
% E.plot_xy() overlay the current plot with the estimated vehicle path in
% the xy-plane.
%
% E.plot_xy(LS) as above but the optional line style arguments
% LS are passed to plot.
%
% See also EKF.get_xy, EKF.plot_error, EKF.plot_ellipse, EKF.plot_P.
xyt=ekf.get_xy();
plot(xyt(:,1), xyt(:,2), varargin{:});
plot(xyt(1,1), xyt(1,2), 'ko', 'MarkerSize', 8, 'LineWidth', 2);
end
function out = plot_error(ekf, varargin)
%EKF.plot_error Plot vehicle position
%
% E.plot_error(OPTIONS) plot the error between actual and estimated vehicle
% path (x, y, theta) versus time. Heading error is wrapped into the range [-pi,pi)
%
% Options::
% 'bound',S Display the confidence bounds (default 0.95).
% 'color',C Display the bounds using color C
% LS Use MATLAB linestyle LS for the plots
%
% Notes::
% - The bounds show the instantaneous standard deviation associated
% with the state. Observations tend to decrease the uncertainty
% while periods of dead-reckoning increase it.
% - Set bound to zero to not draw confidence bounds.
% - Ideally the error should lie "mostly" within the +/-3sigma
% bounds.
%
% See also EKF.plot_xy, EKF.plot_ellipse, EKF.plot_P.
opt.color = 'r';
opt.confidence = 0.95;
opt.nplots = 3;
[opt,args] = tb_optparse(opt, varargin);
clf
if ekf.estVehicle
err = zeros(length(ekf.history), 3);
for i=1:length(ekf.history)
h = ekf.history(i);
% error is true - estimated
err(i,:) = ekf.robot.x_hist(i,:) - h.x_est(1:3)';
err(i,3) = angdiff(err(i,3));
P = diag(h.P);
pxy(i,:) = sqrt( chi2inv_rtb(opt.confidence, 2)*P(1:3) );
end
if nargout == 0
clf
t = 1:numrows(pxy);
t = [t t(end:-1:1)]';
subplot(opt.nplots*100+11)
if opt.confidence
edge = [pxy(:,1); -pxy(end:-1:1,1)];
h = patch(t, edge ,opt.color);
set(h, 'EdgeColor', 'none', 'FaceAlpha', 0.3);
end
hold on
plot(err(:,1), args{:});
hold off
grid
ylabel('x error')
subplot(opt.nplots*100+12)
if opt.confidence
edge = [pxy(:,2); -pxy(end:-1:1,2)];
h = patch(t, edge, opt.color);
set(h, 'EdgeColor', 'none', 'FaceAlpha', 0.3);
end
hold on
plot(err(:,2), args{:});
hold off
grid
ylabel('y error')
subplot(opt.nplots*100+13)
if opt.confidence
edge = [pxy(:,3); -pxy(end:-1:1,3)];
h = patch(t, edge, opt.color);
set(h, 'EdgeColor', 'none', 'FaceAlpha', 0.3);
end
hold on
plot(err(:,3), args{:});
hold off
grid
xlabel('Time step')
ylabel('\theta error')
if opt.nplots > 3
subplot(opt.nplots*100+14);
end
else
out = pxy;
end
end
end
function xy = get_map(ekf, varargin)
%EKF.get_map Get landmarks
%
% P = E.get_map() is the estimated landmark coordinates (2xN) one per
% column. If the landmark was not estimated the corresponding column
% contains NaNs.
%
% See also EKF.plot_map, EKF.plot_ellipse.
xy = [];
for i=1:numcols(ekf.landmarks)
n = ekf.landmarks(1,i);
if isnan(n)
% this landmark never observed
xy = [xy [NaN; NaN]];
continue;
end
% n is an index into the *landmark* part of the state
% vector, we need to offset it to account for the vehicle
% state if we are estimating vehicle as well
if ekf.estVehicle
n = n + 3;
end
xf = ekf.x_est(n:n+1);
xy = [xy xf];
end
end
function plot_map(ekf, varargin)
%EKF.plot_map Plot landmarks
%
% E.plot_map(OPTIONS) overlay the current plot with the estimated landmark
% position (a +-marker) and a covariance ellipses.
%
% E.plot_map(LS, OPTIONS) as above but pass line style arguments
% LS to plot_ellipse.
%
% Options::
% 'confidence',C Draw ellipse for confidence value C (default 0.95)
%
% See also EKF.get_map, EKF.plot_ellipse.
% TODO: some option to plot map evolution, layered ellipses
opt.confidence = 0.95;
[opt,args] = tb_optparse(opt, varargin);
xy = [];
for i=1:numcols(ekf.landmarks)
n = ekf.landmarks(1,i);
if isnan(n)
% this landmark never observed
xy = [xy [NaN; NaN]];
continue;
end
% n is an index into the *landmark* part of the state
% vector, we need to offset it to account for the vehicle
% state if we are estimating vehicle as well
if ekf.estVehicle
n = n + 3;
end
xf = ekf.x_est(n:n+1);
P = ekf.P_est(n:n+1,n:n+1);
% TODO reinstate the interval landmark
%plot_ellipse(xf, P, interval, 0, [], varargin{:});
plot_ellipse( P * chi2inv_rtb(opt.confidence, 2), xf, args{:});
plot(xf(1), xf(2), 'k.', 'MarkerSize', 10)
end
end
function P = get_P(ekf, k)
%EKF.get_P Get covariance magnitude
%
% E.get_P() is a vector of estimated covariance magnitude at each time step.
P = zeros(length(ekf.history),1);
for i=1:length(ekf.history)
P(i) = sqrt(det(ekf.history(i).P));
end
end
function plot_P(ekf, varargin)
%EKF.plot_P Plot covariance magnitude
%
% E.plot_P() plots the estimated covariance magnitude against
% time step.
%
% E.plot_P(LS) as above but the optional line style arguments
% LS are passed to plot.
p = ekf.get_P();
plot(p, varargin{:});
xlabel('Time step');
ylabel('(det P)^{0.5}')
end
function show_P(ekf, k)
clf
if nargin < 2
k = length(ekf.history);
end
z = log10(abs(ekf.history(k).P));
mn = min(z(~isinf(z)))
z(isinf(z)) = mn;
cmap = flip( gray(256), 1);
%colormap(parula);
colormap(flipud(bone))
c = gray;
c = [ones(numrows(c),1) 1-c(:,1:2)];
colormap(c)
% imshow(z, ...
% 'DisplayRange', [min(z(:)) max(z(:))], ...
% 'ColorMap', cmap, ...
% 'InitialMagnification', 'fit' )
image(z, 'CDataMapping', 'scaled')
xlabel('state'); ylabel('state');
c = colorbar();
c.Label.String = 'log covariance';
end
function plot_ellipse(ekf, varargin)
%EKF.plot_ellipse Plot vehicle covariance as an ellipse
%
% E.plot_ellipse() overlay the current plot with the estimated
% vehicle position covariance ellipses for 20 points along the
% path.
%
% E.plot_ellipse(LS) as above but pass line style arguments
% LS to plot_ellipse.
%
% Options::
% 'interval',I Plot an ellipse every I steps (default 20)
% 'confidence',C Confidence interval (default 0.95)
%
% See also plot_ellipse.
opt.interval = round(length(ekf.history)/20);
opt.confidence = 0.95;
[opt,args] = tb_optparse(opt, varargin);
holdon = ishold;
hold on
for i=1:opt.interval:length(ekf.history)
h = ekf.history(i);
%plot_ellipse(h.x_est(1:2), h.P(1:2,1:2), 1, 0, [], varargin{:});
plot_ellipse(h.P(1:2,1:2) * chi2inv_rtb(opt.confidence, 2), h.x_est(1:2), args{:});
end
if ~holdon
hold off
end
end
function display(ekf)
%EKF.display Display status of EKF object
%
% E.display() displays the state of the EKF object in
% human-readable form.
%
% Notes::
% - This method is invoked implicitly at the command line when the result
% of an expression is a EKF object and the command has no trailing
% semicolon.
%
% See also EKF.char.
loose = strcmp( get(0, 'FormatSpacing'), 'loose');
if loose
disp(' ');
end
disp([inputname(1), ' = '])
disp( char(ekf) );
end % display()
function s = char(ekf)
%EKF.char Convert to string
%
% E.char() is a string representing the state of the EKF
% object in human-readable form.
%
% See also EKF.display.
s = sprintf('EKF object: %d states', length(ekf.x_est));
e = '';
if ekf.estVehicle
e = [e 'Vehicle '];
end
if ekf.estMap
e = [e 'Map '];
end
s = char(s, [' estimating: ' e]);
if ~isempty(ekf.robot)
s = char(s, char(ekf.robot));
end
if ~isempty(ekf.sensor)
s = char(s, char(ekf.sensor));
end
s = char(s, ['W_est: ' mat2str(ekf.W_est, 3)] );
s = char(s, ['V_est: ' mat2str(ekf.V_est, 3)] );
end
end % method
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% P R I V A T E M E T H O D S
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
methods (Access=protected)
function x_est = step(ekf, opt)
%fprintf('-------step\n');
% move the robot along its path and get odometry
odo = ekf.robot.step();
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%% do the prediction
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
if ekf.estVehicle
% split the state vector and covariance into chunks for
% vehicle and map
xv_est = ekf.x_est(1:3);
xm_est = ekf.x_est(4:end);
Pvv_est = ekf.P_est(1:3,1:3);
Pmm_est = ekf.P_est(4:end,4:end);
Pvm_est = ekf.P_est(1:3,4:end);
else
xm_est = ekf.x_est;
%Pvv_est = ekf.P_est;
Pmm_est = ekf.P_est;
end
if ekf.estVehicle
% evaluate the state update function and the Jacobians
% if vehicle has uncertainty, predict its covariance
xv_pred = ekf.robot.f(xv_est', odo)';
Fx = ekf.robot.Fx(xv_est, odo);
Fv = ekf.robot.Fv(xv_est, odo);
Pvv_pred = Fx*Pvv_est*Fx' + Fv*ekf.V_est*Fv';
else
% otherwise we just take the true robot state
xv_pred = ekf.robot.x;
end
if ekf.estMap
if ekf.estVehicle
% SLAM case, compute the correlations
Pvm_pred = Fx*Pvm_est;
end
Pmm_pred = Pmm_est;
xm_pred = xm_est;
end
% put the chunks back together again
if ekf.estVehicle && ~ekf.estMap
% vehicle only
x_pred = xv_pred;
P_pred = Pvv_pred;
elseif ~ekf.estVehicle && ekf.estMap
% map only
x_pred = xm_pred;
P_pred = Pmm_pred;
elseif ekf.estVehicle && ekf.estMap
% vehicle and map
x_pred = [xv_pred; xm_pred];
P_pred = [ Pvv_pred Pvm_pred; Pvm_pred' Pmm_pred];
end
% at this point we have:
% xv_pred the state of the vehicle to use to
% predict observations
% xm_pred the state of the map
% x_pred the full predicted state vector
% P_pred the full predicted covariance matrix
% initialize the variables that might be computed during
% the update phase
doUpdatePhase = false;
%fprintf('x_pred:'); x_pred'
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
%% process observations
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
sensorReading = false;
if ~isempty(ekf.sensor)
% read the sensor
[z,js] = ekf.sensor.reading();
% test if the sensor has returned a reading at this time interval
sensorReading = js > 0;
end
if sensorReading
% here for MBL, MM, SLAM
% compute the innovation
z_pred = ekf.sensor.h(xv_pred', js)';
innov(1) = z(1) - z_pred(1);
innov(2) = angdiff(z(2), z_pred(2));
if ekf.estMap
% the map is estimated MM or SLAM case
if ekf.seenBefore(js)
% get previous estimate of its state
jx = ekf.landmarks(1,js);
xf = xm_pred(jx:jx+1);
% compute Jacobian for this particular landmark
Hx_k = ekf.sensor.Hp(xv_pred', xf);
% create the Jacobian for all landmarks
Hx = zeros(2, length(xm_pred));
Hx(:,jx:jx+1) = Hx_k;
Hw = ekf.sensor.Hw(xv_pred, xf);
if ekf.estVehicle
% concatenate Hx for for vehicle and map
Hxv = ekf.sensor.Hx(xv_pred', xf);
Hx = [Hxv Hx];
end
doUpdatePhase = true;
% if mod(i, 40) == 0
% plot_ellipse(x_est(jx:jx+1), P_est(jx:jx+1,jx:jx+1), 5);
% end
else
% get the extended state
[x_pred, P_pred] = ekf.extendMap(P_pred, xv_pred, xm_pred, z, js);
doUpdatePhase = false;
end
else
% the map is given, MBL case
Hx = ekf.sensor.Hx(xv_pred', js);
Hw = ekf.sensor.Hw(xv_pred', js);
doUpdatePhase = true;
end
end
% doUpdatePhase flag indicates whether or not to do
% the update phase of the filter
%
% DR always false
% map-based localization if sensor reading
% map creation if sensor reading & not first
% sighting
% SLAM if sighting of a previously
% seen landmark
if doUpdatePhase
%fprintf('do update\n');
%% we have innovation, update state and covariance
% compute x_est and P_est
% compute innovation covariance
S = Hx*P_pred*Hx' + Hw*ekf.W_est*Hw';
% compute the Kalman gain
K = P_pred*Hx' / S;
% update the state vector
x_est = x_pred + K*innov';
if ekf.estVehicle
% wrap heading state for a vehicle
x_est(3) = angdiff(x_est(3));
end
% update the covariance
if ekf.joseph
% we use the Joseph form
I = eye(size(P_pred));
P_est = (I-K*Hx)*P_pred*(I-K*Hx)' + K*ekf.W_est*K';
else
P_est = P_pred - K*S*K';
end
% enforce P to be symmetric
P_est = 0.5*(P_est+P_est');
else
% no update phase, estimate is same as prediction
x_est = x_pred;
P_est = P_pred;
innov = [];
S = [];
K = [];
end
%fprintf('X:'); x_est'
% update the state and covariance for next time
ekf.x_est = x_est;
ekf.P_est = P_est;
% record time history
if ekf.keepHistory
hist = [];
hist.x_est = x_est;
hist.odo = odo;
hist.P = P_est;
hist.innov = innov;
hist.S = S;
hist.K = K;
ekf.history = [ekf.history hist];
end
end
function s = seenBefore(ekf, jf)
if ~isnan(ekf.landmarks(1,jf))
%% we have seen this landmark before, update number of sightings
if ekf.verbose
fprintf('landmark %d seen %d times before, state_idx=%d\n', ...
jf, ekf.landmarks(2,jf), ekf.landmarks(1,jf));
end
ekf.landmarks(2,jf) = ekf.landmarks(2,jf)+1;
s = true;
else
s = false;
end
end
function [x_ext, P_ext] = extendMap(ekf, P, xv, xm, z, jf)
%% this is a new landmark, we haven't seen it before
% estimate position of landmark in the world based on
% noisy sensor reading and current vehicle pose
if ekf.verbose
fprintf('landmark %d first sighted\n', jf);
end
% estimate its position based on observation and vehicle state
xf = ekf.sensor.g(xv, z);
% append this estimate to the state vector
if ekf.estVehicle
x_ext = [xv; xm; xf];
else
x_ext = [xm; xf];
end
% get the Jacobian for the new landmark
Gz = ekf.sensor.Gz(xv, z);