%% Reset everything clear all; clc; close all; addpath('helpers'); %% Configure the benchmark % noncentral case cam_number = 4; % Getting 10 points, and testing all algorithms with the respective number of points pt_number = 50; % noise test, so no outliers outlier_fraction = 0.0; % repeat 5000 tests per noise level iterations = 5000; % The algorithms we want to test algorithms = { 'seventeenpt'; 'rel_nonlin_noncentral'; 'rel_nonlin_noncentral' }; % This defines the number of points used for every algorithm indices = { [1:1:17]; [1:1:17]; [1:1:50] }; % The name of the algorithms in the final plots names = { '17pt'; 'nonlin. opt. (17pts)'; 'nonlin. opt. (50pts)' }; % The maximum noise to analyze max_noise = 5.0; % The step in between different noise levels noise_step = 0.1; %% Run the benchmark %prepare the overall result arrays number_noise_levels = max_noise / noise_step + 1; num_algorithms = size(algorithms,1); mean_rotation_errors = zeros(num_algorithms,number_noise_levels); median_rotation_errors = zeros(num_algorithms,number_noise_levels); mean_position_errors = zeros(num_algorithms,number_noise_levels); median_position_errors = zeros(num_algorithms,number_noise_levels); noise_levels = zeros(1,number_noise_levels); %Run the experiment for n=1:number_noise_levels noise = (n - 1) * noise_step; noise_levels(1,n) = noise; display(['Analyzing noise level: ' num2str(noise)]) rotation_errors = zeros(num_algorithms,iterations); position_errors = zeros(num_algorithms,iterations); counter = 0; for i=1:iterations % generate experiment [v1,v2,t,R] = create2D2DExperiment(pt_number,cam_number,noise,outlier_fraction); [t_perturbed,R_perturbed] = perturb(t,R,0.01); T_perturbed = [R_perturbed,t_perturbed]; T_gt = [R,t]; for a=1:num_algorithms Out = opengv(algorithms{a},indices{a},v1,v2,T_perturbed); [position_error, rotation_error] = evaluateTransformationError( T_gt, Out ); position_errors(a,i) = position_error; rotation_errors(a,i) = rotation_error; end counter = counter + 1; if counter == 100 counter = 0; display(['Iteration ' num2str(i) ' of ' num2str(iterations) '(noise level ' num2str(noise) ')']); end end %Now compute the mean and median value of the error for each algorithm for a=1:num_algorithms mean_rotation_errors(a,n) = mean(rotation_errors(a,:)); median_rotation_errors(a,n) = median(rotation_errors(a,:)); mean_position_errors(a,n) = mean(position_errors(a,:)); median_position_errors(a,n) = median(position_errors(a,:)); end end %% Plot the results figure(1) plot(noise_levels,mean_rotation_errors,'LineWidth',2) legend(names,'Location','NorthWest') xlabel('noise level [pix]') ylabel('mean rot. error [rad]') grid on figure(2) plot(noise_levels,median_rotation_errors,'LineWidth',2) legend(names,'Location','NorthWest') xlabel('noise level [pix]') ylabel('median rot. error [rad]') grid on figure(3) plot(noise_levels,mean_position_errors,'LineWidth',2) legend(names,'Location','NorthWest') xlabel('noise level [pix]') ylabel('mean pos. error [m]') grid on figure(4) plot(noise_levels,median_position_errors,'LineWidth',2) legend(names,'Location','NorthWest') xlabel('noise level [pix]') ylabel('median pos. error [m]') grid on