clear addpath('../PDM_helpers/'); addpath(genpath('../fitting/')); addpath('../models/'); addpath(genpath('../face_detection')); addpath('../CCNF/'); %% loading the patch experts [clmParams, pdm] = Load_CLM_params_wild(); % An accurate CCNF (or CLNF) model [patches] = Load_Patch_Experts( '../models/general/', 'ccnf_patches_*_general.mat', [], [], clmParams); % A simpler (but less accurate SVR) % [patches] = Load_Patch_Experts( '../models/general/', 'svr_patches_*_general.mat', [], [], clmParams); clmParams.multi_modal_types = patches(1).multi_modal_types; %% root_dir = '../../samples/'; images = dir([root_dir, '*.jpg']); verbose = true; for img=1:numel(images) image_orig = imread([root_dir images(img).name]); % First attempt to use the Matlab one (fastest but not as accurate, if not present use yu et al.) [bboxs, det_shapes] = detect_faces(image_orig, {'cascade', 'yu'}); % Zhu and Ramanan and Yu et al. are slower, but also more accurate % and can be used when vision toolbox is unavailable % [bboxs, det_shapes] = detect_faces(image_orig, {'yu', 'zhu'}); % The complete set that tries all three detectors starting with fastest % and moving onto slower ones if fastest can't detect anything % [bboxs, det_shapes] = detect_faces(image_orig, {'cascade', 'yu', 'zhu'}); if(size(image_orig,3) == 3) image = rgb2gray(image_orig); end %% if(verbose) f = figure; if(max(image(:)) > 1) imshow(double(image_orig)/255, 'Border', 'tight'); else imshow(double(image_orig), 'Border', 'tight'); end axis equal; hold on; end for i=1:size(bboxs,2) % Convert from the initial detected shape to CLM model parameters, % if shape is available bbox = bboxs(:,i); if(~isempty(det_shapes)) shape = det_shapes(:,:,i); inds = [1:60,62:64,66:68]; M = pdm.M([inds, inds+68, inds+68*2]); E = pdm.E; V = pdm.V([inds, inds+68, inds+68*2],:); [ a, R, T, ~, params, err, shapeOrtho] = fit_PDM_ortho_proj_to_2D(M, E, V, shape); g_param = [a; Rot2Euler(R)'; T]; l_param = params; % Use the initial global and local params for clm fitting in the image [shape,~,~,lhood,lmark_lhood,view_used] = Fitting_from_bb(image, [], bbox, pdm, patches, clmParams, 'gparam', g_param, 'lparam', l_param); else [shape,~,~,lhood,lmark_lhood,view_used] = Fitting_from_bb(image, [], bbox, pdm, patches, clmParams); end % shape correction for matlab format shape = shape + 1; if(verbose) % valid points to draw (not to draw self-occluded ones) v_points = logical(patches(1).visibilities(view_used,:)); try plot(shape(v_points,1), shape(v_points',2),'.r','MarkerSize',20); plot(shape(v_points,1), shape(v_points',2),'.b','MarkerSize',10); catch warn end end end hold off; end