1 | % create a MIL dataset from the original WAV-files, segmentation of the |
---|
2 | % spectrograms, and computation of features on the segmented regions |
---|
3 | % |
---|
4 | % This is the new 19 species dataset from the MLSP competition |
---|
5 | |
---|
6 | % some settings: |
---|
7 | windowlen = 512; |
---|
8 | fmax = 256; |
---|
9 | intens_thr = 0.8; % remove 80% of the signal?? |
---|
10 | f_min = 2000; % frequency threshold (everything below is removed) |
---|
11 | % blurring of the spectrogram: |
---|
12 | G = fspecial('gaussian',[5 5],2); |
---|
13 | |
---|
14 | % load the 'meta' data like labels and filenames |
---|
15 | %dpath = '../birds_mlsp2013/mlsp_contest_dataset/essential_data/'; |
---|
16 | dpath = '/data/birds_mlsp2013/mlsp_contest_dataset2/essential_data'; |
---|
17 | % load the filenames |
---|
18 | fid = fopen(fullfile(dpath,'rec_id2filename.txt')); |
---|
19 | data = textscan(fid,'%n%s','headerlines',1); |
---|
20 | fclose(fid); |
---|
21 | bagid = data{1}; |
---|
22 | names = data{2}; |
---|
23 | % next load the labels: |
---|
24 | fid = fopen(fullfile(dpath,'rec_labels_test_hidden.txt')); |
---|
25 | data = textscan(fid,'%n%s','headerlines',1); |
---|
26 | bagid2 = data{1}; |
---|
27 | labstr = data{2}; |
---|
28 | % load the indices for the training and test objects: |
---|
29 | N = length(bagid2); |
---|
30 | CVfile = fopen(fullfile(dpath,'CVfolds_2.txt')); |
---|
31 | CVdata = textscan(CVfile, '%f,%f', N, 'headerlines',1); |
---|
32 | fclose(CVfile); |
---|
33 | bagid3 = CVdata{1}; |
---|
34 | Itst = CVdata{2}; |
---|
35 | |
---|
36 | % some checking |
---|
37 | if any(bagid~=bagid2) |
---|
38 | error('Bagid''s do not match.'); |
---|
39 | end |
---|
40 | |
---|
41 | % run over the files, and get the features: |
---|
42 | B = size(bagid,1); |
---|
43 | x = cell(B,1); |
---|
44 | baglab = zeros(B,13); |
---|
45 | instlab = ''; |
---|
46 | bagid = []; |
---|
47 | for i=1:B |
---|
48 | i |
---|
49 | |
---|
50 | %load the signal; |
---|
51 | [signal,fs] = wavread(fullfile(dpath,'src_wavs',names{i}(2:end))); |
---|
52 | [S,f,t] = spectrogram(signal,windowlen,windowlen/2,fmax,fs); |
---|
53 | % smooth and threshold the spectrogram: |
---|
54 | I = imfilter(abs(S),G,'same'); |
---|
55 | mask = (I>dd_threshold(I(:),intens_thr)); |
---|
56 | mask(f<f_min) = 0; |
---|
57 | % find interesting regions: |
---|
58 | props = regionprops(bwlabel(mask),abs(S)); |
---|
59 | bloblab = bwlabel(mask); |
---|
60 | Nseg = max(unique(bloblab)); |
---|
61 | |
---|
62 | % run over blobs: |
---|
63 | absim = abs(S); |
---|
64 | realim = real(S); |
---|
65 | imagim = imag(S); |
---|
66 | |
---|
67 | maskfeats = nan(Nseg,3); |
---|
68 | absfeats = nan(Nseg, 7); |
---|
69 | realfeats = nan(Nseg,7); |
---|
70 | imagfeats = nan(Nseg,7); |
---|
71 | momentfeats = nan(Nseg,62); |
---|
72 | |
---|
73 | for j=1:Nseg |
---|
74 | |
---|
75 | |
---|
76 | ix = (bloblab==j); |
---|
77 | |
---|
78 | % compute/add some blob-properties: |
---|
79 | % thisx(j,:) = [props(j).Area, props(j).Centroid, props(j).BoundingBox]; |
---|
80 | |
---|
81 | pixtotal = sum(sum(ix)); |
---|
82 | pixheight = max(sum(ix,1)); |
---|
83 | pixwidth = max(sum(ix,2)); |
---|
84 | |
---|
85 | maskfeats(j,:) = [pixtotal pixheight pixwidth]; |
---|
86 | |
---|
87 | |
---|
88 | seg = absim(ix); |
---|
89 | absfeats(j,1) = mean(seg); |
---|
90 | absfeats(j,2) = std(seg); |
---|
91 | |
---|
92 | absfeats(j,3) = quantile(seg(:),0); |
---|
93 | absfeats(j,4) = quantile(seg(:),0.25); |
---|
94 | absfeats(j,5) = quantile(seg(:),0.5); |
---|
95 | absfeats(j,6) = quantile(seg(:),0.75); |
---|
96 | absfeats(j,7) = quantile(seg(:),1); |
---|
97 | |
---|
98 | seg = realim(ix); |
---|
99 | realfeats(j,1) = mean(seg); |
---|
100 | realfeats(j,2) = std(seg); |
---|
101 | |
---|
102 | realfeats(j,3) = quantile(seg(:),0); |
---|
103 | realfeats(j,4) = quantile(seg(:),0.25); |
---|
104 | realfeats(j,5) = quantile(seg(:),0.5); |
---|
105 | realfeats(j,6) = quantile(seg(:),0.75); |
---|
106 | realfeats(j,7) = quantile(seg(:),1); |
---|
107 | |
---|
108 | seg = imagim(ix); |
---|
109 | imagfeats(j,1) = mean(seg); |
---|
110 | imagfeats(j,2) = std(seg); |
---|
111 | |
---|
112 | imagfeats(j,3) = quantile(seg(:),0); |
---|
113 | imagfeats(j,4) = quantile(seg(:),0.25); |
---|
114 | imagfeats(j,5) = quantile(seg(:),0.5); |
---|
115 | imagfeats(j,6) = quantile(seg(:),0.75); |
---|
116 | imagfeats(j,7) = quantile(seg(:),1); |
---|
117 | |
---|
118 | seg = absim.*ix; |
---|
119 | momentfeats(j,:) = [moments(seg,[1;0],[0;1],1,0) ... |
---|
120 | moments(seg,[2;1;0],[0;1;2],1,0) ... |
---|
121 | moments(seg,[2,1,0],[0,1,2],1,1) ... |
---|
122 | hu_moments(seg) zernike_moments(seg)]; |
---|
123 | |
---|
124 | % don't forget: |
---|
125 | bagid(end+1) = i; |
---|
126 | |
---|
127 | |
---|
128 | end |
---|
129 | x{i} = [maskfeats absfeats realfeats imagfeats momentfeat]; |
---|
130 | |
---|
131 | %Get the labels right for the training bags: |
---|
132 | |
---|
133 | if ~Itst(i) |
---|
134 | eval(['baglab(i,[',labstr{i}(2:end),']+1)=1;']); |
---|
135 | end |
---|
136 | end |
---|
137 | |
---|
138 | % create a dataset |
---|
139 | a = genmil(x); |
---|
140 | % add the labels one by one: |
---|
141 | ll = [... |
---|
142 | 'BRCR-Brown Creeper '; |
---|
143 | 'PAWR-Pacific Wren '; |
---|
144 | 'PSFL-Pacific-slope Flycatcher '; |
---|
145 | 'RBNU-Red-breasted Nuthatch '; |
---|
146 | 'DEJU-Dark-eyed Junco '; |
---|
147 | 'OSFL-Olive-sided Flycatcher '; |
---|
148 | 'HETH-Hermit Thrush '; |
---|
149 | 'CBCH-Chestnut-backed Chickadee'; |
---|
150 | 'VATH-Varied Thrush '; |
---|
151 | 'HEWA-Hermit Warbler '; |
---|
152 | 'SWTH-Swainsons Thrush '; |
---|
153 | 'HAFL-Hammonds Flycatcher '; |
---|
154 | 'WETA-Western Tanager '; |
---|
155 | 'BHGB-Black-headed Grosbeak '; |
---|
156 | 'GCKI-Golden Crowned Kinglet '; |
---|
157 | 'WAVI-Warbling Vireo '; |
---|
158 | 'MGWA-MacGillivrays Warbler '; |
---|
159 | 'STJA-Stellars Jay '; |
---|
160 | 'CONI-Common Nighthawk ']; |
---|
161 | |
---|
162 | |
---|
163 | for i=1:size(baglab,2) |
---|
164 | I = ismember(bagid,find(baglab(:,i))); |
---|
165 | a = addlabels(a,genmillabels(I',1),ll(i,:)); |
---|
166 | end |
---|
167 | % set it to the first bird: |
---|
168 | a = changelablist(a,2); |
---|
169 | thisll = getlablistnames(a); |
---|
170 | a = setname(a,strtrim(thisll(curlablist(a),:))); |
---|
171 | |
---|
172 | J = Itst(bagid); |
---|
173 | x = a(~J,:); |
---|
174 | z = a(logical(J),:); |
---|
175 | save('birds20130710.mat', 'a', 'x', 'z', 'Itst', 'J'); |
---|