| | nmb_of_labels=1000; |
| | nmb_of_labs_per_module=25; |
| | nmb_of_modules=(nmb_of_labels/nmb_of_labs_per_module); |
| | relative_lab_seq=1:nmb_of_labs_per_module; |
| | nmb_of_subsets=2; |
| |
|
| | patch=0; |
| | parfor module=1:nmb_of_modules |
| | m_label_ids=[]; |
| | m_labels=[]; |
| | m_data=[]; |
| | m_label_table=[relative_lab_seq;relative_lab_seq+(module-1)*nmb_of_labs_per_module]; |
| | for imgnt1kdataset=1:10 |
| | |
| | |
| | reportname1 = sprintf('/work/mathbiology/lheath2/data/imagenet1k/mat/train_data_batch_%d.mat', imgnt1kdataset); |
| | temp_lpad=load(reportname1,'data','labels') |
| | data=temp_lpad.data; |
| | labels=temp_lpad.labels; |
| | pos_seq=1:length(labels); |
| | for labs=relative_lab_seq |
| | idx=(labels==(labs+(module-1)*nmb_of_labs_per_module)); |
| | aa=pos_seq(idx); |
| | bb=[0*aa+imgnt1kdataset;aa;labels(idx)]; |
| | m_label_ids=[m_label_ids, bb]; |
| | m_labels=[m_labels,0*aa+labs]; |
| | m_data=[m_data;data(idx,:)]; |
| | end |
| | end |
| | nmb_dt=length(m_labels); |
| | set_lng=fix(nmb_dt/nmb_of_subsets); |
| | for subset=1:nmb_of_subsets |
| | if subset<nmb_of_subsets |
| | set=(1:set_lng)+(subset-1)*set_lng; |
| | else |
| | set=(1+(subset-1)*set_lng):nmb_dt; |
| | end |
| | data=m_data(set,:); |
| | labels=m_labels(:,set); |
| | label_ids=m_label_ids(:,set); |
| | label_table=m_label_table; |
| | out=fun_save_modularized_data(patch, module, subset,nmb_of_labs_per_module,data,labels,label_ids,label_table) |
| | end |
| | module |
| | end |
| |
|