Ejemplo n.º 1
0
def predict_all_xmls(args, dirs, wsi, iteration):
    # reshape regions calc
    downsample = int(args.downsampleRateLR**.5)
    region_size = int(args.boxSizeLR * (downsample))
    step = int(region_size * (1 - args.overlap_percentLR))

    # figure out the number of classes
    annotatedXMLs = glob(args.base_dir + '/' + args.project +
                         dirs['training_data_dir'] + str(iteration - 1) +
                         '/*.xml')
    classes = []
    for xml in annotatedXMLs:
        classes.append(get_num_classes(xml))
    classNum = max(classes)

    # chop wsi
    fileID, test_num_steps, slide = chop_suey(wsi, dirs, downsample,
                                              region_size, step, args)
    dirs['fileID'] = fileID
    print('Chop SUEY!\n')

    # call DeepLab for prediction (Low resolution)
    print('finding Glom locations ...\n')

    make_folder(dirs['outDir'] + fileID + dirs['img_save_dir'] + 'prediction')

    modeldir = args.base_dir + '/' + args.project + dirs['modeldir'] + str(
        iteration) + '/LR'
    test_steps_LR = get_all_test_steps(modeldir)

    for idx, test_step in enumerate(test_steps_LR):
        # test all saved models in current iteration

        modeldir = args.base_dir + '/' + args.project + dirs['modeldir'] + str(
            iteration) + '/LR'
        test_data_list = fileID + '_images' + '.txt'
        print("\033[1;32;40m" + "starting prediction using model: \n\t" +
              modeldir + str(test_step) + "\033[0;37;40m" + "\n\n")

        call([
            'python3', args.base_dir + '/Codes/Deeplab_network/main.py',
            '--option', 'predict', '--test_data_list',
            dirs['outDir'] + fileID + dirs['txt_save_dir'] + test_data_list,
            '--out_dir', dirs['outDir'] + fileID + dirs['img_save_dir'],
            '--test_step',
            str(test_step), '--test_num_steps',
            str(test_num_steps), '--modeldir', modeldir, '--data_dir',
            dirs['outDir'] + fileID + dirs['img_save_dir'], '--num_classes',
            str(classNum), '--gpu', '0'
        ])

        # un chop
        print('\nreconstructing wsi map ...\n')
        wsiMask = un_suey(dirs=dirs, args=args)

        # save hotspots
        if dirs['save_outputs'] == True:
            make_folder(dirs['outDir'] + fileID + dirs['mask_dir'])
            print('saving to: ' + dirs['outDir'] + fileID + dirs['mask_dir'] +
                  fileID + '.png')
            with warnings.catch_warnings():
                warnings.simplefilter("ignore")
                imsave(
                    dirs['outDir'] + fileID + dirs['mask_dir'] + fileID +
                    '.png', wsiMask)

        # find glom locations in reconstructed map
        print('\ninterpreting prediction map ...')
        test_num_steps, labeledArray, label_offsets = find_suey(
            wsiMask, dirs, downsample, args, wsi)
        print('\n\nthe cropped regions have been saved to: ' + dirs['outDir'] +
              fileID + dirs['img_save_dir'] + fileID + dirs['crop_dir'])

        # call DeepLab to predict Glom boundaries (High resolution)
        print('\ngetting Glom boundaries ...\n')
        make_folder(dirs['outDir'] + fileID + dirs['final_output_dir'] +
                    'prediction')

        test_data_list = fileID + '_crops.txt'
        modeldir = args.base_dir + '/' + args.project + dirs['modeldir'] + str(
            iteration) + '/HR'

        test_steps_HR = get_all_test_steps(modeldir)
        if idx > len(test_steps_HR):
            test_step = test_steps_HR[-1]
        else:
            test_step = test_steps_HR[idx]

        print("\033[1;32;40m" + "starting prediction using model: \n\t" +
              modeldir + str(test_step) + "\033[0;37;40m" + "\n\n")

        call([
            'python3', args.base_dir + '/Codes/Deeplab_network/main.py',
            '--option', 'predict', '--test_data_list',
            dirs['outDir'] + fileID + dirs['txt_save_dir'] + test_data_list,
            '--out_dir', dirs['outDir'] + fileID + dirs['final_output_dir'],
            '--test_step',
            str(test_step), '--test_num_steps',
            str(test_num_steps), '--modeldir', modeldir, '--data_dir',
            dirs['outDir'] + fileID + dirs['img_save_dir'], '--num_classes',
            str(classNum), '--gpu', '0'
        ])

        print('\nsaving final glom images ...')
        print('\nworking on:')

        crop_suey(label_offsets, dirs, args, classNum, iteration, idx)

    # clean up
    if dirs['save_outputs'] == False:
        print('cleaning up')
        rmtree(dirs['outDir'] + fileID)
Ejemplo n.º 2
0
def predict_xml(args, dirs, wsi, iteration):
    # reshape regions calc
    downsample = int(args.downsampleRateLR**.5)
    downsample_HR = int(args.downsampleRateHR**.5)
    region_size = int(args.boxSizeLR*(downsample))
    step = int(region_size*(1-args.overlap_percentLR))

    # figure out the number of classes
    if args.classNum == 0:
        annotatedXMLs=glob(args.base_dir + '/' + args.project + dirs['training_data_dir'] + str(iteration-1) + '/*.xml')
        classes = []
        for xml in annotatedXMLs:
            classes.append(get_num_classes(xml))
        print(classes)
        print(args.classNum)
        classNum_LR = max(classes)
        classNum_HR = max(classes)
    else:
        classNum_LR = args.classNum
        if args.classNum_HR != 0:
            classNum_HR = args.classNum_HR
        else:
            classNum_HR = classNum_LR

    # chop wsi
    fileID, test_num_steps, slide = chop_suey(wsi, dirs, downsample, region_size, step, args)
    dirs['fileID'] = fileID
    print('Chop SUEY!\n')

    # call DeepLab for prediction (Low resolution)
    print('finding Glom locations ...\n')

    make_folder(dirs['outDir'] + fileID + dirs['img_save_dir'] + 'prediction')

    test_data_list = fileID + '_images' + '.txt'
    modeldir = args.base_dir + '/' + args.project + dirs['modeldir'] + str(iteration) + '/LR'
    test_step = get_test_step(modeldir)
    print("\033[1;32;40m"+"starting prediction using model: \n\t" + modeldir + str(test_step) + "\033[0;37;40m"+"\n\n")

    call(['python3', args.base_dir+'/Codes/Deeplab_network/main.py',
        '--option', 'predict',
        '--test_data_list', dirs['outDir']+fileID+dirs['txt_save_dir']+test_data_list,
        '--out_dir', dirs['outDir']+fileID+dirs['img_save_dir'],
        '--test_step', str(test_step),
        '--test_num_steps', str(test_num_steps),
        '--modeldir', modeldir,
        '--data_dir', dirs['outDir']+fileID+dirs['img_save_dir'],
        '--num_classes', str(classNum_LR),
        '--gpu', str(args.gpu)])

    # un chop
    print('\nreconstructing wsi map ...\n')
    wsiMask = un_suey(dirs=dirs, args=args)

    # save hotspots
    if dirs['save_outputs'] == True:
        make_folder(dirs['outDir'] + fileID + dirs['mask_dir'])
        print('saving to: ' + dirs['outDir'] + fileID + dirs['mask_dir'] + fileID  + '.png')
        with warnings.catch_warnings():
            warnings.simplefilter("ignore")
            imsave(dirs['outDir'] + fileID + dirs['mask_dir'] + fileID + '.png', wsiMask/np.max(wsiMask))

    # find glom locations in reconstructed map
    print('\ninterpreting prediction map ...')
    test_num_steps, labeledArray, label_offsets = find_suey(wsiMask, dirs, downsample, args, wsi)
    print('\n\nthe cropped regions have been saved to: ' + dirs['outDir'] + fileID + dirs['img_save_dir'] + fileID + dirs['crop_dir'])

    # call DeepLab to predict Glom boundaries (High resolution)
    print('\ngetting Glom boundaries ...\n')
    make_folder(dirs['outDir'] + fileID + dirs['final_output_dir'] + 'prediction')

    test_data_list = fileID + '_crops.txt'
    modeldir = args.base_dir + '/' + args.project + dirs['modeldir'] + str(iteration) + '/HR'
    test_step = get_test_step(modeldir)
    print("\033[1;32;40m"+"starting prediction using model: \n\t" + modeldir + str(test_step) + "\033[0;37;40m"+"\n\n")

    call(['python3', args.base_dir+'/Codes/Deeplab_network/main.py',
        '--option', 'predict',
        '--test_data_list', dirs['outDir']+fileID+dirs['txt_save_dir']+test_data_list,
        '--out_dir', dirs['outDir']+fileID+dirs['final_output_dir'],
        '--test_step', str(test_step),
        '--test_num_steps', str(test_num_steps),
        '--modeldir', modeldir,
        '--data_dir', dirs['outDir']+fileID+dirs['img_save_dir'],
        '--num_classes', str(classNum_HR),
        '--gpu', str(args.gpu)])

    print('\nsaving final glom images ...')
    print('\nstitching high resolution WSI mask:')

    wsiMask_HR=unstitch_HR(dirs=dirs,args=args,wsi=wsi)
    wsidims=wsiMask_HR.shape
    d1=int(wsidims[0]*(1/args.approx_downsample))
    d2=int(wsidims[1]*(1/args.approx_downsample))

    if args.approx_downsample!=1:
        print('\nDownsampling high resolution mask for prediction smoothing...')
        wsiMask_HR=resize(wsiMask_HR,(d1,d2),order=0,anti_aliasing=False,preserve_range=True)
    #mask_display=resize(wsiMask_HR,(d1,d2))
    #plt.imshow(mask_display/np.max(wsiMask))
    #plt.show()
    print('\nGenerating XML annotations from WSI mask...')
    make_folder(dirs['outDir'] + dirs['fileID'] + dirs['final_output_dir'] + dirs['final_boundary_image_dir'])
    crop_suey(wsiMask_HR,label_offsets, dirs, args, classNum_HR, downsample_HR)


    # clean up
    if dirs['save_outputs'] == False:
        print('\ncleaning up')
        rmtree(dirs['outDir']+fileID)
Ejemplo n.º 3
0
def predict_xml(args, dirs, wsi, iteration):
    # reshape regions calc
    downsample = int(args.downsampleRateHR**.5)
    region_size = int(args.boxSizeHR * (downsample))
    step = int(region_size * (1 - args.overlap_percentHR))

    # figure out the number of classes
    if args.classNum == 0:
        annotatedXMLs = glob(args.base_dir + '/' + args.project +
                             dirs['training_data_dir'] + str(iteration - 1) +
                             '/*.xml')
        classes = []
        for xml in annotatedXMLs:
            classes.append(get_num_classes(xml))
        classNum = max(classes)
    else:
        classNum = args.classNum

    # chop wsi
    fileID, test_num_steps = chop_suey(wsi, dirs, downsample, region_size,
                                       step, args)
    dirs['fileID'] = fileID
    print('Chop SUEY!\n')

    # call DeepLab for prediction
    print('Segmenting tissue ...\n')

    make_folder(dirs['outDir'] + fileID + dirs['img_save_dir'] + 'prediction')

    test_data_list = fileID + '_images' + '.txt'
    modeldir = args.base_dir + '/' + args.project + dirs['modeldir'] + str(
        iteration) + '/HR'
    test_step = get_test_step(modeldir)
    print("\033[1;32;40m" + "starting prediction using model: \n\t" +
          modeldir + '/' + str(test_step) + "\033[0;37;40m" + "\n\n")

    call([
        'python3', args.base_dir + '/Codes/Deeplab_network/main.py',
        '--option', 'predict', '--test_data_list',
        dirs['outDir'] + fileID + dirs['txt_save_dir'] + test_data_list,
        '--out_dir', dirs['outDir'] + fileID + dirs['img_save_dir'],
        '--test_step',
        str(test_step), '--test_num_steps',
        str(test_num_steps), '--modeldir', modeldir, '--data_dir',
        dirs['outDir'] + fileID + dirs['img_save_dir'], '--num_classes',
        str(classNum), '--gpu',
        str(args.gpu)
    ])

    # un chop
    print('\nreconstructing wsi map ...\n')
    wsiMask = un_suey(dirs=dirs, args=args)

    # save hotspots
    if dirs['save_outputs'] == True:
        make_folder(dirs['outDir'] + fileID + dirs['mask_dir'])
        print('saving to: ' + dirs['outDir'] + fileID + dirs['mask_dir'] +
              fileID + '.png')
        with warnings.catch_warnings():
            warnings.simplefilter("ignore")
            imsave(
                dirs['outDir'] + fileID + dirs['mask_dir'] + fileID + '.png',
                wsiMask)

    print('\n\nStarting XML construction: ')

    xml_suey(wsiMask=wsiMask,
             dirs=dirs,
             args=args,
             classNum=classNum,
             downsample=downsample)

    # clean up
    if dirs['save_outputs'] == False:
        print('cleaning up')
        rmtree(dirs['outDir'] + fileID)
Ejemplo n.º 4
0
def predict_xml(args, dirs, wsi, iteration):
    # reshape regions calc
    downsample = int(args.downsampleRateHR**.5)
    region_size = int(args.boxSizeHR*(downsample))
    step = int(region_size*(1-args.overlap_percentHR))

    # figure out the number of classes
    if args.classNum == 0:
        annotatedXMLs=glob(args.base_dir + '/' + args.project + dirs['training_data_dir'] + str(iteration-1) + '/*.xml')
        classes = []
        for xml in annotatedXMLs:
            classes.append(get_num_classes(xml))
        classNum = max(classes)
    else:
        classNum = args.classNum

    # chop wsi
    if args.chop_data == 'True':
        # chop wsi
        fileID, test_num_steps = chop_suey(wsi, dirs, downsample, region_size, step, args)
        dirs['fileID'] = fileID
        print('Chop SUEY!\n')
    else:
        basename = os.path.splitext(wsi)[0]

        if wsi.split('.')[-1] != 'tif':
            slide=getWsi(wsi)
            # get image dimensions
            dim_x, dim_y=slide.dimensions
        else:
            im = Image.open(wsi)
            dim_x, dim_y=im.size

        fileID=basename.split('/')
        dirs['fileID'] = fileID=fileID[len(fileID)-1]
        test_num_steps = file_len(dirs['outDir'] + fileID + dirs['txt_save_dir'] + fileID + '_images' + ".txt")
    # call DeepLab for prediction
    print('Segmenting tissue ...\n')

    make_folder(dirs['outDir'] + fileID + dirs['img_save_dir'] + 'prediction')

    test_data_list = fileID + '_images' + '.txt'
    modeldir = args.base_dir + '/' + args.project + dirs['modeldir'] + str(iteration) + '/HR'
    test_step = get_test_step(modeldir)
    print("\033[1;32;40m"+"starting prediction using model: \n\t" + modeldir + '/' + str(test_step) + "\033[0;37;40m"+"\n\n")
    
    call(['python3.5', args.base_dir+'/Codes/Deeplab_network/main.py',
        '--option', 'predict',
        '--test_data_list', dirs['outDir']+fileID+dirs['txt_save_dir']+test_data_list,
        '--out_dir', dirs['outDir']+fileID+dirs['img_save_dir'],
        '--test_step', str(test_step),
        '--test_num_steps', str(test_num_steps),
        '--modeldir', modeldir,
        '--data_dir', dirs['outDir']+fileID+dirs['img_save_dir'],
        '--num_classes', str(classNum),
        '--gpu', str(args.gpu),
        '--encoder_name',args.encoder_name])

    # un chop
    print('\nreconstructing wsi map ...\n')
    wsiMask = un_suey(dirs=dirs, args=args)

    # save hotspots
    if dirs['save_outputs'] == True:
    	#reduce the resolution of the image
        wsidims=wsiMask.shape
        wsiMask_save=resize(wsiMask,(int(wsidims[0]/4),int(wsidims[1]/4)),order=0,preserve_range=True)

        make_folder(dirs['outDir'] + fileID + dirs['mask_dir'])
        print('saving to: ' + dirs['outDir'] + fileID + dirs['mask_dir'] + fileID  + '.png')
        with warnings.catch_warnings():
            warnings.simplefilter("ignore")
            imsave(dirs['outDir'] + fileID + dirs['mask_dir'] + fileID + '.png', wsiMask_save)

    print('\n\nStarting XML construction: ')

    xml_suey(wsiMask=wsiMask, dirs=dirs, args=args, classNum=classNum, downsample=downsample)

    # clean up
    if dirs['save_outputs'] == False:
        print('cleaning up')
        rmtree(dirs['outDir']+fileID)