示例#1
0
def main(exp_config):

    logging.info(
        '**************************************************************')
    logging.info(' *** Running Experiment: %s', exp_config.experiment_name)
    logging.info(
        '**************************************************************')
    # Get Data
    data_loader = data_switch(exp_config.data_identifier)
    data = data_loader(exp_config)

    # Create Model
    phiseg = phiseg_model.phiseg(exp_config)

    # Fit model to data
    phiseg.train(data)
def main(model_path, exp_config):

    # Make and restore vagan model
    phiseg_model = phiseg(exp_config=exp_config)
    phiseg_model.load_weights(model_path, type=model_selection)

    data_loader = data_switch(exp_config.data_identifier)
    data = data_loader(exp_config)

    N = data.test.images.shape[0]

    n_images = 16
    n_samples = 16

    # indices = np.arange(N)
    # sample_inds = np.random.choice(indices, n_images)
    sample_inds = [165, 280, 213]  # <-- prostate
    # sample_inds = [1551] #[907, 1296, 1551]  # <-- LIDC

    for ii in sample_inds:

        print('------- Processing image %d -------' % ii)

        outfolder = os.path.join(model_path, 'samples_%s' % model_selection,
                                 str(ii))
        utils.makefolder(outfolder)

        x_b = data.test.images[ii,
                               ...].reshape([1] + list(exp_config.image_size))
        s_b = data.test.labels[ii, ...]

        if np.sum(s_b) < 10:
            print('WARNING: skipping cases with no structures')
            continue

        s_b_r = utils.convert_batch_to_onehot(s_b.transpose((2, 0, 1)),
                                              exp_config.nlabels)

        print('Plotting input image')
        plt.figure()
        x_b_d = preproc_image(x_b)
        plt.imshow(x_b_d, cmap='gray')
        plt.axis('off')
        plt.savefig(os.path.join(outfolder, 'input_img_%d.png' % ii),
                    bbox_inches='tight')

        print('Generating 100 samples')
        s_p_list = []
        for kk in range(100):
            s_p_list.append(
                phiseg_model.predict_segmentation_sample(x_b,
                                                         return_softmax=True))
        s_p_arr = np.squeeze(np.asarray(s_p_list))

        print('Plotting %d of those samples' % n_samples)
        for jj in range(n_samples):

            s_p_sm = s_p_arr[jj, ...]
            s_p_am = np.argmax(s_p_sm, axis=-1)

            plt.figure()
            s_p_d = preproc_image(s_p_am, nlabels=exp_config.nlabels)
            plt.imshow(s_p_d, cmap='gray')
            plt.axis('off')
            plt.savefig(os.path.join(outfolder,
                                     'sample_img_%d_samp_%d.png' % (ii, jj)),
                        bbox_inches='tight')

        print('Plotting ground-truths masks')
        for jj in range(s_b_r.shape[0]):

            s_b_sm = s_b_r[jj, ...]
            s_b_am = np.argmax(s_b_sm, axis=-1)

            plt.figure()
            s_p_d = preproc_image(s_b_am, nlabels=exp_config.nlabels)
            plt.imshow(s_p_d, cmap='gray')
            plt.axis('off')
            plt.savefig(os.path.join(outfolder,
                                     'gt_img_%d_samp_%d.png' % (ii, jj)),
                        bbox_inches='tight')

        print('Generating error masks')
        E_ss, E_sy_avg, E_yy_avg = generate_error_maps(s_p_arr, s_b_r)

        print('Plotting them')
        plt.figure()
        plt.imshow(preproc_image(E_ss))
        plt.axis('off')
        plt.savefig(os.path.join(outfolder, 'E_ss_%d.png' % ii),
                    bbox_inches='tight')

        print('Plotting them')
        plt.figure()
        plt.imshow(preproc_image(np.log(E_ss)))
        plt.axis('off')
        plt.savefig(os.path.join(outfolder, 'log_E_ss_%d.png' % ii),
                    bbox_inches='tight')

        plt.figure()
        plt.imshow(preproc_image(E_sy_avg))
        plt.axis('off')
        plt.savefig(os.path.join(outfolder, 'E_sy_avg_%d_.png' % ii),
                    bbox_inches='tight')

        plt.figure()
        plt.imshow(preproc_image(E_yy_avg))
        plt.axis('off')
        plt.savefig(os.path.join(outfolder, 'E_yy_avg_%d_.png' % ii),
                    bbox_inches='tight')

        plt.close('all')
def main(model_path, exp_config):

    # Make and restore vagan model
    phiseg_model = phiseg(exp_config=exp_config)
    phiseg_model.load_weights(model_path, type='best_ged')

    data_loader = data_switch(exp_config.data_identifier)
    data = data_loader(exp_config)

    lat_lvls = exp_config.latent_levels

    # RANDOM IMAGE
    # x_b, s_b = data.test.next_batch(1)

    # FIXED IMAGE
    # Cardiac: 100 normal image
    # LIDC: 200 large lesion, 203, 1757 complicated lesion
    # Prostate: 165 nice slice, 170 is a challenging and interesting slice
    index = 165  # #

    if SAVE_GIF:
        outfolder_gif = os.path.join(model_path,
                                     'model_samples_id%d_gif' % index)
        utils.makefolder(outfolder_gif)

    x_b = data.test.images[index,
                           ...].reshape([1] + list(exp_config.image_size))

    x_b_d = utils.convert_to_uint8(np.squeeze(x_b))
    x_b_d = utils.resize_image(x_b_d, video_target_size)

    if exp_config.data_identifier == 'uzh_prostate':
        # rotate
        rows, cols = x_b_d.shape
        M = cv2.getRotationMatrix2D((cols / 2, rows / 2), 270, 1)
        x_b_d = cv2.warpAffine(x_b_d, M, (cols, rows))

    if SAVE_VIDEO:
        fourcc = cv2.VideoWriter_fourcc(*'XVID')
        outfile = os.path.join(model_path, 'model_samples_id%d.avi' % index)
        out = cv2.VideoWriter(outfile, fourcc, 5.0,
                              (2 * video_target_size[1], video_target_size[0]))

    samps = 20
    for ii in range(samps):

        # fix all below current level (the correct implementation)
        feed_dict = {}
        feed_dict[phiseg_model.training_pl] = False
        feed_dict[phiseg_model.x_inp] = x_b

        s_p, s_p_list = phiseg_model.sess.run(
            [phiseg_model.s_out_eval, phiseg_model.s_out_eval_list],
            feed_dict=feed_dict)
        s_p = np.argmax(s_p, axis=-1)

        # s_p_d = utils.convert_to_uint8(np.squeeze(s_p))
        s_p_d = np.squeeze(np.uint8((s_p / exp_config.nlabels) * 255))
        s_p_d = utils.resize_image(s_p_d,
                                   video_target_size,
                                   interp=cv2.INTER_NEAREST)

        if exp_config.data_identifier == 'uzh_prostate':
            #rotate
            s_p_d = cv2.warpAffine(s_p_d, M, (cols, rows))

        img = np.concatenate([x_b_d, s_p_d], axis=1)
        img = cv2.cvtColor(img, cv2.COLOR_GRAY2BGR)

        img = histogram_equalization(img)

        if exp_config.data_identifier == 'acdc':
            # labels (0 85 170 255)
            rv = cv2.inRange(s_p_d, 84, 86)
            my = cv2.inRange(s_p_d, 169, 171)
            rv_cnt, hierarchy = cv2.findContours(rv, cv2.RETR_TREE,
                                                 cv2.CHAIN_APPROX_SIMPLE)
            my_cnt, hierarchy = cv2.findContours(my, cv2.RETR_TREE,
                                                 cv2.CHAIN_APPROX_SIMPLE)

            cv2.drawContours(img, rv_cnt, -1, (0, 255, 0), 1)
            cv2.drawContours(img, my_cnt, -1, (0, 0, 255), 1)
        if exp_config.data_identifier == 'uzh_prostate':

            print(np.unique(s_p_d))
            s1 = cv2.inRange(s_p_d, 84, 86)
            s2 = cv2.inRange(s_p_d, 169, 171)
            # s3 = cv2.inRange(s_p_d, 190, 192)
            s1_cnt, hierarchy = cv2.findContours(s1, cv2.RETR_TREE,
                                                 cv2.CHAIN_APPROX_SIMPLE)
            s2_cnt, hierarchy = cv2.findContours(s2, cv2.RETR_TREE,
                                                 cv2.CHAIN_APPROX_SIMPLE)
            # s3_cnt, hierarchy = cv2.findContours(s3, cv2.RETR_TREE, cv2.CHAIN_APPROX_SIMPLE)

            cv2.drawContours(img, s1_cnt, -1, (0, 255, 0), 1)
            cv2.drawContours(img, s2_cnt, -1, (0, 0, 255), 1)
            # cv2.drawContours(img, s3_cnt, -1, (255, 0, 255), 1)
        elif exp_config.data_identifier == 'lidc':
            thresh = cv2.inRange(s_p_d, 127, 255)
            lesion, hierarchy = cv2.findContours(thresh, cv2.RETR_TREE,
                                                 cv2.CHAIN_APPROX_SIMPLE)
            cv2.drawContours(img, lesion, -1, (0, 255, 0), 1)

        if SAVE_VIDEO:
            out.write(img)

        if SAVE_GIF:
            outfile_gif = os.path.join(outfolder_gif,
                                       'frame_%s.png' % str(ii).zfill(3))
            img_rgb = cv2.cvtColor(img, cv2.COLOR_BGR2RGB)
            # scipy.misc.imsave(outfile_gif, img_rgb)
            im = Image.fromarray(img_rgb)
            im = im.resize((im.size[0] * 2, im.size[1] * 2), Image.ANTIALIAS)

            im.save(outfile_gif)

        if DISPLAY_VIDEO:
            cv2.imshow('frame', img)
            if cv2.waitKey(1) & 0xFF == ord('q'):
                break

    if SAVE_VIDEO:
        out.release()
    cv2.destroyAllWindows()
示例#4
0
def main(model_path, exp_config, model_selection='latest'):

    # Get Data
    phiseg_model = phiseg(exp_config=exp_config)
    phiseg_model.load_weights(model_path, type=model_selection)

    data_loader = data_switch(exp_config.data_identifier)
    data = data_loader(exp_config)

    # Run predictions in an endless loop
    dice_list = []

    num_samples = 1 if exp_config.likelihood is likelihoods.det_unet2D else 100

    for ii, batch in enumerate(data.test.iterate_batches(1)):

        if ii % 10 == 0:
            logging.info("Progress: %d" % ii)

        # print(ii)

        x, y = batch

        y_ = np.squeeze(phiseg_model.predict(x, num_samples=num_samples))

        per_lbl_dice = []
        per_pixel_preds = []
        per_pixel_gts = []

        for lbl in range(exp_config.nlabels):

            binary_pred = (y_ == lbl) * 1
            binary_gt = (y == lbl) * 1

            if np.sum(binary_gt) == 0 and np.sum(binary_pred) == 0:
                per_lbl_dice.append(1)
            elif np.sum(binary_pred) > 0 and np.sum(binary_gt) == 0 or np.sum(
                    binary_pred) == 0 and np.sum(binary_gt) > 0:
                logging.warning(
                    'Structure missing in either GT (x)or prediction. ASSD and HD will not be accurate.'
                )
                per_lbl_dice.append(0)
            else:
                per_lbl_dice.append(dc(binary_pred, binary_gt))

        dice_list.append(per_lbl_dice)

        per_pixel_preds.append(y_.flatten())
        per_pixel_gts.append(y.flatten())

    dice_arr = np.asarray(dice_list)

    mean_per_lbl_dice = dice_arr.mean(axis=0)

    logging.info('Dice')
    logging.info(mean_per_lbl_dice)
    logging.info(np.mean(mean_per_lbl_dice))
    logging.info('foreground mean: %f' % (np.mean(mean_per_lbl_dice[1:])))

    np.savez(os.path.join(model_path, 'dice_%s.npz' % model_selection),
             dice_arr)
示例#5
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def main(model_path, exp_config, do_plots=False):

    n_samples = 50
    model_selection = 'best_ged'

    # Get Data
    phiseg_model = phiseg(exp_config=exp_config)
    phiseg_model.load_weights(model_path, type=model_selection)

    data_loader = data_switch(exp_config.data_identifier)
    data = data_loader(exp_config)

    N = data.test.images.shape[0]

    ged_list = []
    ncc_list = []

    for ii in range(N):

        if ii % 10 == 0:
            logging.info("Progress: %d" % ii)

        x_b = data.test.images[ii,
                               ...].reshape([1] + list(exp_config.image_size))
        s_b = data.test.labels[ii, ...]

        x_b_stacked = np.tile(x_b, [n_samples, 1, 1, 1])

        feed_dict = {}
        feed_dict[phiseg_model.training_pl] = False
        feed_dict[phiseg_model.x_inp] = x_b_stacked

        s_arr_sm = phiseg_model.sess.run(phiseg_model.s_out_eval_sm,
                                         feed_dict=feed_dict)
        s_arr = np.argmax(s_arr_sm, axis=-1)

        # s_arr = np.squeeze(np.asarray(s_list)) # num samples x X x Y
        s_b_r = s_b.transpose((2, 0, 1))  # num gts x X x Y
        s_b_r_sm = utils.convert_batch_to_onehot(
            s_b_r, exp_config.nlabels)  # num gts x X x Y x nlabels

        ged = utils.generalised_energy_distance(s_arr,
                                                s_b_r,
                                                nlabels=exp_config.nlabels - 1,
                                                label_range=range(
                                                    1, exp_config.nlabels))
        ged_list.append(ged)

        ncc = utils.variance_ncc_dist(s_arr_sm, s_b_r_sm)
        ncc_list.append(ncc)

    ged_arr = np.asarray(ged_list)
    ncc_arr = np.asarray(ncc_list)

    logging.info('-- GED: --')
    logging.info(np.mean(ged_arr))
    logging.info(np.std(ged_arr))

    logging.info('-- NCC: --')
    logging.info(np.mean(ncc_arr))
    logging.info(np.std(ncc_arr))

    np.savez(
        os.path.join(model_path,
                     'ged%s_%s.npz' % (str(n_samples), model_selection)),
        ged_arr)
    np.savez(
        os.path.join(model_path,
                     'ncc%s_%s.npz' % (str(n_samples), model_selection)),
        ncc_arr)
示例#6
0
def main(model_path, exp_config):

    # Make and restore vagan model
    phiseg_model = phiseg(exp_config=exp_config)
    phiseg_model.load_weights(model_path, type='best_dice')

    data_loader = data_switch(exp_config.data_identifier)
    data = data_loader(exp_config)

    outfolder = '/home/baumgach/Reports/ETH/MICCAI2019_segvae/raw_figures'

    ims = exp_config.image_size

    # x_b, s_b = data.test.next_batch(1)

    # heart 100
    # prostate 165
    index = 165  # 100 is a normal image, 15 is a very good slice
    x_b = data.test.images[index,
                           ...].reshape([1] + list(exp_config.image_size))
    if exp_config.data_identifier == 'lidc':
        s_b = data.test.labels[index, ...]
        if np.sum(s_b[..., 0]) > 0:
            s_b = s_b[..., 0]
        elif np.sum(s_b[..., 1]) > 0:
            s_b = s_b[..., 1]
        elif np.sum(s_b[..., 2]) > 0:
            s_b = s_b[..., 2]
        else:
            s_b = s_b[..., 3]

        s_b = s_b.reshape([1] + list(exp_config.image_size[0:2]))
    elif exp_config.data_identifier == 'uzh_prostate':
        s_b = data.test.labels[index, ...]
        s_b = s_b[..., 0]
        s_b = s_b.reshape([1] + list(exp_config.image_size[0:2]))
    else:
        s_b = data.test.labels[index,
                               ...].reshape([1] +
                                            list(exp_config.image_size[0:2]))

    x_b_for_cnt = utils.convert_to_uint8(np.squeeze(x_b.copy()))
    x_b_for_cnt = cv2.cvtColor(x_b_for_cnt, cv2.COLOR_GRAY2BGR)

    x_b_for_cnt = utils.resize_image(x_b_for_cnt, (2 * ims[0], 2 * ims[1]),
                                     interp=cv2.INTER_NEAREST)
    x_b_for_cnt = utils.histogram_equalization(x_b_for_cnt)

    for ss in range(3):

        print(ss)

        s_p_list = phiseg_model.predict_segmentation_sample_levels(
            x_b, return_softmax=False)

        accum_list = [None] * exp_config.latent_levels
        accum_list[exp_config.latent_levels - 1] = s_p_list[-1]
        for lvl in reversed(range(exp_config.latent_levels - 1)):
            accum_list[lvl] = accum_list[lvl + 1] + s_p_list[lvl]

        print('Plotting accum_list')
        for ii, img in enumerate(accum_list):

            plt.figure()
            img = utils.resize_image(np.squeeze(np.argmax(img, axis=-1)),
                                     (2 * ims[0], 2 * ims[1]),
                                     interp=cv2.INTER_NEAREST)
            plt.imshow(img[2 * 30:2 * 192 - 2 * 30, 2 * 30:2 * 192 - 2 * 30],
                       cmap='gray')
            plt.axis('off')
            plt.savefig(os.path.join(outfolder,
                                     'segm_lvl_%d_samp_%d.png' % (ii, ss)),
                        bbox_inches='tight')

        print('Plotting s_p_list')
        for ii, img in enumerate(s_p_list):

            img = utils.softmax(img)

            plt.figure()
            img = utils.resize_image(np.squeeze(img[..., 1]),
                                     (2 * ims[0], 2 * ims[1]),
                                     interp=cv2.INTER_NEAREST)
            plt.imshow(img[2 * 30:2 * 192 - 2 * 30, 2 * 30:2 * 192 - 2 * 30],
                       cmap='gray')
            plt.axis('off')
            plt.savefig(os.path.join(outfolder,
                                     'residual_lvl_%d_samp_%d.png' % (ii, ss)),
                        bbox_inches='tight')

        s_p_d = np.uint8((np.squeeze(np.argmax(accum_list[0], axis=-1)) /
                          (exp_config.nlabels - 1)) * 255)
        s_p_d = utils.resize_image(s_p_d, (2 * ims[0], 2 * ims[1]),
                                   interp=cv2.INTER_NEAREST)

        print('Calculating contours')
        print(np.unique(s_p_d))
        rv = cv2.inRange(s_p_d, 84, 86)
        my = cv2.inRange(s_p_d, 169, 171)
        rv_cnt, hierarchy = cv2.findContours(rv, cv2.RETR_TREE,
                                             cv2.CHAIN_APPROX_SIMPLE)
        my_cnt, hierarchy = cv2.findContours(my, cv2.RETR_TREE,
                                             cv2.CHAIN_APPROX_SIMPLE)

        x_b_for_cnt = cv2.drawContours(x_b_for_cnt, rv_cnt, -1, (0, 255, 0), 1)
        x_b_for_cnt = cv2.drawContours(x_b_for_cnt, my_cnt, -1, (0, 0, 255), 1)

    x_b_for_cnt = cv2.cvtColor(x_b_for_cnt, cv2.COLOR_BGR2RGB)

    print('Plotting final images...')
    plt.figure()
    plt.imshow(x_b_for_cnt[2 * 30:2 * 192 - 2 * 30,
                           2 * 30:2 * 192 - 2 * 30, :],
               cmap='gray')
    plt.axis('off')
    plt.savefig(os.path.join(outfolder, 'input_img_cnts.png'),
                bbox_inches='tight')

    plt.figure()
    x_b = utils.convert_to_uint8(x_b)
    x_b = cv2.cvtColor(np.squeeze(x_b), cv2.COLOR_GRAY2BGR)
    x_b = utils.histogram_equalization(x_b)
    x_b = utils.resize_image(x_b, (2 * ims[0], 2 * ims[1]),
                             interp=cv2.INTER_NEAREST)
    plt.imshow(x_b[2 * 30:2 * 192 - 2 * 30, 2 * 30:2 * 192 - 2 * 30],
               cmap='gray')
    plt.axis('off')
    plt.savefig(os.path.join(outfolder, 'input_img.png'), bbox_inches='tight')

    plt.figure()
    s_b = utils.resize_image(np.squeeze(s_b), (2 * ims[0], 2 * ims[1]),
                             interp=cv2.INTER_NEAREST)
    plt.imshow(s_b[2 * 30:2 * 192 - 2 * 30, 2 * 30:2 * 192 - 2 * 30],
               cmap='gray')
    plt.axis('off')
    plt.savefig(os.path.join(outfolder, 'gt_seg.png'), bbox_inches='tight')
示例#7
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def test(model_path, exp_config, model_selection='latest', num_samples=100, overwrite=False, mode=False):
    output_path = get_output_path(model_path, num_samples, model_selection, mode) + '.pickle'
    if os.path.exists(output_path) and not overwrite:
        return
    image_saver = ImageSaver(os.path.join(model_path, 'samples'))
    tf.reset_default_graph()
    phiseg_model = phiseg(exp_config=exp_config)
    phiseg_model.load_weights(model_path, type=model_selection)

    data_loader = data_switch(exp_config.data_identifier)
    data = data_loader(exp_config)

    metrics = {key: [] for key in
               ['dsc', 'presence', 'ged', 'ncc', 'entropy', 'diversity', 'sample_dsc', 'ece', 'unweighted_ece',
                'loglikelihood']}

    num_samples = 1 if exp_config.likelihood is likelihoods.det_unet2D else num_samples

    for ii in tqdm(range(data.test.images.shape[0])):
        image = data.test.images[ii, ...].reshape([1] + list(exp_config.image_size))
        targets = data.test.labels[ii, ...].transpose((2, 0, 1))

        feed_dict = {phiseg_model.training_pl: False,
                     phiseg_model.x_inp: np.tile(image, [num_samples, 1, 1, 1])}

        prob_maps = phiseg_model.sess.run(phiseg_model.s_out_eval_sm, feed_dict=feed_dict)
        samples = np.argmax(prob_maps, axis=-1)
        probability = np.mean(prob_maps, axis=0) + 1e-10
        metrics['entropy'].append(float(np.sum(-probability * np.log(probability))))
        if mode:
            prediction = np.round(np.mean(np.argmax(prob_maps, axis=-1), axis=0)).astype(np.int64)
        else:
            if 'proposed' not in exp_config.experiment_name:
                prediction = np.argmax(np.sum(prob_maps, axis=0), axis=-1)
            else:
                mean = phiseg_model.sess.run(phiseg_model.dist_eval.loc, feed_dict=feed_dict)[0]
                mean = np.reshape(mean, image.shape[:-1] + (2,))
                prediction = np.argmax(mean, axis=-1)

        metrics['loglikelihood'].append(calculate_log_likelihood(targets, prob_maps))
        # calculate DSC per expert
        metrics['dsc'].append(
            [[calc_dsc(target == i, prediction == i) for i in range(exp_config.nlabels)] for target in targets])
        metrics['presence'].append([[np.any(target == i) for i in range(exp_config.nlabels)] for target in targets])

        metrics['sample_dsc'].append([[[calc_dsc(target == i, sample == i) for i in range(exp_config.nlabels)]
                                       for target in targets] for sample in samples])

        # ged and diversity
        ged_, diversity_ = utils.generalised_energy_distance(samples, targets, exp_config.nlabels - 1,
                                                             range(1, exp_config.nlabels))
        metrics['ged'].append(ged_)
        metrics['diversity'].append(diversity_)
        # NCC
        targets_one_hot = utils.to_one_hot(targets, exp_config.nlabels)
        metrics['ncc'].append(utils.variance_ncc_dist(prob_maps, targets_one_hot)[0])
        prob_map = np.mean(prob_maps, axis=0)
        ece, unweighted_ece = calc_class_wise_expected_calibration_error(targets, prob_map, 2, 10)
        metrics['ece'].append(ece)
        metrics['unweighted_ece'].append(unweighted_ece)
        image_saver(str(ii) + '/', image[0, ..., 0], targets, prediction, samples)

    metrics = {key: np.array(metric) for key, metric in metrics.items()}
    with open(output_path, 'wb') as f:
        pickle.dump(metrics, f)
    image_saver.close()