u_volume.append(u_i * norm)
            target_volume.append(feed_dict[data.target][0] * norm)
            zf_volume.append(feed_dict[data.u][0] * norm)

        # postprocessing
        u_volume = mriutils.postprocess(np.asarray(u_volume),
                                        data_config['dataset']['name'])
        target_volume = mriutils.postprocess(np.asarray(target_volume),
                                             data_config['dataset']['name'])
        zf_volume = mriutils.postprocess(np.asarray(zf_volume),
                                         data_config['dataset']['name'])

        # evaluation
        rmse_vn = mriutils.rmse(u_volume, target_volume)
        rmse_zf = mriutils.rmse(zf_volume, target_volume)
        ssim_vn = mriutils.ssim(u_volume, target_volume)
        ssim_zf = mriutils.ssim(zf_volume, target_volume)

        print(
            "Zero filling: RMSE={:.4f} SSIM={:.4f}  VN: RMSE={:.4f} SSIM={:.4f}"
            .format(rmse_zf, ssim_zf, rmse_vn, ssim_vn))

        time_reco = time.time() - eval_start_time
        print('reconstruction of {} image took {:f}s'.format(
            u_volume.shape, time_reco))

        print('saving reconstructed image to "{}"'.format(output_name))
        # save mat files
        patient_id = '%s-p%d' % (data_config['dataset']['name'],
                                 data_config['dataset']['patient'])
        mriutils.saveAsMat(u_volume,
                        # re-normalize images
                        output.append(u_i[0] * norm)
                        target.append(feed_dict[data.target][0] * norm)
                        input0.append(feed_dict[data.u][0] * norm)
                        normalization.append(norm)

                    # postprocess images
                    output = mriutils.postprocess(np.asarray(output),
                                                  dataset['name'])
                    target = mriutils.postprocess(np.asarray(target),
                                                  dataset['name'])
                    input0 = mriutils.postprocess(np.asarray(input0),
                                                  dataset['name'])

                    # evaluation
                    ssim_patient = mriutils.ssim(output, target)
                    rmse_patient = mriutils.rmse(output, target)
                    ssim_eval_dataset.append(ssim_patient)
                    rmse_eval_dataset.append(rmse_patient)

                    print("    Patient {:d}: {:8.4f} {:8.4f}".format(
                        patient, rmse_patient, ssim_patient))

                    output_path = '%s/%s/%d/' % (eval_output_dir,
                                                 dataset['name'], patient)
                    mriutils.saveAsMat(
                        output,
                        '%s/vn-%d.mat' % (output_path, epoch),
                        'result_vn',
                        mat_dict={'normalization': np.asarray(normalization)})
                    mriutils.saveAsMat(
Пример #3
0
        u_i = sess.run(u_op, feed_dict=feed_dict)[0]
        u_i = u_i * norm
        u_i = mriutils.postprocess(u_i, data_config['dataset']['name'])

        # target
        target = feed_dict[data.target][0]*norm
        target = mriutils.postprocess(target, data_config['dataset']['name'])

        # zero filling
        zero_filling = feed_dict[data.u][0]*norm
        zero_filling = mriutils.postprocess(zero_filling, data_config['dataset']['name'])

        # evaluation
        rmse_vn = mriutils.rmse(u_i, target)
        rmse_zf = mriutils.rmse(zero_filling, target)
        ssim_vn = mriutils.ssim(u_i, target)
        ssim_zf = mriutils.ssim(zero_filling, target)

        print("Zero filling: RMSE={:.4f} SSIM={:.4f}  VN: RMSE={:.4f} SSIM={:.4f}".format(rmse_zf, ssim_zf, rmse_vn, ssim_vn))

        time_reco = time.time() - eval_start_time
        print('reconstruction of {} image took {:f}s'.format(u_i.shape, time_reco))

        print('saving reconstructed image to "{}"'.format(output_name))
        # save mat files
        patient_id = '%s-p%d-sl%d' % (data_config['dataset']['name'],
                                      data_config['dataset']['patient'],
                                      data_config['dataset']['slice'])
        mriutils.saveAsMat(u_i, '%s-vn-%s' % (output_name, patient_id), 'result_vn',
                  mat_dict={'normalization': np.asarray(norm)})
        mriutils.saveAsMat(zero_filling, '%s-zf-%s' % (output_name, patient_id), 'result_zf',