示例#1
0
    ('HD_dataset/HD1080p_GT/Kimono1_1920x1080_24.yuv', 1080, 1920),
    ('HD_dataset/HD1080p_GT/ParkScene_1920x1080_24.yuv', 1080, 1920),
    ('HD_dataset/HD1080p_GT/sunflower_1080p25.yuv', 1080, 1920),
    ('HD_dataset/HD544p_GT/Sintel_Alley2_1280x544.yuv', 544, 1280),
    ('HD_dataset/HD544p_GT/Sintel_Market5_1280x544.yuv', 544, 1280),
    ('HD_dataset/HD544p_GT/Sintel_Temple1_1280x544.yuv', 544, 1280),
    ('HD_dataset/HD544p_GT/Sintel_Temple2_1280x544.yuv', 544, 1280),
]
tot = 0.
for data in name_list:
    psnr_list = []
    name = data[0]
    h = data[1]
    w = data[2]
    if 'yuv' in name:
        Reader = YUV_Read(name, h, w, toRGB=True)
    else:
        Reader = cv2.VideoCapture(name)
    _, lastframe = Reader.read()
    # fourcc = cv2.VideoWriter_fourcc('m', 'p', '4', 'v')
    # video = cv2.VideoWriter(name + '.mp4', fourcc, 30, (w, h))
    for index in range(0, 100, 2):
        if 'yuv' in name:
            IMAGE1, success1 = Reader.read(index)
            gt, _ = Reader.read(index + 1)
            IMAGE2, success2 = Reader.read(index + 2)
            if not success2:
                break
        else:
            success1, gt = Reader.read()
            success2, frame = Reader.read()
示例#2
0
def test_HD720p(model=model,
                use_cuda=args.use_cuda,
                save_which=args.save_which,
                dtype=args.dtype):
    files = sorted(os.listdir(HD720p_Other_DATA))
    unique_id = str(random.randint(0, 100000))
    gen_dir = os.path.join(HD720p_Other_RESULT, unique_id)
    os.mkdir(gen_dir)

    for file_i in files:
        print("\n\n\n**************")
        print(file_i)
        gen_file = os.path.join(HD720p_Other_RESULT, unique_id, file_i)
        input_file = os.path.join(HD720p_Other_DATA, file_i)

        interp_error = AverageMeter()
        psnr_error = AverageMeter()
        ssim_error = AverageMeter()

        print(input_file)
        print(gen_file)
        Reader = YUV_Read(input_file, 720, 1280, toRGB=True)
        Writer = YUV_Write(gen_file, fromRGB=True)
        for index in range(0, 100, 2):  # len(files) - 2, 2):
            IMAGE1, sucess1 = Reader.read(index)
            IMAGE2, sucess2 = Reader.read(index + 2)

            if not sucess1 or not sucess2:
                print("Could not read frame")
                break

            X0 = torch.from_numpy(
                np.transpose(IMAGE1,
                             (2, 0, 1)).astype("float32") / 255.0).type(dtype)
            X1 = torch.from_numpy(
                np.transpose(IMAGE2,
                             (2, 0, 1)).astype("float32") / 255.0).type(dtype)

            y_ = torch.FloatTensor()

            assert (X0.size(1) == X1.size(1))
            assert (X0.size(2) == X1.size(2))

            intWidth = X0.size(2)
            intHeight = X0.size(1)
            channel = X0.size(0)
            if not channel == 3:
                continue

            if intWidth != ((intWidth >> 7) << 7):
                intWidth_pad = (
                    ((intWidth >> 7) + 1) << 7)  # more than necessary
                intPaddingLeft = int((intWidth_pad - intWidth) / 2)
                intPaddingRight = intWidth_pad - intWidth - intPaddingLeft
            else:
                intWidth_pad = intWidth
                intPaddingLeft = 32
                intPaddingRight = 32

            if intHeight != ((intHeight >> 7) << 7):
                intHeight_pad = (
                    ((intHeight >> 7) + 1) << 7)  # more than necessary
                intPaddingTop = int((intHeight_pad - intHeight) / 2)
                intPaddingBottom = intHeight_pad - intHeight - intPaddingTop
            else:
                intHeight_pad = intHeight
                intPaddingTop = 32
                intPaddingBottom = 32

            pader = torch.nn.ReplicationPad2d([
                intPaddingLeft, intPaddingRight, intPaddingTop,
                intPaddingBottom
            ])

            X0 = Variable(torch.unsqueeze(X0, 0), volatile=True)
            X1 = Variable(torch.unsqueeze(X1, 0), volatile=True)
            X0 = pader(X0)
            X1 = pader(X1)

            if use_cuda:
                X0 = X0.cuda()
                X1 = X1.cuda()
            y_s, offset, filter, occlusion = model(torch.stack((X0, X1),
                                                               dim=0))
            y_ = y_s[save_which]

            if use_cuda:
                X0 = X0.data.cpu().numpy()
                y_ = y_.data.cpu().numpy()
                offset = [offset_i.data.cpu().numpy() for offset_i in offset]
                filter = [filter_i.data.cpu().numpy() for filter_i in filter
                          ] if filter[0] is not None else None
                occlusion = [
                    occlusion_i.data.cpu().numpy() for occlusion_i in occlusion
                ] if occlusion[0] is not None else None
                X1 = X1.data.cpu().numpy()

            else:
                X0 = X0.data.numpy()
                y_ = y_.data.numpy()
                offset = [offset_i.data.numpy() for offset_i in offset]
                filter = [filter_i.data.numpy() for filter_i in filter]
                occlusion = [
                    occlusion_i.data.numpy() for occlusion_i in occlusion
                ]
                X1 = X1.data.numpy()

            X0 = np.transpose(
                255.0 *
                X0.clip(0, 1.0)[0, :, intPaddingTop:intPaddingTop + intHeight,
                                intPaddingLeft:intPaddingLeft + intWidth],
                (1, 2, 0))
            y_ = np.transpose(
                255.0 *
                y_.clip(0, 1.0)[0, :, intPaddingTop:intPaddingTop + intHeight,
                                intPaddingLeft:intPaddingLeft + intWidth],
                (1, 2, 0))
            offset = [
                np.transpose(
                    offset_i[0, :, intPaddingTop:intPaddingTop + intHeight,
                             intPaddingLeft:intPaddingLeft + intWidth],
                    (1, 2, 0)) for offset_i in offset
            ]
            filter = [
                np.transpose(
                    filter_i[0, :, intPaddingTop:intPaddingTop + intHeight,
                             intPaddingLeft:intPaddingLeft + intWidth],
                    (1, 2, 0)) for filter_i in filter
            ] if filter is not None else None
            occlusion = [
                np.transpose(
                    occlusion_i[0, :, intPaddingTop:intPaddingTop + intHeight,
                                intPaddingLeft:intPaddingLeft + intWidth],
                    (1, 2, 0)) for occlusion_i in occlusion
            ] if occlusion is not None else None
            X1 = np.transpose(
                255.0 *
                X1.clip(0, 1.0)[0, :, intPaddingTop:intPaddingTop + intHeight,
                                intPaddingLeft:intPaddingLeft + intWidth],
                (1, 2, 0))

            print("y_", np.shape(y_))
            print("offset", np.shape(offset))
            print("filter", np.shape(filter))
            print("occlusion", np.shape(occlusion))

            # plot optical flow
            np_offset = np.asarray(offset)

            save_path = motion_dir + file_i.rsplit(".", 1)[0] + "/"
            if not os.path.exists(save_path):
                os.mkdir(save_path)

            mag, angle = cv2.cartToPolar(np_offset[0, ..., 0],
                                         np_offset[0, ..., 1])
            mask = np.zeros((np_offset.shape[1], np_offset.shape[2], 3))
            # Sets image saturation to maximum
            mask[..., 1] = 255
            # Sets image hue according to the optical flow
            # direction
            mask[..., 0] = angle * 180 / np.pi / 2
            # Sets image value according to the optical flow
            # magnitude (normalized)
            mask[..., 2] = cv2.normalize(mag, None, 0, 255, cv2.NORM_MINMAX)
            mask = mask.astype('uint8')
            # Converts HSV to RGB (BGR) color representation
            rgb = cv2.cvtColor(mask, cv2.COLOR_HSV2BGR)
            plt.figure()
            plt.title("Motion-" + str(index) + "-forward")
            plt.imshow(rgb)
            plt.savefig(save_path + str(index) + "_" + "forw.png")

            mag, angle = cv2.cartToPolar(np_offset[1, ..., 0],
                                         np_offset[1, ..., 1])
            mask = np.zeros((np_offset.shape[1], np_offset.shape[2], 3))
            # Sets image saturation to maximum
            mask[..., 1] = 255
            # Sets image hue according to the optical flow
            # direction
            mask[..., 0] = angle * 180 / np.pi / 2
            # Sets image value according to the optical flow
            # magnitude (normalized)
            mask[..., 2] = cv2.normalize(mag, None, 0, 255, cv2.NORM_MINMAX)
            mask = mask.astype('uint8')
            # Converts HSV to RGB (BGR) color representation
            rgb = cv2.cvtColor(mask, cv2.COLOR_HSV2BGR)
            plt.figure()
            plt.title("Motion-" + str(index) + "-backward")
            plt.imshow(rgb)
            plt.savefig(save_path + str(index) + "_" + "back.png")

            # plot occlusion masks
            np_occlusion = np.asarray(occlusion)
            save_path = occlusion_dir + file_i.rsplit(".", 1)[0] + "/"
            if not os.path.exists(save_path):
                os.mkdir(save_path)
            plt.figure()
            plt.title("Occlusion-" + str(index) + "-forward")
            plt.imshow(np_occlusion[0, :, :, 0], cmap='gray')
            plt.savefig(save_path + str(index) + "_" + "forw.png")
            plt.figure()
            plt.title("Occlusion-" + str(index) + "-backward")
            plt.imshow(np_occlusion[1, :, :, 0], cmap='gray')
            plt.savefig(save_path + str(index) + "_" + "back.png")

            # plt.figure()
            # plt.title("Filters")
            # plt.imshow(filter.permute(1,2,0))
            # plt.savefig(kernel_dir + file_i + index +".png")
            # plt.figure()
            # plt.title("Occlusion")
            # plt.imshow(occlusion.permute(1,2,0))
            # plt.savefig(occlusion_dir + file_i + index +".png")

            Writer.write(IMAGE1)
            rec_rgb = np.round(y_).astype(numpy.uint8)
            Writer.write(rec_rgb)
            gt_rgb, sucess = Reader.read(index + 1)
            gt_yuv = rgb2yuv(gt_rgb / 255.0)
            rec_yuv = rgb2yuv(rec_rgb / 255.0)

            gt_rgb = gt_yuv[:, :, 0] * 255.0
            rec_rgb = rec_yuv[:, :, 0] * 255.0

            gt_rgb = gt_rgb.astype('uint8')
            rec_rgb = rec_rgb.astype('uint8')

            diff_rgb = 128.0 + rec_rgb - gt_rgb
            avg_interp_error_abs = np.mean(np.abs(diff_rgb - 128.0))

            interp_error.update(avg_interp_error_abs, 1)

            mse = numpy.mean((diff_rgb - 128.0)**2)
            if mse == 0:
                return 100.0
            PIXEL_MAX = 255.0
            psnr = 20 * math.log10(PIXEL_MAX / math.sqrt(mse))
            psnr_error.update(psnr, 1)

            psnr_ = compare_psnr(rec_rgb, gt_rgb)
            print(str(psnr) + '\t' + str(psnr_))

            ssim = compare_ssim(rec_rgb, gt_rgb, multichannel=False)
            ssim_error.update(ssim, 1)

            diff_rgb = diff_rgb.astype("uint8")

            print("interpolation error / PSNR : " +
                  str(round(avg_interp_error_abs, 4)) + " ,\t  psnr " +
                  str(round(psnr, 4)) + ",\t ssim " + str(round(ssim, 5)))
            fh = open(
                os.path.join(HD720p_Other_RESULT, unique_id,
                             file_i + "_psnr_Y.txt"), "a+")
            fh.write(str(psnr))
            fh.write("\n")
            fh.close()
            fh = open(
                os.path.join(HD720p_Other_RESULT, unique_id,
                             file_i + "_ssim_Y.txt"), "a+")
            fh.write(str(ssim))
            fh.write("\n")
            fh.close()
            metrics = "The average interpolation error / PSNR for all images are : " + str(
                round(interp_error.avg, 4)) + ",\t  psnr " + str(
                    round(psnr_error.avg, 4)) + ",\t  ssim " + str(
                        round(ssim_error.avg, 4))
            print(metrics)

        metrics = "The average interpolation error / PSNR for all images are : " + str(
            round(interp_error.avg, 4)) + ",\t  psnr " + str(
                round(psnr_error.avg, 4)) + ",\t  ssim " + str(
                    round(ssim_error.avg, 4))
        print(metrics)
        fh = open(
            os.path.join(HD720p_Other_RESULT, unique_id,
                         file_i + "_psnr_Y.txt"), "a+")
        fh.write("\n")
        fh.write(str(psnr_error.avg))
        fh.write("\n")
        fh.close()
        fh = open(
            os.path.join(HD720p_Other_RESULT, unique_id,
                         file_i + "_ssim_Y.txt"), "a+")
        fh.write("\n")
        fh.write(str(ssim_error.avg))
        fh.write("\n")
        fh.close()
示例#3
0
        for j in range(len(img) - 1):
            res.append(model.inference(img[j], img[j + 1]))
            res.append(img[j + 1])
        img = res
    for i in range(len(img)):
        img[i] = img[i][0][:, pad: -pad]
    return img[1: -1]
        
tot = []
for data in name_list:
    psnr_list = []
    name = data[0]
    h = data[1]
    w = data[2]
    if 'yuv' in name:
        Reader = YUV_Read(name, h, w, toRGB=True)
    else:
        Reader = cv2.VideoCapture(name)
    _, lastframe = Reader.read()
    # fourcc = cv2.VideoWriter_fourcc('m', 'p', '4', 'v')
    # video = cv2.VideoWriter(name + '.mp4', fourcc, 30, (w, h))    
    for index in range(0, 100, 8):
        gt = []
        if 'yuv' in name:
            IMAGE1, success1 = Reader.read(index)
            IMAGE2, success2 = Reader.read(index + 8)
            if not success2:
                break
            for i in range(1, 8):
                tmp, _ = Reader.read(index + i)
                gt.append(tmp)
示例#4
0
def test_HD720p(model=model,
                use_cuda=args.use_cuda,
                save_which=args.save_which,
                dtype=args.dtype):
    files = sorted(os.listdir(HD720p_Other_DATA))
    unique_id = str(random.randint(0, 100000))
    gen_dir = os.path.join(HD720p_Other_RESULT, unique_id)
    os.mkdir(gen_dir)

    for file_i in files:
        print("\n\n\n**************")
        print(file_i)
        gen_file = os.path.join(HD720p_Other_RESULT, unique_id, file_i)
        input_file = os.path.join(HD720p_Other_DATA, file_i)

        interp_error = AverageMeter()
        psnr_error = AverageMeter()
        ssim_error = AverageMeter()

        print(input_file)
        print(gen_file)
        Reader = YUV_Read(input_file, 720, 1280, toRGB=True)
        Writer = YUV_Write(gen_file, fromRGB=True)

        for index in range(0, 100, 2):  # len(files) - 2, 2):

            IMAGE1, sucess1 = Reader.read(index)
            IMAGE2, sucess2 = Reader.read(index + 2)
            if not sucess1 or not sucess2:
                break

            X0 = torch.from_numpy(
                np.transpose(IMAGE1,
                             (2, 0, 1)).astype("float32") / 255.0).type(dtype)
            X1 = torch.from_numpy(
                np.transpose(IMAGE2,
                             (2, 0, 1)).astype("float32") / 255.0).type(dtype)

            y_ = torch.FloatTensor()

            assert (X0.size(1) == X1.size(1))
            assert (X0.size(2) == X1.size(2))

            intWidth = X0.size(2)
            intHeight = X0.size(1)
            channel = X0.size(0)
            if not channel == 3:
                continue

            if intWidth != ((intWidth >> 7) << 7):
                intWidth_pad = (
                    ((intWidth >> 7) + 1) << 7)  # more than necessary
                intPaddingLeft = int((intWidth_pad - intWidth) / 2)
                intPaddingRight = intWidth_pad - intWidth - intPaddingLeft
            else:
                intWidth_pad = intWidth
                intPaddingLeft = 32
                intPaddingRight = 32

            if intHeight != ((intHeight >> 7) << 7):
                intHeight_pad = (
                    ((intHeight >> 7) + 1) << 7)  # more than necessary
                intPaddingTop = int((intHeight_pad - intHeight) / 2)
                intPaddingBottom = intHeight_pad - intHeight - intPaddingTop
            else:
                intHeight_pad = intHeight
                intPaddingTop = 32
                intPaddingBottom = 32

            pader = torch.nn.ReplicationPad2d([
                intPaddingLeft, intPaddingRight, intPaddingTop,
                intPaddingBottom
            ])

            X0 = Variable(torch.unsqueeze(X0, 0), volatile=True)
            X1 = Variable(torch.unsqueeze(X1, 0), volatile=True)
            X0 = pader(X0)
            X1 = pader(X1)

            if use_cuda:
                X0 = X0.cuda()
                X1 = X1.cuda()
            y_s, offset, filter, occlusion = model(torch.stack((X0, X1),
                                                               dim=0))
            y_ = y_s[save_which]

            if use_cuda:
                X0 = X0.data.cpu().numpy()
                y_ = y_.data.cpu().numpy()
                offset = [offset_i.data.cpu().numpy() for offset_i in offset]
                filter = [filter_i.data.cpu().numpy() for filter_i in filter
                          ] if filter[0] is not None else None
                occlusion = [
                    occlusion_i.data.cpu().numpy() for occlusion_i in occlusion
                ] if occlusion[0] is not None else None
                X1 = X1.data.cpu().numpy()
            else:
                X0 = X0.data.numpy()
                y_ = y_.data.numpy()
                offset = [offset_i.data.numpy() for offset_i in offset]
                filter = [filter_i.data.numpy() for filter_i in filter]
                occlusion = [
                    occlusion_i.data.numpy() for occlusion_i in occlusion
                ]
                X1 = X1.data.numpy()

            X0 = np.transpose(
                255.0 *
                X0.clip(0, 1.0)[0, :, intPaddingTop:intPaddingTop + intHeight,
                                intPaddingLeft:intPaddingLeft + intWidth],
                (1, 2, 0))
            y_ = np.transpose(
                255.0 *
                y_.clip(0, 1.0)[0, :, intPaddingTop:intPaddingTop + intHeight,
                                intPaddingLeft:intPaddingLeft + intWidth],
                (1, 2, 0))
            offset = [
                np.transpose(
                    offset_i[0, :, intPaddingTop:intPaddingTop + intHeight,
                             intPaddingLeft:intPaddingLeft + intWidth],
                    (1, 2, 0)) for offset_i in offset
            ]
            filter = [
                np.transpose(
                    filter_i[0, :, intPaddingTop:intPaddingTop + intHeight,
                             intPaddingLeft:intPaddingLeft + intWidth],
                    (1, 2, 0)) for filter_i in filter
            ] if filter is not None else None
            occlusion = [
                np.transpose(
                    occlusion_i[0, :, intPaddingTop:intPaddingTop + intHeight,
                                intPaddingLeft:intPaddingLeft + intWidth],
                    (1, 2, 0)) for occlusion_i in occlusion
            ] if occlusion is not None else None
            X1 = np.transpose(
                255.0 *
                X1.clip(0, 1.0)[0, :, intPaddingTop:intPaddingTop + intHeight,
                                intPaddingLeft:intPaddingLeft + intWidth],
                (1, 2, 0))

            Writer.write(IMAGE1)
            rec_rgb = np.round(y_).astype(numpy.uint8)
            Writer.write(rec_rgb)
            gt_rgb, sucess = Reader.read(index + 1)
            gt_yuv = rgb2yuv(gt_rgb / 255.0)
            rec_yuv = rgb2yuv(rec_rgb / 255.0)

            gt_rgb = gt_yuv[:, :, 0] * 255.0
            rec_rgb = rec_yuv[:, :, 0] * 255.0

            gt_rgb = gt_rgb.astype('uint8')
            rec_rgb = rec_rgb.astype('uint8')

            diff_rgb = 128.0 + rec_rgb - gt_rgb
            avg_interp_error_abs = np.mean(np.abs(diff_rgb - 128.0))

            interp_error.update(avg_interp_error_abs, 1)

            mse = numpy.mean((diff_rgb - 128.0)**2)
            if mse == 0:
                return 100.0
            PIXEL_MAX = 255.0
            psnr = 20 * math.log10(PIXEL_MAX / math.sqrt(mse))
            psnr_error.update(psnr, 1)

            psnr_ = compare_psnr(rec_rgb, gt_rgb)
            print(str(psnr) + '\t' + str(psnr_))

            ssim = compare_ssim(rec_rgb, gt_rgb, multichannel=False)
            ssim_error.update(ssim, 1)

            diff_rgb = diff_rgb.astype("uint8")

            print("interpolation error / PSNR : " +
                  str(round(avg_interp_error_abs, 4)) + " ,\t  psnr " +
                  str(round(psnr, 4)) + ",\t ssim " + str(round(ssim, 5)))
            fh = open(
                os.path.join(HD720p_Other_RESULT, unique_id,
                             file_i + "_psnr_Y.txt"), "a+")
            fh.write(str(psnr))
            fh.write("\n")
            fh.close()
            fh = open(
                os.path.join(HD720p_Other_RESULT, unique_id,
                             file_i + "_ssim_Y.txt"), "a+")
            fh.write(str(ssim))
            fh.write("\n")
            fh.close()
            metrics = "The average interpolation error / PSNR for all images are : " + str(
                round(interp_error.avg, 4)) + ",\t  psnr " + str(
                    round(psnr_error.avg, 4)) + ",\t  ssim " + str(
                        round(ssim_error.avg, 4))
            print(metrics)

        metrics = "The average interpolation error / PSNR for all images are : " + str(
            round(interp_error.avg, 4)) + ",\t  psnr " + str(
                round(psnr_error.avg, 4)) + ",\t  ssim " + str(
                    round(ssim_error.avg, 4))
        print(metrics)
        fh = open(
            os.path.join(HD720p_Other_RESULT, unique_id,
                         file_i + "_psnr_Y.txt"), "a+")
        fh.write("\n")
        fh.write(str(psnr_error.avg))
        fh.write("\n")
        fh.close()
        fh = open(
            os.path.join(HD720p_Other_RESULT, unique_id,
                         file_i + "_ssim_Y.txt"), "a+")
        fh.write("\n")
        fh.write(str(ssim_error.avg))
        fh.write("\n")
        fh.close()