"content_vgg19": piq.ContentLoss( feature_extractor='vgg19', layers=['conv1_2', 'conv2_2', 'conv3_4', 'conv4_4', 'conv5_4'], weights=[0.2, 0.2, 0.2, 0.2, 0.2], normalize_features=True), "content_vgg19_ap": piq.ContentLoss( feature_extractor='vgg19', layers=['conv1_2', 'conv2_2', 'conv3_4', 'conv4_4', 'conv5_4'], weights=[0.2, 0.2, 0.2, 0.2, 0.2], normalize_features=True, replace_pooling=True), "style_vgg16": piq.StyleLoss( feature_extractor='vgg16', layers=['conv1_2', 'conv2_2', 'conv3_3', 'conv4_3', 'conv5_3'], weights=[0.2, 0.2, 0.2, 0.2, 0.2], normalize_features=False), "style_vgg19": piq.StyleLoss( feature_extractor='vgg19', layers=['conv1_2', 'conv2_2', 'conv3_3', 'conv4_3', 'conv5_3'], weights=[0.2, 0.2, 0.2, 0.2, 0.2], normalize_features=False), "lpips": piq.LPIPS(replace_pooling=False), "lpips_ap": piq.LPIPS(replace_pooling=True), "dists": piq.DISTS(), # No reference "brisque": BRISQUEWrapper(),
def main(): # Read RGB image and it's noisy version x = torch.tensor(imread('tests/assets/i01_01_5.bmp')).permute(2, 0, 1) / 255. y = torch.tensor(imread('tests/assets/I01.BMP')).permute(2, 0, 1) / 255. if torch.cuda.is_available(): # Move to GPU to make computaions faster x = x.cuda() y = y.cuda() # To compute BRISQUE score as a measure, use lower case function from the library brisque_index: torch.Tensor = piq.brisque(x, data_range=1., reduction='none') # In order to use BRISQUE as a loss function, use corresponding PyTorch module. # Note: the back propagation is not available using torch==1.5.0. # Update the environment with latest torch and torchvision. brisque_loss: torch.Tensor = piq.BRISQUELoss(data_range=1., reduction='none')(x) print( f"BRISQUE index: {brisque_index.item():0.4f}, loss: {brisque_loss.item():0.4f}" ) # To compute Content score as a loss function, use corresponding PyTorch module # By default VGG16 model is used, but any feature extractor model is supported. # Don't forget to adjust layers names accordingly. Features from different layers can be weighted differently. # Use weights parameter. See other options in class docstring. content_loss = piq.ContentLoss(feature_extractor="vgg16", layers=("relu3_3", ), reduction='none')(x, y) print(f"ContentLoss: {content_loss.item():0.4f}") # To compute DISTS as a loss function, use corresponding PyTorch module # By default input images are normalized with ImageNet statistics before forwarding through VGG16 model. # If there is no need to normalize the data, use mean=[0.0, 0.0, 0.0] and std=[1.0, 1.0, 1.0]. dists_loss = piq.DISTS(reduction='none')(x, y) print(f"DISTS: {dists_loss.item():0.4f}") # To compute FSIM as a measure, use lower case function from the library fsim_index: torch.Tensor = piq.fsim(x, y, data_range=1., reduction='none') # In order to use FSIM as a loss function, use corresponding PyTorch module fsim_loss = piq.FSIMLoss(data_range=1., reduction='none')(x, y) print( f"FSIM index: {fsim_index.item():0.4f}, loss: {fsim_loss.item():0.4f}") # To compute GMSD as a measure, use lower case function from the library # This is port of MATLAB version from the authors of original paper. # In any case it should me minimized. Usually values of GMSD lie in [0, 0.35] interval. gmsd_index: torch.Tensor = piq.gmsd(x, y, data_range=1., reduction='none') # In order to use GMSD as a loss function, use corresponding PyTorch module: gmsd_loss: torch.Tensor = piq.GMSDLoss(data_range=1., reduction='none')(x, y) print( f"GMSD index: {gmsd_index.item():0.4f}, loss: {gmsd_loss.item():0.4f}") # To compute HaarPSI as a measure, use lower case function from the library # This is port of MATLAB version from the authors of original paper. haarpsi_index: torch.Tensor = piq.haarpsi(x, y, data_range=1., reduction='none') # In order to use HaarPSI as a loss function, use corresponding PyTorch module haarpsi_loss: torch.Tensor = piq.HaarPSILoss(data_range=1., reduction='none')(x, y) print( f"HaarPSI index: {haarpsi_index.item():0.4f}, loss: {haarpsi_loss.item():0.4f}" ) # To compute LPIPS as a loss function, use corresponding PyTorch module lpips_loss: torch.Tensor = piq.LPIPS(reduction='none')(x, y) print(f"LPIPS: {lpips_loss.item():0.4f}") # To compute MDSI as a measure, use lower case function from the library mdsi_index: torch.Tensor = piq.mdsi(x, y, data_range=1., reduction='none') # In order to use MDSI as a loss function, use corresponding PyTorch module mdsi_loss: torch.Tensor = piq.MDSILoss(data_range=1., reduction='none')(x, y) print( f"MDSI index: {mdsi_index.item():0.4f}, loss: {mdsi_loss.item():0.4f}") # To compute MS-SSIM index as a measure, use lower case function from the library: ms_ssim_index: torch.Tensor = piq.multi_scale_ssim(x, y, data_range=1.) # In order to use MS-SSIM as a loss function, use corresponding PyTorch module: ms_ssim_loss = piq.MultiScaleSSIMLoss(data_range=1., reduction='none')(x, y) print( f"MS-SSIM index: {ms_ssim_index.item():0.4f}, loss: {ms_ssim_loss.item():0.4f}" ) # To compute Multi-Scale GMSD as a measure, use lower case function from the library # It can be used both as a measure and as a loss function. In any case it should me minimized. # By defualt scale weights are initialized with values from the paper. # You can change them by passing a list of 4 variables to scale_weights argument during initialization # Note that input tensors should contain images with height and width equal 2 ** number_of_scales + 1 at least. ms_gmsd_index: torch.Tensor = piq.multi_scale_gmsd(x, y, data_range=1., chromatic=True, reduction='none') # In order to use Multi-Scale GMSD as a loss function, use corresponding PyTorch module ms_gmsd_loss: torch.Tensor = piq.MultiScaleGMSDLoss(chromatic=True, data_range=1., reduction='none')(x, y) print( f"MS-GMSDc index: {ms_gmsd_index.item():0.4f}, loss: {ms_gmsd_loss.item():0.4f}" ) # To compute PSNR as a measure, use lower case function from the library. psnr_index = piq.psnr(x, y, data_range=1., reduction='none') print(f"PSNR index: {psnr_index.item():0.4f}") # To compute PieAPP as a loss function, use corresponding PyTorch module: pieapp_loss: torch.Tensor = piq.PieAPP(reduction='none', stride=32)(x, y) print(f"PieAPP loss: {pieapp_loss.item():0.4f}") # To compute SSIM index as a measure, use lower case function from the library: ssim_index = piq.ssim(x, y, data_range=1.) # In order to use SSIM as a loss function, use corresponding PyTorch module: ssim_loss: torch.Tensor = piq.SSIMLoss(data_range=1.)(x, y) print( f"SSIM index: {ssim_index.item():0.4f}, loss: {ssim_loss.item():0.4f}") # To compute Style score as a loss function, use corresponding PyTorch module: # By default VGG16 model is used, but any feature extractor model is supported. # Don't forget to adjust layers names accordingly. Features from different layers can be weighted differently. # Use weights parameter. See other options in class docstring. style_loss = piq.StyleLoss(feature_extractor="vgg16", layers=("relu3_3", ))(x, y) print(f"Style: {style_loss.item():0.4f}") # To compute TV as a measure, use lower case function from the library: tv_index: torch.Tensor = piq.total_variation(x) # In order to use TV as a loss function, use corresponding PyTorch module: tv_loss: torch.Tensor = piq.TVLoss(reduction='none')(x) print(f"TV index: {tv_index.item():0.4f}, loss: {tv_loss.item():0.4f}") # To compute VIF as a measure, use lower case function from the library: vif_index: torch.Tensor = piq.vif_p(x, y, data_range=1.) # In order to use VIF as a loss function, use corresponding PyTorch class: vif_loss: torch.Tensor = piq.VIFLoss(sigma_n_sq=2.0, data_range=1.)(x, y) print(f"VIFp index: {vif_index.item():0.4f}, loss: {vif_loss.item():0.4f}") # To compute VSI score as a measure, use lower case function from the library: vsi_index: torch.Tensor = piq.vsi(x, y, data_range=1.) # In order to use VSI as a loss function, use corresponding PyTorch module: vsi_loss: torch.Tensor = piq.VSILoss(data_range=1.)(x, y) print(f"VSI index: {vsi_index.item():0.4f}, loss: {vsi_loss.item():0.4f}")
"VSI": functools.partial(piq.vsi, reduction='none'), "HaarPSI": functools.partial(piq.haarpsi, reduction='none'), "MDSI": functools.partial(piq.mdsi, reduction='none'), "LPIPS-vgg": piq.LPIPS(replace_pooling=False, reduction='none'), "DISTS": piq.DISTS(reduction='none'), "PieAPP": piq.PieAPP(reduction='none'), "Content": piq.ContentLoss(reduction='none'), "Style": piq.StyleLoss(reduction='none'), # No Reference "BRISQUE": functools.partial(piq.brisque, reduction='none') } class TID2013(torch.utils.data.Dataset): """ Args: root: Root directory path. Returns: x: image with some kind of distortion in [0, 1] range y: image without distortion in [0, 1] range