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import torch
from torch import nn as nn
from torch.nn import functional as F

from basicsr.archs.vgg_arch import VGGFeatureExtractor
from basicsr.utils.registry import LOSS_REGISTRY
from .loss_util import weighted_loss

_reduction_modes = ['none', 'mean', 'sum']


@weighted_loss
def l1_loss(pred, target):
    return F.l1_loss(pred, target, reduction='none')


@weighted_loss
def mse_loss(pred, target):
    return F.mse_loss(pred, target, reduction='none')


@weighted_loss
def charbonnier_loss(pred, target, eps=1e-12):
    return torch.sqrt((pred - target)**2 + eps)


@LOSS_REGISTRY.register()
class L1Loss(nn.Module):
    """L1 (mean absolute error, MAE) loss.

    Args:
        loss_weight (float): Loss weight for L1 loss. Default: 1.0.
        reduction (str): Specifies the reduction to apply to the output.
            Supported choices are 'none' | 'mean' | 'sum'. Default: 'mean'.
    """

    def __init__(self, loss_weight=1.0, reduction='mean'):
        super(L1Loss, self).__init__()
        if reduction not in ['none', 'mean', 'sum']:
            raise ValueError(f'Unsupported reduction mode: {reduction}. Supported ones are: {_reduction_modes}')

        self.loss_weight = loss_weight
        self.reduction = reduction

    def forward(self, pred, target, weight=None, **kwargs):
        """
        Args:
            pred (Tensor): of shape (N, C, H, W). Predicted tensor.
            target (Tensor): of shape (N, C, H, W). Ground truth tensor.
            weight (Tensor, optional): of shape (N, C, H, W). Element-wise weights. Default: None.
        """
        return self.loss_weight * l1_loss(pred, target, weight, reduction=self.reduction)


@LOSS_REGISTRY.register()
class MSELoss(nn.Module):
    """MSE (L2) loss.

    Args:
        loss_weight (float): Loss weight for MSE loss. Default: 1.0.
        reduction (str): Specifies the reduction to apply to the output.
            Supported choices are 'none' | 'mean' | 'sum'. Default: 'mean'.
    """

    def __init__(self, loss_weight=1.0, reduction='mean'):
        super(MSELoss, self).__init__()
        if reduction not in ['none', 'mean', 'sum']:
            raise ValueError(f'Unsupported reduction mode: {reduction}. Supported ones are: {_reduction_modes}')

        self.loss_weight = loss_weight
        self.reduction = reduction

    def forward(self, pred, target, weight=None, **kwargs):
        """
        Args:
            pred (Tensor): of shape (N, C, H, W). Predicted tensor.
            target (Tensor): of shape (N, C, H, W). Ground truth tensor.
            weight (Tensor, optional): of shape (N, C, H, W). Element-wise weights. Default: None.
        """
        return self.loss_weight * mse_loss(pred, target, weight, reduction=self.reduction)


@LOSS_REGISTRY.register()
class CharbonnierLoss(nn.Module):
    """Charbonnier loss (one variant of Robust L1Loss, a differentiable
    variant of L1Loss).

    Described in "Deep Laplacian Pyramid Networks for Fast and Accurate
        Super-Resolution".

    Args:
        loss_weight (float): Loss weight for L1 loss. Default: 1.0.
        reduction (str): Specifies the reduction to apply to the output.
            Supported choices are 'none' | 'mean' | 'sum'. Default: 'mean'.
        eps (float): A value used to control the curvature near zero. Default: 1e-12.
    """

    def __init__(self, loss_weight=1.0, reduction='mean', eps=1e-12):
        super(CharbonnierLoss, self).__init__()
        if reduction not in ['none', 'mean', 'sum']:
            raise ValueError(f'Unsupported reduction mode: {reduction}. Supported ones are: {_reduction_modes}')

        self.loss_weight = loss_weight
        self.reduction = reduction
        self.eps = eps

    def forward(self, pred, target, weight=None, **kwargs):
        """
        Args:
            pred (Tensor): of shape (N, C, H, W). Predicted tensor.
            target (Tensor): of shape (N, C, H, W). Ground truth tensor.
            weight (Tensor, optional): of shape (N, C, H, W). Element-wise weights. Default: None.
        """
        return self.loss_weight * charbonnier_loss(pred, target, weight, eps=self.eps, reduction=self.reduction)


@LOSS_REGISTRY.register()
class WeightedTVLoss(L1Loss):
    """Weighted TV loss.

    Args:
        loss_weight (float): Loss weight. Default: 1.0.
    """

    def __init__(self, loss_weight=1.0, reduction='mean'):
        if reduction not in ['mean', 'sum']:
            raise ValueError(f'Unsupported reduction mode: {reduction}. Supported ones are: mean | sum')
        super(WeightedTVLoss, self).__init__(loss_weight=loss_weight, reduction=reduction)

    def forward(self, pred, weight=None):
        if weight is None:
            y_weight = None
            x_weight = None
        else:
            y_weight = weight[:, :, :-1, :]
            x_weight = weight[:, :, :, :-1]

        y_diff = super().forward(pred[:, :, :-1, :], pred[:, :, 1:, :], weight=y_weight)
        x_diff = super().forward(pred[:, :, :, :-1], pred[:, :, :, 1:], weight=x_weight)

        loss = x_diff + y_diff

        return loss


@LOSS_REGISTRY.register()
class PerceptualLoss(nn.Module):
    """Perceptual loss with commonly used style loss.

    Args:
        layer_weights (dict): The weight for each layer of vgg feature.
            Here is an example: {'conv5_4': 1.}, which means the conv5_4
            feature layer (before relu5_4) will be extracted with weight
            1.0 in calculating losses.
        vgg_type (str): The type of vgg network used as feature extractor.
            Default: 'vgg19'.
        use_input_norm (bool):  If True, normalize the input image in vgg.
            Default: True.
        range_norm (bool): If True, norm images with range [-1, 1] to [0, 1].
            Default: False.
        perceptual_weight (float): If `perceptual_weight > 0`, the perceptual
            loss will be calculated and the loss will multiplied by the
            weight. Default: 1.0.
        style_weight (float): If `style_weight > 0`, the style loss will be
            calculated and the loss will multiplied by the weight.
            Default: 0.
        criterion (str): Criterion used for perceptual loss. Default: 'l1'.
    """

    def __init__(self,
                 layer_weights,
                 vgg_type='vgg19',
                 use_input_norm=True,
                 range_norm=False,
                 perceptual_weight=1.0,
                 style_weight=0.,
                 criterion='l1'):
        super(PerceptualLoss, self).__init__()
        self.perceptual_weight = perceptual_weight
        self.style_weight = style_weight
        self.layer_weights = layer_weights
        self.vgg = VGGFeatureExtractor(
            layer_name_list=list(layer_weights.keys()),
            vgg_type=vgg_type,
            use_input_norm=use_input_norm,
            range_norm=range_norm)

        self.criterion_type = criterion
        if self.criterion_type == 'l1':
            self.criterion = torch.nn.L1Loss()
        elif self.criterion_type == 'l2':
            self.criterion = torch.nn.L2loss()
        elif self.criterion_type == 'fro':
            self.criterion = None
        else:
            raise NotImplementedError(f'{criterion} criterion has not been supported.')

    def forward(self, x, gt):
        """Forward function.

        Args:
            x (Tensor): Input tensor with shape (n, c, h, w).
            gt (Tensor): Ground-truth tensor with shape (n, c, h, w).

        Returns:
            Tensor: Forward results.
        """
        # extract vgg features
        x_features = self.vgg(x)
        gt_features = self.vgg(gt.detach())

        # calculate perceptual loss
        if self.perceptual_weight > 0:
            percep_loss = 0
            for k in x_features.keys():
                if self.criterion_type == 'fro':
                    percep_loss += torch.norm(x_features[k] - gt_features[k], p='fro') * self.layer_weights[k]
                else:
                    percep_loss += self.criterion(x_features[k], gt_features[k]) * self.layer_weights[k]
            percep_loss *= self.perceptual_weight
        else:
            percep_loss = None

        # calculate style loss
        if self.style_weight > 0:
            style_loss = 0
            for k in x_features.keys():
                if self.criterion_type == 'fro':
                    style_loss += torch.norm(
                        self._gram_mat(x_features[k]) - self._gram_mat(gt_features[k]), p='fro') * self.layer_weights[k]
                else:
                    style_loss += self.criterion(self._gram_mat(x_features[k]), self._gram_mat(
                        gt_features[k])) * self.layer_weights[k]
            style_loss *= self.style_weight
        else:
            style_loss = None

        return percep_loss, style_loss

    def _gram_mat(self, x):
        """Calculate Gram matrix.

        Args:
            x (torch.Tensor): Tensor with shape of (n, c, h, w).

        Returns:
            torch.Tensor: Gram matrix.
        """
        n, c, h, w = x.size()
        features = x.view(n, c, w * h)
        features_t = features.transpose(1, 2)
        gram = features.bmm(features_t) / (c * h * w)
        return gram



@LOSS_REGISTRY.register()
class KLLoss(nn.Module):
    def __init__(self, loss_weight=1.0, reduction='batchmean'):
        super(KLLoss, self).__init__()

        self.loss_weight = loss_weight
        self.reduction = reduction
        self.loss = nn.KLDivLoss(reduction=reduction)

    def forward(self, pred, target, weight=None, **kwargs):
        return self.loss_weight * self.loss(pred, target)

@LOSS_REGISTRY.register()
class AsymmetricLossOptimized(nn.Module):
    ''' Notice - optimized version, minimizes memory allocation and gpu uploading,
    favors inplace operations'''

    def __init__(self, loss_weight=1.0, gamma_neg=4, gamma_pos=1, clip=0.05, eps=1e-8, disable_torch_grad_focal_loss=False):
        super(AsymmetricLossOptimized, self).__init__()

        self.gamma_neg = gamma_neg
        self.gamma_pos = gamma_pos
        self.clip = clip
        self.disable_torch_grad_focal_loss = disable_torch_grad_focal_loss
        self.eps = eps

        # prevent memory allocation and gpu uploading every iteration, and encourages inplace operations
        self.targets = self.anti_targets = self.xs_pos = self.xs_neg = self.asymmetric_w = self.loss = None

        self.loss_weight = loss_weight

    def forward(self, x, y):
        """"
        Parameters
        ----------
        x: input logits
        y: targets (multi-label binarized vector)
        """

        self.targets = y
        self.anti_targets = 1 - y

        # Calculating Probabilities
        self.xs_pos = torch.sigmoid(x)
        self.xs_neg = 1.0 - self.xs_pos

        # Asymmetric Clipping
        if self.clip is not None and self.clip > 0:
            self.xs_neg.add_(self.clip).clamp_(max=1)

        # Basic CE calculation
        self.loss = self.targets * torch.log(self.xs_pos.clamp(min=self.eps))
        self.loss.add_(self.anti_targets * torch.log(self.xs_neg.clamp(min=self.eps)))

        # Asymmetric Focusing
        if self.gamma_neg > 0 or self.gamma_pos > 0:
            if self.disable_torch_grad_focal_loss:
                torch.set_grad_enabled(False)
            self.xs_pos = self.xs_pos * self.targets
            self.xs_neg = self.xs_neg * self.anti_targets
            self.asymmetric_w = torch.pow(1 - self.xs_pos - self.xs_neg,
                                          self.gamma_pos * self.targets + self.gamma_neg * self.anti_targets)
            if self.disable_torch_grad_focal_loss:
                torch.set_grad_enabled(True)
            self.loss *= self.asymmetric_w

        return -self.loss_weight*self.loss.sum()