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from collections import OrderedDict

import torch
import torch.nn as nn
from torch.nn import DataParallel
from torch.nn.parallel import DistributedDataParallel
from torchvision.models import vgg as vgg


NAMES = {
    'vgg11': [
        'conv1_1', 'relu1_1', 'pool1', 'conv2_1', 'relu2_1', 'pool2',
        'conv3_1', 'relu3_1', 'conv3_2', 'relu3_2', 'pool3', 'conv4_1',
        'relu4_1', 'conv4_2', 'relu4_2', 'pool4', 'conv5_1', 'relu5_1',
        'conv5_2', 'relu5_2', 'pool5'
    ],
    'vgg13': [
        'conv1_1', 'relu1_1', 'conv1_2', 'relu1_2', 'pool1', 'conv2_1',
        'relu2_1', 'conv2_2', 'relu2_2', 'pool2', 'conv3_1', 'relu3_1',
        'conv3_2', 'relu3_2', 'pool3', 'conv4_1', 'relu4_1', 'conv4_2',
        'relu4_2', 'pool4', 'conv5_1', 'relu5_1', 'conv5_2', 'relu5_2', 'pool5'
    ],
    'vgg16': [
        'conv1_1', 'relu1_1', 'conv1_2', 'relu1_2', 'pool1', 'conv2_1',
        'relu2_1', 'conv2_2', 'relu2_2', 'pool2', 'conv3_1', 'relu3_1',
        'conv3_2', 'relu3_2', 'conv3_3', 'relu3_3', 'pool3', 'conv4_1',
        'relu4_1', 'conv4_2', 'relu4_2', 'conv4_3', 'relu4_3', 'pool4',
        'conv5_1', 'relu5_1', 'conv5_2', 'relu5_2', 'conv5_3', 'relu5_3',
        'pool5'
    ],
    'vgg19': [
        'conv1_1', 'relu1_1', 'conv1_2', 'relu1_2', 'pool1', 'conv2_1',
        'relu2_1', 'conv2_2', 'relu2_2', 'pool2', 'conv3_1', 'relu3_1',
        'conv3_2', 'relu3_2', 'conv3_3', 'relu3_3', 'conv3_4', 'relu3_4',
        'pool3', 'conv4_1', 'relu4_1', 'conv4_2', 'relu4_2', 'conv4_3',
        'relu4_3', 'conv4_4', 'relu4_4', 'pool4', 'conv5_1', 'relu5_1',
        'conv5_2', 'relu5_2', 'conv5_3', 'relu5_3', 'conv5_4', 'relu5_4',
        'pool5'
    ]
}


# MODEL_PATH = {
#     'vgg19': 'losses/pretrained/vgg19-dcbb9e9d.pth'
# }


def load_model(model, model_path, strict=True, cpu=False):
    if isinstance(model, DataParallel) or isinstance(model, DistributedDataParallel):
        model = model.module
    if cpu:
        loaded_model = torch.load(model_path, map_location='cpu')
    else:
        loaded_model = torch.load(model_path)
    model.load_state_dict(loaded_model, strict=strict)


def insert_bn(names):
    """Insert bn layer after each conv.

    Args:
        names (list): The list of layer names.

    Returns:
        list: The list of layer names with bn layers.
    """
    names_bn = []
    for name in names:
        names_bn.append(name)
        if 'conv' in name:
            position = name.replace('conv', '')
            names_bn.append('bn' + position)
    return names_bn


class VGGFeatureExtractor(nn.Module):
    """VGG network for feature extraction.

    In this implementation, we allow users to choose whether use normalization
    in the input feature and the type of vgg network. Note that the pretrained
    path must fit the vgg type.

    Args:
        layer_name_list (list[str]): Forward function returns the corresponding
            features according to the layer_name_list.
            Example: {'relu1_1', 'relu2_1', 'relu3_1'}.
        vgg_type (str): Set the type of vgg network. Default: 'vgg19'.
        use_input_norm (bool): If True, normalize the input image. Importantly,
            the input feature must in the range [0, 1]. Default: True.
        requires_grad (bool): If true, the parameters of VGG network will be
            optimized. Default: False.
        remove_pooling (bool): If true, the max pooling operations in VGG net
            will be removed. Default: False.
        pooling_stride (int): The stride of max pooling operation. Default: 2.
    """

    def __init__(self,
                 layer_name_list,
                 vgg_type='vgg19',
                 use_input_norm=True,
                 requires_grad=False,
                 remove_pooling=False,
                 pooling_stride=2):
        super(VGGFeatureExtractor, self).__init__()

        self.layer_name_list = layer_name_list
        self.use_input_norm = use_input_norm

        self.names = NAMES[vgg_type.replace('_bn', '')]
        if 'bn' in vgg_type:
            self.names = insert_bn(self.names)

        # only borrow layers that will be used to avoid unused params
        max_idx = 0
        for v in layer_name_list:
            idx = self.names.index(v)
            if idx > max_idx:
                max_idx = idx

        features = getattr(vgg, vgg_type)(pretrained=True).features[:max_idx + 1]
        # vgg_model = getattr(vgg, vgg_type)(pretrained=False)
        # load_model(vgg_model, MODEL_PATH[vgg_type], strict=True)
        # features = vgg_model.features[:max_idx + 1]

        modified_net = OrderedDict()
        for k, v in zip(self.names, features):
            if 'pool' in k:
                # if remove_pooling is true, pooling operation will be removed
                if remove_pooling:
                    continue
                else:
                    # in some cases, we may want to change the default stride
                    modified_net[k] = nn.MaxPool2d(
                        kernel_size=2, stride=pooling_stride)
            else:
                modified_net[k] = v

        self.vgg_net = nn.Sequential(modified_net)

        if not requires_grad:
            self.vgg_net.eval()
            for param in self.parameters():
                param.requires_grad = False
        else:
            self.vgg_net.train()
            for param in self.parameters():
                param.requires_grad = True

        if self.use_input_norm:
            # the mean is for image with range [0, 1]
            self.register_buffer(
                'mean',
                torch.Tensor([0.485, 0.456, 0.406]).view(1, 3, 1, 1))
            # the std is for image with range [0, 1]
            self.register_buffer(
                'std',
                torch.Tensor([0.229, 0.224, 0.225]).view(1, 3, 1, 1))

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

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

        Returns:
            Tensor: Forward results.
        """

        if self.use_input_norm:
            x = (x - self.mean) / self.std

        output = {}
        for key, layer in self.vgg_net._modules.items():
            x = layer(x)
            if key in self.layer_name_list:
                output[key] = x.clone()

        return output