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import collections.abc |
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import math |
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import torch |
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import torchvision |
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import warnings |
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from distutils.version import LooseVersion |
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from itertools import repeat |
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from torch import nn as nn |
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from torch.nn import functional as F |
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from torch.nn import init as init |
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from torch.nn.modules.batchnorm import _BatchNorm |
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from basicsr.ops.dcn import ModulatedDeformConvPack, modulated_deform_conv |
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from basicsr.utils import get_root_logger |
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@torch.no_grad() |
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def default_init_weights(module_list, scale=1, bias_fill=0, **kwargs): |
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"""Initialize network weights. |
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Args: |
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module_list (list[nn.Module] | nn.Module): Modules to be initialized. |
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scale (float): Scale initialized weights, especially for residual |
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blocks. Default: 1. |
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bias_fill (float): The value to fill bias. Default: 0 |
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kwargs (dict): Other arguments for initialization function. |
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""" |
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if not isinstance(module_list, list): |
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module_list = [module_list] |
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for module in module_list: |
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for m in module.modules(): |
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if isinstance(m, nn.Conv2d): |
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init.kaiming_normal_(m.weight, **kwargs) |
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m.weight.data *= scale |
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if m.bias is not None: |
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m.bias.data.fill_(bias_fill) |
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elif isinstance(m, nn.Linear): |
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init.kaiming_normal_(m.weight, **kwargs) |
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m.weight.data *= scale |
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if m.bias is not None: |
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m.bias.data.fill_(bias_fill) |
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elif isinstance(m, _BatchNorm): |
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init.constant_(m.weight, 1) |
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if m.bias is not None: |
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m.bias.data.fill_(bias_fill) |
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def make_layer(basic_block, num_basic_block, **kwarg): |
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"""Make layers by stacking the same blocks. |
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Args: |
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basic_block (nn.module): nn.module class for basic block. |
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num_basic_block (int): number of blocks. |
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Returns: |
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nn.Sequential: Stacked blocks in nn.Sequential. |
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""" |
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layers = [] |
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for _ in range(num_basic_block): |
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layers.append(basic_block(**kwarg)) |
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return nn.Sequential(*layers) |
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class ResidualBlockNoBN(nn.Module): |
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"""Residual block without BN. |
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Args: |
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num_feat (int): Channel number of intermediate features. |
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Default: 64. |
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res_scale (float): Residual scale. Default: 1. |
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pytorch_init (bool): If set to True, use pytorch default init, |
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otherwise, use default_init_weights. Default: False. |
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""" |
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def __init__(self, num_feat=64, res_scale=1, pytorch_init=False): |
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super(ResidualBlockNoBN, self).__init__() |
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self.res_scale = res_scale |
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self.conv1 = nn.Conv2d(num_feat, num_feat, 3, 1, 1, bias=True) |
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self.conv2 = nn.Conv2d(num_feat, num_feat, 3, 1, 1, bias=True) |
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self.relu = nn.ReLU(inplace=True) |
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if not pytorch_init: |
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default_init_weights([self.conv1, self.conv2], 0.1) |
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def forward(self, x): |
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identity = x |
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out = self.conv2(self.relu(self.conv1(x))) |
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return identity + out * self.res_scale |
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class Upsample(nn.Sequential): |
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"""Upsample module. |
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Args: |
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scale (int): Scale factor. Supported scales: 2^n and 3. |
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num_feat (int): Channel number of intermediate features. |
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""" |
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def __init__(self, scale, num_feat): |
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m = [] |
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if (scale & (scale - 1)) == 0: |
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for _ in range(int(math.log(scale, 2))): |
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m.append(nn.Conv2d(num_feat, 4 * num_feat, 3, 1, 1)) |
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m.append(nn.PixelShuffle(2)) |
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elif scale == 3: |
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m.append(nn.Conv2d(num_feat, 9 * num_feat, 3, 1, 1)) |
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m.append(nn.PixelShuffle(3)) |
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else: |
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raise ValueError(f'scale {scale} is not supported. Supported scales: 2^n and 3.') |
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super(Upsample, self).__init__(*m) |
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def flow_warp(x, flow, interp_mode='bilinear', padding_mode='zeros', align_corners=True): |
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"""Warp an image or feature map with optical flow. |
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Args: |
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x (Tensor): Tensor with size (n, c, h, w). |
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flow (Tensor): Tensor with size (n, h, w, 2), normal value. |
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interp_mode (str): 'nearest' or 'bilinear'. Default: 'bilinear'. |
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padding_mode (str): 'zeros' or 'border' or 'reflection'. |
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Default: 'zeros'. |
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align_corners (bool): Before pytorch 1.3, the default value is |
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align_corners=True. After pytorch 1.3, the default value is |
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align_corners=False. Here, we use the True as default. |
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Returns: |
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Tensor: Warped image or feature map. |
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""" |
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assert x.size()[-2:] == flow.size()[1:3] |
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_, _, h, w = x.size() |
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grid_y, grid_x = torch.meshgrid(torch.arange(0, h).type_as(x), torch.arange(0, w).type_as(x)) |
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grid = torch.stack((grid_x, grid_y), 2).float() |
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grid.requires_grad = False |
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vgrid = grid + flow |
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vgrid_x = 2.0 * vgrid[:, :, :, 0] / max(w - 1, 1) - 1.0 |
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vgrid_y = 2.0 * vgrid[:, :, :, 1] / max(h - 1, 1) - 1.0 |
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vgrid_scaled = torch.stack((vgrid_x, vgrid_y), dim=3) |
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output = F.grid_sample(x, vgrid_scaled, mode=interp_mode, padding_mode=padding_mode, align_corners=align_corners) |
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return output |
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def resize_flow(flow, size_type, sizes, interp_mode='bilinear', align_corners=False): |
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"""Resize a flow according to ratio or shape. |
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Args: |
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flow (Tensor): Precomputed flow. shape [N, 2, H, W]. |
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size_type (str): 'ratio' or 'shape'. |
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sizes (list[int | float]): the ratio for resizing or the final output |
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shape. |
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1) The order of ratio should be [ratio_h, ratio_w]. For |
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downsampling, the ratio should be smaller than 1.0 (i.e., ratio |
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< 1.0). For upsampling, the ratio should be larger than 1.0 (i.e., |
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ratio > 1.0). |
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2) The order of output_size should be [out_h, out_w]. |
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interp_mode (str): The mode of interpolation for resizing. |
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Default: 'bilinear'. |
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align_corners (bool): Whether align corners. Default: False. |
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Returns: |
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Tensor: Resized flow. |
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""" |
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_, _, flow_h, flow_w = flow.size() |
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if size_type == 'ratio': |
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output_h, output_w = int(flow_h * sizes[0]), int(flow_w * sizes[1]) |
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elif size_type == 'shape': |
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output_h, output_w = sizes[0], sizes[1] |
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else: |
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raise ValueError(f'Size type should be ratio or shape, but got type {size_type}.') |
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input_flow = flow.clone() |
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ratio_h = output_h / flow_h |
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ratio_w = output_w / flow_w |
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input_flow[:, 0, :, :] *= ratio_w |
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input_flow[:, 1, :, :] *= ratio_h |
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resized_flow = F.interpolate( |
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input=input_flow, size=(output_h, output_w), mode=interp_mode, align_corners=align_corners) |
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return resized_flow |
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def pixel_unshuffle(x, scale): |
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""" Pixel unshuffle. |
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Args: |
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x (Tensor): Input feature with shape (b, c, hh, hw). |
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scale (int): Downsample ratio. |
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Returns: |
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Tensor: the pixel unshuffled feature. |
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""" |
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b, c, hh, hw = x.size() |
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out_channel = c * (scale**2) |
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assert hh % scale == 0 and hw % scale == 0 |
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h = hh // scale |
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w = hw // scale |
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x_view = x.view(b, c, h, scale, w, scale) |
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return x_view.permute(0, 1, 3, 5, 2, 4).reshape(b, out_channel, h, w) |
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class DCNv2Pack(ModulatedDeformConvPack): |
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"""Modulated deformable conv for deformable alignment. |
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Different from the official DCNv2Pack, which generates offsets and masks |
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from the preceding features, this DCNv2Pack takes another different |
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features to generate offsets and masks. |
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``Paper: Delving Deep into Deformable Alignment in Video Super-Resolution`` |
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""" |
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def forward(self, x, feat): |
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out = self.conv_offset(feat) |
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o1, o2, mask = torch.chunk(out, 3, dim=1) |
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offset = torch.cat((o1, o2), dim=1) |
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mask = torch.sigmoid(mask) |
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offset_absmean = torch.mean(torch.abs(offset)) |
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if offset_absmean > 50: |
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logger = get_root_logger() |
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logger.warning(f'Offset abs mean is {offset_absmean}, larger than 50.') |
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if LooseVersion(torchvision.__version__) >= LooseVersion('0.9.0'): |
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return torchvision.ops.deform_conv2d(x, offset, self.weight, self.bias, self.stride, self.padding, |
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self.dilation, mask) |
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else: |
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return modulated_deform_conv(x, offset, mask, self.weight, self.bias, self.stride, self.padding, |
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self.dilation, self.groups, self.deformable_groups) |
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def _no_grad_trunc_normal_(tensor, mean, std, a, b): |
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def norm_cdf(x): |
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return (1. + math.erf(x / math.sqrt(2.))) / 2. |
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if (mean < a - 2 * std) or (mean > b + 2 * std): |
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warnings.warn( |
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'mean is more than 2 std from [a, b] in nn.init.trunc_normal_. ' |
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'The distribution of values may be incorrect.', |
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stacklevel=2) |
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with torch.no_grad(): |
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low = norm_cdf((a - mean) / std) |
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up = norm_cdf((b - mean) / std) |
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tensor.uniform_(2 * low - 1, 2 * up - 1) |
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tensor.erfinv_() |
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tensor.mul_(std * math.sqrt(2.)) |
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tensor.add_(mean) |
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tensor.clamp_(min=a, max=b) |
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return tensor |
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def trunc_normal_(tensor, mean=0., std=1., a=-2., b=2.): |
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r"""Fills the input Tensor with values drawn from a truncated |
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normal distribution. |
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From: https://github.com/rwightman/pytorch-image-models/blob/master/timm/models/layers/weight_init.py |
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The values are effectively drawn from the |
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normal distribution :math:`\mathcal{N}(\text{mean}, \text{std}^2)` |
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with values outside :math:`[a, b]` redrawn until they are within |
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the bounds. The method used for generating the random values works |
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best when :math:`a \leq \text{mean} \leq b`. |
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Args: |
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tensor: an n-dimensional `torch.Tensor` |
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mean: the mean of the normal distribution |
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std: the standard deviation of the normal distribution |
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a: the minimum cutoff value |
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b: the maximum cutoff value |
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Examples: |
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>>> w = torch.empty(3, 5) |
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>>> nn.init.trunc_normal_(w) |
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""" |
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return _no_grad_trunc_normal_(tensor, mean, std, a, b) |
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def _ntuple(n): |
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def parse(x): |
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if isinstance(x, collections.abc.Iterable): |
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return x |
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return tuple(repeat(x, n)) |
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return parse |
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to_1tuple = _ntuple(1) |
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to_2tuple = _ntuple(2) |
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to_3tuple = _ntuple(3) |
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to_4tuple = _ntuple(4) |
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to_ntuple = _ntuple |
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