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| """Custom PyTorch ops for efficient resampling of 2D images.""" |
|
|
| import os |
| import warnings |
| import numpy as np |
| import torch |
| import traceback |
|
|
| from .. import custom_ops |
| from .. import misc |
| from . import conv2d_gradfix |
|
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| |
|
|
| _inited = False |
| _plugin = None |
|
|
| def _init(): |
| global _inited, _plugin |
| if not _inited: |
| sources = ['upfirdn2d.cpp', 'upfirdn2d.cu'] |
| sources = [os.path.join(os.path.dirname(__file__), s) for s in sources] |
| try: |
| _plugin = custom_ops.get_plugin('upfirdn2d_plugin', sources=sources, extra_cuda_cflags=['--use_fast_math']) |
| except: |
| warnings.warn('Failed to build CUDA kernels for upfirdn2d. Falling back to slow reference implementation. Details:\n\n' + traceback.format_exc()) |
| return _plugin is not None |
|
|
| def _parse_scaling(scaling): |
| if isinstance(scaling, int): |
| scaling = [scaling, scaling] |
| assert isinstance(scaling, (list, tuple)) |
| assert all(isinstance(x, int) for x in scaling) |
| sx, sy = scaling |
| assert sx >= 1 and sy >= 1 |
| return sx, sy |
|
|
| def _parse_padding(padding): |
| if isinstance(padding, int): |
| padding = [padding, padding] |
| assert isinstance(padding, (list, tuple)) |
| assert all(isinstance(x, int) for x in padding) |
| if len(padding) == 2: |
| padx, pady = padding |
| padding = [padx, padx, pady, pady] |
| padx0, padx1, pady0, pady1 = padding |
| return padx0, padx1, pady0, pady1 |
|
|
| def _get_filter_size(f): |
| if f is None: |
| return 1, 1 |
| assert isinstance(f, torch.Tensor) and f.ndim in [1, 2] |
| fw = f.shape[-1] |
| fh = f.shape[0] |
| with misc.suppress_tracer_warnings(): |
| fw = int(fw) |
| fh = int(fh) |
| misc.assert_shape(f, [fh, fw][:f.ndim]) |
| assert fw >= 1 and fh >= 1 |
| return fw, fh |
|
|
| |
|
|
| def setup_filter(f, device=torch.device('cpu'), normalize=True, flip_filter=False, gain=1, separable=None): |
| r"""Convenience function to setup 2D FIR filter for `upfirdn2d()`. |
| |
| Args: |
| f: Torch tensor, numpy array, or python list of the shape |
| `[filter_height, filter_width]` (non-separable), |
| `[filter_taps]` (separable), |
| `[]` (impulse), or |
| `None` (identity). |
| device: Result device (default: cpu). |
| normalize: Normalize the filter so that it retains the magnitude |
| for constant input signal (DC)? (default: True). |
| flip_filter: Flip the filter? (default: False). |
| gain: Overall scaling factor for signal magnitude (default: 1). |
| separable: Return a separable filter? (default: select automatically). |
| |
| Returns: |
| Float32 tensor of the shape |
| `[filter_height, filter_width]` (non-separable) or |
| `[filter_taps]` (separable). |
| """ |
| |
| if f is None: |
| f = 1 |
| f = torch.as_tensor(f, dtype=torch.float32) |
| assert f.ndim in [0, 1, 2] |
| assert f.numel() > 0 |
| if f.ndim == 0: |
| f = f[np.newaxis] |
|
|
| |
| if separable is None: |
| separable = (f.ndim == 1 and f.numel() >= 8) |
| if f.ndim == 1 and not separable: |
| f = f.ger(f) |
| assert f.ndim == (1 if separable else 2) |
|
|
| |
| if normalize: |
| f /= f.sum() |
| if flip_filter: |
| f = f.flip(list(range(f.ndim))) |
| f = f * (gain ** (f.ndim / 2)) |
| f = f.to(device=device) |
| return f |
|
|
| |
|
|
| def upfirdn2d(x, f, up=1, down=1, padding=0, flip_filter=False, gain=1, impl='cuda'): |
| r"""Pad, upsample, filter, and downsample a batch of 2D images. |
| |
| Performs the following sequence of operations for each channel: |
| |
| 1. Upsample the image by inserting N-1 zeros after each pixel (`up`). |
| |
| 2. Pad the image with the specified number of zeros on each side (`padding`). |
| Negative padding corresponds to cropping the image. |
| |
| 3. Convolve the image with the specified 2D FIR filter (`f`), shrinking it |
| so that the footprint of all output pixels lies within the input image. |
| |
| 4. Downsample the image by keeping every Nth pixel (`down`). |
| |
| This sequence of operations bears close resemblance to scipy.signal.upfirdn(). |
| The fused op is considerably more efficient than performing the same calculation |
| using standard PyTorch ops. It supports gradients of arbitrary order. |
| |
| Args: |
| x: Float32/float64/float16 input tensor of the shape |
| `[batch_size, num_channels, in_height, in_width]`. |
| f: Float32 FIR filter of the shape |
| `[filter_height, filter_width]` (non-separable), |
| `[filter_taps]` (separable), or |
| `None` (identity). |
| up: Integer upsampling factor. Can be a single int or a list/tuple |
| `[x, y]` (default: 1). |
| down: Integer downsampling factor. Can be a single int or a list/tuple |
| `[x, y]` (default: 1). |
| padding: Padding with respect to the upsampled image. Can be a single number |
| or a list/tuple `[x, y]` or `[x_before, x_after, y_before, y_after]` |
| (default: 0). |
| flip_filter: False = convolution, True = correlation (default: False). |
| gain: Overall scaling factor for signal magnitude (default: 1). |
| impl: Implementation to use. Can be `'ref'` or `'cuda'` (default: `'cuda'`). |
| |
| Returns: |
| Tensor of the shape `[batch_size, num_channels, out_height, out_width]`. |
| """ |
| assert isinstance(x, torch.Tensor) |
| assert impl in ['ref', 'cuda'] |
| if impl == 'cuda' and x.device.type == 'cuda' and _init(): |
| return _upfirdn2d_cuda(up=up, down=down, padding=padding, flip_filter=flip_filter, gain=gain).apply(x, f) |
| return _upfirdn2d_ref(x, f, up=up, down=down, padding=padding, flip_filter=flip_filter, gain=gain) |
|
|
| |
|
|
| @misc.profiled_function |
| def _upfirdn2d_ref(x, f, up=1, down=1, padding=0, flip_filter=False, gain=1): |
| """Slow reference implementation of `upfirdn2d()` using standard PyTorch ops. |
| """ |
| |
| assert isinstance(x, torch.Tensor) and x.ndim == 4 |
| if f is None: |
| f = torch.ones([1, 1], dtype=torch.float32, device=x.device) |
| assert isinstance(f, torch.Tensor) and f.ndim in [1, 2] |
| assert f.dtype == torch.float32 and not f.requires_grad |
| batch_size, num_channels, in_height, in_width = x.shape |
| upx, upy = _parse_scaling(up) |
| downx, downy = _parse_scaling(down) |
| padx0, padx1, pady0, pady1 = _parse_padding(padding) |
|
|
| |
| x = x.reshape([batch_size, num_channels, in_height, 1, in_width, 1]) |
| x = torch.nn.functional.pad(x, [0, upx - 1, 0, 0, 0, upy - 1]) |
| x = x.reshape([batch_size, num_channels, in_height * upy, in_width * upx]) |
|
|
| |
| x = torch.nn.functional.pad(x, [max(padx0, 0), max(padx1, 0), max(pady0, 0), max(pady1, 0)]) |
| x = x[:, :, max(-pady0, 0) : x.shape[2] - max(-pady1, 0), max(-padx0, 0) : x.shape[3] - max(-padx1, 0)] |
|
|
| |
| f = f * (gain ** (f.ndim / 2)) |
| f = f.to(x.dtype) |
| if not flip_filter: |
| f = f.flip(list(range(f.ndim))) |
|
|
| |
| f = f[np.newaxis, np.newaxis].repeat([num_channels, 1] + [1] * f.ndim) |
| if f.ndim == 4: |
| x = conv2d_gradfix.conv2d(input=x, weight=f, groups=num_channels) |
| else: |
| x = conv2d_gradfix.conv2d(input=x, weight=f.unsqueeze(2), groups=num_channels) |
| x = conv2d_gradfix.conv2d(input=x, weight=f.unsqueeze(3), groups=num_channels) |
|
|
| |
| x = x[:, :, ::downy, ::downx] |
| return x |
|
|
| |
|
|
| _upfirdn2d_cuda_cache = dict() |
|
|
| def _upfirdn2d_cuda(up=1, down=1, padding=0, flip_filter=False, gain=1): |
| """Fast CUDA implementation of `upfirdn2d()` using custom ops. |
| """ |
| |
| upx, upy = _parse_scaling(up) |
| downx, downy = _parse_scaling(down) |
| padx0, padx1, pady0, pady1 = _parse_padding(padding) |
|
|
| |
| key = (upx, upy, downx, downy, padx0, padx1, pady0, pady1, flip_filter, gain) |
| if key in _upfirdn2d_cuda_cache: |
| return _upfirdn2d_cuda_cache[key] |
|
|
| |
| class Upfirdn2dCuda(torch.autograd.Function): |
| @staticmethod |
| def forward(ctx, x, f): |
| assert isinstance(x, torch.Tensor) and x.ndim == 4 |
| if f is None: |
| f = torch.ones([1, 1], dtype=torch.float32, device=x.device) |
| assert isinstance(f, torch.Tensor) and f.ndim in [1, 2] |
| y = x |
| if f.ndim == 2: |
| y = _plugin.upfirdn2d(y, f, upx, upy, downx, downy, padx0, padx1, pady0, pady1, flip_filter, gain) |
| else: |
| y = _plugin.upfirdn2d(y, f.unsqueeze(0), upx, 1, downx, 1, padx0, padx1, 0, 0, flip_filter, np.sqrt(gain)) |
| y = _plugin.upfirdn2d(y, f.unsqueeze(1), 1, upy, 1, downy, 0, 0, pady0, pady1, flip_filter, np.sqrt(gain)) |
| ctx.save_for_backward(f) |
| ctx.x_shape = x.shape |
| return y |
|
|
| @staticmethod |
| def backward(ctx, dy): |
| f, = ctx.saved_tensors |
| _, _, ih, iw = ctx.x_shape |
| _, _, oh, ow = dy.shape |
| fw, fh = _get_filter_size(f) |
| p = [ |
| fw - padx0 - 1, |
| iw * upx - ow * downx + padx0 - upx + 1, |
| fh - pady0 - 1, |
| ih * upy - oh * downy + pady0 - upy + 1, |
| ] |
| dx = None |
| df = None |
|
|
| if ctx.needs_input_grad[0]: |
| dx = _upfirdn2d_cuda(up=down, down=up, padding=p, flip_filter=(not flip_filter), gain=gain).apply(dy, f) |
|
|
| assert not ctx.needs_input_grad[1] |
| return dx, df |
|
|
| |
| _upfirdn2d_cuda_cache[key] = Upfirdn2dCuda |
| return Upfirdn2dCuda |
|
|
| |
|
|
| def filter2d(x, f, padding=0, flip_filter=False, gain=1, impl='cuda'): |
| r"""Filter a batch of 2D images using the given 2D FIR filter. |
| |
| By default, the result is padded so that its shape matches the input. |
| User-specified padding is applied on top of that, with negative values |
| indicating cropping. Pixels outside the image are assumed to be zero. |
| |
| Args: |
| x: Float32/float64/float16 input tensor of the shape |
| `[batch_size, num_channels, in_height, in_width]`. |
| f: Float32 FIR filter of the shape |
| `[filter_height, filter_width]` (non-separable), |
| `[filter_taps]` (separable), or |
| `None` (identity). |
| padding: Padding with respect to the output. Can be a single number or a |
| list/tuple `[x, y]` or `[x_before, x_after, y_before, y_after]` |
| (default: 0). |
| flip_filter: False = convolution, True = correlation (default: False). |
| gain: Overall scaling factor for signal magnitude (default: 1). |
| impl: Implementation to use. Can be `'ref'` or `'cuda'` (default: `'cuda'`). |
| |
| Returns: |
| Tensor of the shape `[batch_size, num_channels, out_height, out_width]`. |
| """ |
| padx0, padx1, pady0, pady1 = _parse_padding(padding) |
| fw, fh = _get_filter_size(f) |
| p = [ |
| padx0 + fw // 2, |
| padx1 + (fw - 1) // 2, |
| pady0 + fh // 2, |
| pady1 + (fh - 1) // 2, |
| ] |
| return upfirdn2d(x, f, padding=p, flip_filter=flip_filter, gain=gain, impl=impl) |
|
|
| |
|
|
| def upsample2d(x, f, up=2, padding=0, flip_filter=False, gain=1, impl='cuda'): |
| r"""Upsample a batch of 2D images using the given 2D FIR filter. |
| |
| By default, the result is padded so that its shape is a multiple of the input. |
| User-specified padding is applied on top of that, with negative values |
| indicating cropping. Pixels outside the image are assumed to be zero. |
| |
| Args: |
| x: Float32/float64/float16 input tensor of the shape |
| `[batch_size, num_channels, in_height, in_width]`. |
| f: Float32 FIR filter of the shape |
| `[filter_height, filter_width]` (non-separable), |
| `[filter_taps]` (separable), or |
| `None` (identity). |
| up: Integer upsampling factor. Can be a single int or a list/tuple |
| `[x, y]` (default: 1). |
| padding: Padding with respect to the output. Can be a single number or a |
| list/tuple `[x, y]` or `[x_before, x_after, y_before, y_after]` |
| (default: 0). |
| flip_filter: False = convolution, True = correlation (default: False). |
| gain: Overall scaling factor for signal magnitude (default: 1). |
| impl: Implementation to use. Can be `'ref'` or `'cuda'` (default: `'cuda'`). |
| |
| Returns: |
| Tensor of the shape `[batch_size, num_channels, out_height, out_width]`. |
| """ |
| upx, upy = _parse_scaling(up) |
| padx0, padx1, pady0, pady1 = _parse_padding(padding) |
| fw, fh = _get_filter_size(f) |
| p = [ |
| padx0 + (fw + upx - 1) // 2, |
| padx1 + (fw - upx) // 2, |
| pady0 + (fh + upy - 1) // 2, |
| pady1 + (fh - upy) // 2, |
| ] |
| return upfirdn2d(x, f, up=up, padding=p, flip_filter=flip_filter, gain=gain*upx*upy, impl=impl) |
|
|
| |
|
|
| def downsample2d(x, f, down=2, padding=0, flip_filter=False, gain=1, impl='cuda'): |
| r"""Downsample a batch of 2D images using the given 2D FIR filter. |
| |
| By default, the result is padded so that its shape is a fraction of the input. |
| User-specified padding is applied on top of that, with negative values |
| indicating cropping. Pixels outside the image are assumed to be zero. |
| |
| Args: |
| x: Float32/float64/float16 input tensor of the shape |
| `[batch_size, num_channels, in_height, in_width]`. |
| f: Float32 FIR filter of the shape |
| `[filter_height, filter_width]` (non-separable), |
| `[filter_taps]` (separable), or |
| `None` (identity). |
| down: Integer downsampling factor. Can be a single int or a list/tuple |
| `[x, y]` (default: 1). |
| padding: Padding with respect to the input. Can be a single number or a |
| list/tuple `[x, y]` or `[x_before, x_after, y_before, y_after]` |
| (default: 0). |
| flip_filter: False = convolution, True = correlation (default: False). |
| gain: Overall scaling factor for signal magnitude (default: 1). |
| impl: Implementation to use. Can be `'ref'` or `'cuda'` (default: `'cuda'`). |
| |
| Returns: |
| Tensor of the shape `[batch_size, num_channels, out_height, out_width]`. |
| """ |
| downx, downy = _parse_scaling(down) |
| padx0, padx1, pady0, pady1 = _parse_padding(padding) |
| fw, fh = _get_filter_size(f) |
| p = [ |
| padx0 + (fw - downx + 1) // 2, |
| padx1 + (fw - downx) // 2, |
| pady0 + (fh - downy + 1) // 2, |
| pady1 + (fh - downy) // 2, |
| ] |
| return upfirdn2d(x, f, down=down, padding=p, flip_filter=flip_filter, gain=gain, impl=impl) |
|
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