# Copyright (c) 2019, Adobe Inc. All rights reserved. # # This work is licensed under the Creative Commons Attribution-NonCommercial-ShareAlike # 4.0 International Public License. To view a copy of this license, visit # https://creativecommons.org/licenses/by-nc-sa/4.0/legalcode. # code borrowed from: https://github.com/adobe/antialiased-cnns/blob/master/antialiased_cnns/blurpool.py import torch import torch.nn.parallel import numpy as np import torch.nn as nn import torch.nn.functional as F class BlurPool(nn.Module): def __init__(self, channels, pad_type='reflect', filt_size=4, stride=2, pad_off=0): super(BlurPool, self).__init__() self.filt_size = filt_size self.pad_off = pad_off self.pad_sizes = [int(1.*(filt_size-1)/2), int(np.ceil(1.*(filt_size-1)/2)), int(1.*(filt_size-1)/2), int(np.ceil(1.*(filt_size-1)/2))] self.pad_sizes = [pad_size+pad_off for pad_size in self.pad_sizes] self.stride = stride self.off = int((self.stride-1)/2.) self.channels = channels if(self.filt_size==1): a = np.array([1.,]) elif(self.filt_size==2): a = np.array([1., 1.]) elif(self.filt_size==3): a = np.array([1., 2., 1.]) elif(self.filt_size==4): a = np.array([1., 3., 3., 1.]) elif(self.filt_size==5): a = np.array([1., 4., 6., 4., 1.]) elif(self.filt_size==6): a = np.array([1., 5., 10., 10., 5., 1.]) elif(self.filt_size==7): a = np.array([1., 6., 15., 20., 15., 6., 1.]) filt = torch.Tensor(a[:,None]*a[None,:]) filt = filt/torch.sum(filt) self.register_buffer('filt', filt[None,None,:,:].repeat((self.channels,1,1,1))) self.pad = get_pad_layer(pad_type)(self.pad_sizes) def forward(self, inp): if(self.filt_size==1): if(self.pad_off==0): return inp[:,:,::self.stride,::self.stride] else: return self.pad(inp)[:,:,::self.stride,::self.stride] else: return F.conv2d(self.pad(inp), self.filt, stride=self.stride, groups=inp.shape[1]) def get_pad_layer(pad_type): if(pad_type in ['refl','reflect']): PadLayer = nn.ReflectionPad2d elif(pad_type in ['repl','replicate']): PadLayer = nn.ReplicationPad2d elif(pad_type=='zero'): PadLayer = nn.ZeroPad2d else: print('Pad type [%s] not recognized'%pad_type) return PadLayer class BlurPool1D(nn.Module): def __init__(self, channels, pad_type='reflect', filt_size=3, stride=2, pad_off=0): super(BlurPool1D, self).__init__() self.filt_size = filt_size self.pad_off = pad_off self.pad_sizes = [int(1. * (filt_size - 1) / 2), int(np.ceil(1. * (filt_size - 1) / 2))] self.pad_sizes = [pad_size + pad_off for pad_size in self.pad_sizes] self.stride = stride self.off = int((self.stride - 1) / 2.) self.channels = channels # print('Filter size [%i]' % filt_size) if(self.filt_size == 1): a = np.array([1., ]) elif(self.filt_size == 2): a = np.array([1., 1.]) elif(self.filt_size == 3): a = np.array([1., 2., 1.]) elif(self.filt_size == 4): a = np.array([1., 3., 3., 1.]) elif(self.filt_size == 5): a = np.array([1., 4., 6., 4., 1.]) elif(self.filt_size == 6): a = np.array([1., 5., 10., 10., 5., 1.]) elif(self.filt_size == 7): a = np.array([1., 6., 15., 20., 15., 6., 1.]) filt = torch.Tensor(a) filt = filt / torch.sum(filt) self.register_buffer('filt', filt[None, None, :].repeat((self.channels, 1, 1))) self.pad = get_pad_layer_1d(pad_type)(self.pad_sizes) def forward(self, inp): if(self.filt_size == 1): if(self.pad_off == 0): return inp[:, :, ::self.stride] else: return self.pad(inp)[:, :, ::self.stride] else: return F.conv1d(self.pad(inp), self.filt, stride=self.stride, groups=inp.shape[1]) def get_pad_layer_1d(pad_type): if(pad_type in ['refl', 'reflect']): PadLayer = nn.ReflectionPad1d elif(pad_type in ['repl', 'replicate']): PadLayer = nn.ReplicationPad1d elif(pad_type == 'zero'): PadLayer = nn.ZeroPad1d else: print('Pad type [%s] not recognized' % pad_type) return PadLayer