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@ -4,7 +4,7 @@ import torch.nn.functional as F
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import numpy as np
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from common.utils import round_func
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from common import lut
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from common.layers import PercievePattern, DenseConvUpscaleBlock
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from common import layers
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from pathlib import Path
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from . import sdylut
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@ -12,12 +12,12 @@ class SDYNetx1(nn.Module):
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def __init__(self, hidden_dim = 64, layers_count = 4, scale = 4):
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super(SDYNetx1, self).__init__()
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self.scale = scale
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self._extract_pattern_S = PercievePattern(receptive_field_idxes=[[0,0],[0,1],[1,0],[1,1]], center=[0,0], window_size=3)
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self._extract_pattern_D = PercievePattern(receptive_field_idxes=[[0,0],[2,0],[0,2],[2,2]], center=[0,0], window_size=3)
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self._extract_pattern_Y = PercievePattern(receptive_field_idxes=[[0,0],[1,1],[1,2],[2,1]], center=[0,0], window_size=3)
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self.stageS = DenseConvUpscaleBlock(hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=scale)
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self.stageD = DenseConvUpscaleBlock(hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=scale)
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self.stageY = DenseConvUpscaleBlock(hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=scale)
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s_pattern = [[0,0],[0,1],[1,0],[1,1]]
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d_pattern = [[0,0],[2,0],[0,2],[2,2]]
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y_pattern = [[0,0],[1,1],[1,2],[2,1]]
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self.stage1_S = layers.UpscaleBlock(receptive_field_idxes=s_pattern, center=[0,0], window_size=2, hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=1)
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self.stage1_D = layers.UpscaleBlock(receptive_field_idxes=d_pattern, center=[0,0], window_size=3, hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=1)
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self.stage1_Y = layers.UpscaleBlock(receptive_field_idxes=y_pattern, center=[0,0], window_size=3, hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=1)
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def forward(self, x):
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b,c,h,w = x.shape
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@ -25,99 +25,65 @@ class SDYNetx1(nn.Module):
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output = torch.zeros([b*c, 1, h*self.scale, w*self.scale], dtype=x.dtype, device=x.device)
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for rotations_count in range(4):
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rotated = torch.rot90(x, k=rotations_count, dims=[-2, -1])
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rb,rc,rh,rw = rotated.shape
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s = self.stageS(self._extract_pattern_S(rotated))
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s = s.view(rb*rc, 1, rh, rw, self.scale, self.scale).permute(0,1,2,4,3,5).reshape(rb*rc, 1, rh*self.scale, rw*self.scale)
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s = torch.rot90(s, k=-rotations_count, dims=[-2, -1])
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output += s
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d = self.stageD(self._extract_pattern_D(rotated))
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d = d.view(rb*rc, 1, rh, rw, self.scale, self.scale).permute(0,1,2,4,3,5).reshape(rb*rc, 1, rh*self.scale, rw*self.scale)
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d = torch.rot90(d, k=-rotations_count, dims=[-2, -1])
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output += d
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y = self.stageY(self._extract_pattern_Y(rotated))
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y = y.view(rb*rc, 1, rh, rw, self.scale, self.scale).permute(0,1,2,4,3,5).reshape(rb*rc, 1, rh*self.scale, rw*self.scale)
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y = torch.rot90(y, k=-rotations_count, dims=[-2, -1])
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output += y
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rb,rc,rh,rw = rotated.shape
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output += torch.rot90(self.stage1_S(rotated), k=-rotations_count, dims=[-2, -1])
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output += torch.rot90(self.stage1_D(rotated), k=-rotations_count, dims=[-2, -1])
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output += torch.rot90(self.stage1_Y(rotated), k=-rotations_count, dims=[-2, -1])
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output /= 4*3
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output = output.view(b, c, h*self.scale, w*self.scale)
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return output
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x = output
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x = round_func(x)
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x = x.view(b, c, h*self.scale, w*self.scale)
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return x
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def get_lut_model(self, quantization_interval=16, batch_size=2**10):
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stageS = lut.transfer_2x2_input_SxS_output(self.stageS, quantization_interval=quantization_interval, batch_size=batch_size)
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stageD = lut.transfer_2x2_input_SxS_output(self.stageD, quantization_interval=quantization_interval, batch_size=batch_size)
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stageY = lut.transfer_2x2_input_SxS_output(self.stageY, quantization_interval=quantization_interval, batch_size=batch_size)
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stageS = lut.transfer_2x2_input_SxS_output(self.stage1_S, quantization_interval=quantization_interval, batch_size=batch_size)
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stageD = lut.transfer_2x2_input_SxS_output(self.stage1_D, quantization_interval=quantization_interval, batch_size=batch_size)
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stageY = lut.transfer_2x2_input_SxS_output(self.stage1_Y, quantization_interval=quantization_interval, batch_size=batch_size)
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lut_model = sdylut.SDYLutx1.init_from_lut(stageS, stageD, stageY)
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return lut_model
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class SDYNetx2(nn.Module):
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def __init__(self, hidden_dim = 64, layers_count = 4, scale = 4):
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super(SDYNetx2, self).__init__()
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self.scale = scale
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self._extract_pattern_S = PercievePattern(receptive_field_idxes=[[0,0],[0,1],[1,0],[1,1]], center=[0,0], window_size=3)
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self._extract_pattern_D = PercievePattern(receptive_field_idxes=[[0,0],[2,0],[0,2],[2,2]], center=[0,0], window_size=3)
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self._extract_pattern_Y = PercievePattern(receptive_field_idxes=[[0,0],[1,1],[1,2],[2,1]], center=[0,0], window_size=3)
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self.stage1_S = DenseConvUpscaleBlock(hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=1)
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self.stage1_D = DenseConvUpscaleBlock(hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=1)
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self.stage1_Y = DenseConvUpscaleBlock(hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=1)
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self.stage2_S = DenseConvUpscaleBlock(hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=scale)
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self.stage2_D = DenseConvUpscaleBlock(hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=scale)
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self.stage2_Y = DenseConvUpscaleBlock(hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=scale)
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s_pattern = [[0,0],[0,1],[1,0],[1,1]]
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d_pattern = [[0,0],[2,0],[0,2],[2,2]]
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y_pattern = [[0,0],[1,1],[1,2],[2,1]]
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self.stage1_S = layers.UpscaleBlock(receptive_field_idxes=s_pattern, center=[0,0], window_size=2, hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=1)
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self.stage1_D = layers.UpscaleBlock(receptive_field_idxes=d_pattern, center=[0,0], window_size=3, hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=1)
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self.stage1_Y = layers.UpscaleBlock(receptive_field_idxes=y_pattern, center=[0,0], window_size=3, hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=1)
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self.stage2_S = layers.UpscaleBlock(receptive_field_idxes=s_pattern, center=[0,0], window_size=2, hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=scale)
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self.stage2_D = layers.UpscaleBlock(receptive_field_idxes=d_pattern, center=[0,0], window_size=3, hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=scale)
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self.stage2_Y = layers.UpscaleBlock(receptive_field_idxes=y_pattern, center=[0,0], window_size=3, hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=scale)
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def forward(self, x):
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b,c,h,w = x.shape
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x = x.view(b*c, 1, h, w)
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output_1 = torch.zeros([b*c, 1, h, w], dtype=x.dtype, device=x.device)
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for rotations_count in range(4):
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output_1 += self.stage1_S(x)
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output_1 += self.stage1_D(x)
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output_1 += self.stage1_Y(x)
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for rotations_count in range(1,4):
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rotated = torch.rot90(x, k=rotations_count, dims=[-2, -1])
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rb,rc,rh,rw = rotated.shape
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s = self.stage1_S(self._extract_pattern_S(rotated))
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s = s.view(rb*rc, 1, rh, rw, 1, 1).permute(0,1,2,4,3,5).reshape(rb*rc, 1, rh, rw)
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s = torch.rot90(s, k=-rotations_count, dims=[-2, -1])
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output_1 += s
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d = self.stage1_D(self._extract_pattern_D(rotated))
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d = d.view(rb*rc, 1, rh, rw, 1, 1).permute(0,1,2,4,3,5).reshape(rb*rc, 1, rh, rw)
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d = torch.rot90(d, k=-rotations_count, dims=[-2, -1])
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output_1 += d
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y = self.stage1_Y(self._extract_pattern_Y(rotated))
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y = y.view(rb*rc, 1, rh, rw, 1, 1).permute(0,1,2,4,3,5).reshape(rb*rc, 1, rh, rw)
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y = torch.rot90(y, k=-rotations_count, dims=[-2, -1])
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output_1 += y
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output_1 += torch.rot90(self.stage1_S(rotated), k=-rotations_count, dims=[-2, -1])
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output_1 += torch.rot90(self.stage1_D(rotated), k=-rotations_count, dims=[-2, -1])
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output_1 += torch.rot90(self.stage1_Y(rotated), k=-rotations_count, dims=[-2, -1])
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output_1 /= 4*3
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output_1 = output_1.view(b*c, 1, h, w)
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x = output_1
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x = round_func(output_1)
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output_2 = torch.zeros([b*c, 1, h*self.scale, w*self.scale], dtype=x.dtype, device=x.device)
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for rotations_count in range(4):
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output_2 += self.stage2_S(x)
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output_2 += self.stage2_D(x)
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output_2 += self.stage2_Y(x)
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for rotations_count in range(1,4):
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rotated = torch.rot90(x, k=rotations_count, dims=[-2, -1])
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rb,rc,rh,rw = rotated.shape
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s = self.stage2_S(self._extract_pattern_S(rotated))
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s = s.view(rb*rc, 1, rh, rw, self.scale, self.scale).permute(0,1,2,4,3,5).reshape(rb*rc, 1, rh*self.scale, rw*self.scale)
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s = torch.rot90(s, k=-rotations_count, dims=[-2, -1])
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output_2 += s
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d = self.stage2_D(self._extract_pattern_D(rotated))
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d = d.view(rb*rc, 1, rh, rw, self.scale, self.scale).permute(0,1,2,4,3,5).reshape(rb*rc, 1, rh*self.scale, rw*self.scale)
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d = torch.rot90(d, k=-rotations_count, dims=[-2, -1])
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output_2 += d
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y = self.stage2_Y(self._extract_pattern_Y(rotated))
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y = y.view(rb*rc, 1, rh, rw, self.scale, self.scale).permute(0,1,2,4,3,5).reshape(rb*rc, 1, rh*self.scale, rw*self.scale)
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y = torch.rot90(y, k=-rotations_count, dims=[-2, -1])
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output_2 += y
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output_2 += torch.rot90(self.stage2_S(rotated), k=-rotations_count, dims=[-2, -1])
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output_2 += torch.rot90(self.stage2_D(rotated), k=-rotations_count, dims=[-2, -1])
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output_2 += torch.rot90(self.stage2_Y(rotated), k=-rotations_count, dims=[-2, -1])
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output_2 /= 4*3
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output_2 = output_2.view(b, c, h*self.scale, w*self.scale)
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return output_2
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x = round_func(output_2)
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x = x.view(b, c, h*self.scale, w*self.scale)
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return x
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def get_lut_model(self, quantization_interval=16, batch_size=2**10):
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stage1_S = lut.transfer_2x2_input_SxS_output(self.stage1_S, quantization_interval=quantization_interval, batch_size=batch_size)
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@ -127,51 +93,4 @@ class SDYNetx2(nn.Module):
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stage2_D = lut.transfer_2x2_input_SxS_output(self.stage2_D, quantization_interval=quantization_interval, batch_size=batch_size)
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stage2_Y = lut.transfer_2x2_input_SxS_output(self.stage2_Y, quantization_interval=quantization_interval, batch_size=batch_size)
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lut_model = sdylut.SDYLutx2.init_from_lut(stage1_S, stage1_D, stage1_Y, stage2_S, stage2_D, stage2_Y)
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return lut_model
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class SDYNetCenteredx1(nn.Module):
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def __init__(self, hidden_dim = 64, layers_count = 4, scale = 4):
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super(SDYNetCenteredx1, self).__init__()
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self.scale = scale
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self._extract_pattern_S = PercievePattern(receptive_field_idxes=[[0,0],[0,1],[1,0],[1,1]], center=[1,1], window_size=3)
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self._extract_pattern_D = PercievePattern(receptive_field_idxes=[[0,0],[2,0],[0,2],[2,2]], center=[1,1], window_size=3)
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self._extract_pattern_Y = PercievePattern(receptive_field_idxes=[[0,0],[1,1],[1,2],[2,1]], center=[1,1], window_size=3)
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self.stageS = DenseConvUpscaleBlock(hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=scale)
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self.stageD = DenseConvUpscaleBlock(hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=scale)
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self.stageY = DenseConvUpscaleBlock(hidden_dim=hidden_dim, layers_count=layers_count, upscale_factor=scale)
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def forward(self, x):
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b,c,h,w = x.shape
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x = x.view(b*c, 1, h, w)
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output = torch.zeros([b*c, 1, h*self.scale, w*self.scale], dtype=x.dtype, device=x.device)
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for rotations_count in range(4):
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rotated = torch.rot90(x, k=rotations_count, dims=[-2, -1])
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rb,rc,rh,rw = rotated.shape
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s = self.stageS(self._extract_pattern_S(rotated))
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s = s.view(rb*rc, 1, rh, rw, self.scale, self.scale).permute(0,1,2,4,3,5).reshape(rb*rc, 1, rh*self.scale, rw*self.scale)
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s = torch.rot90(s, k=-rotations_count, dims=[-2, -1])
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output += s
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d = self.stageD(self._extract_pattern_D(rotated))
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d = d.view(rb*rc, 1, rh, rw, self.scale, self.scale).permute(0,1,2,4,3,5).reshape(rb*rc, 1, rh*self.scale, rw*self.scale)
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d = torch.rot90(d, k=-rotations_count, dims=[-2, -1])
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output += d
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y = self.stageY(self._extract_pattern_Y(rotated))
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y = y.view(rb*rc, 1, rh, rw, self.scale, self.scale).permute(0,1,2,4,3,5).reshape(rb*rc, 1, rh*self.scale, rw*self.scale)
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y = torch.rot90(y, k=-rotations_count, dims=[-2, -1])
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output += y
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output /= 4*3
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output = output.view(b, c, h*self.scale, w*self.scale)
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return output
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def get_lut_model(self, quantization_interval=16, batch_size=2**10):
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stageS = lut.transfer_2x2_input_SxS_output(self.stageS, quantization_interval=quantization_interval, batch_size=batch_size)
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stageD = lut.transfer_2x2_input_SxS_output(self.stageD, quantization_interval=quantization_interval, batch_size=batch_size)
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stageY = lut.transfer_2x2_input_SxS_output(self.stageY, quantization_interval=quantization_interval, batch_size=batch_size)
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lut_model = sdylut.SDYLutCenteredx1.init_from_lut(stageS, stageD, stageY)
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return lut_model
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