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  1. app.py +225 -0
  2. requirements.txt +7 -0
app.py ADDED
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+ import torch
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+ import torch.nn as nn
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+ import numpy as np
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+ import torch.nn.functional as F
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+
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+ import gradio as gr
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+
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+ from einops import rearrange, repeat
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+
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+ import torchvision.transforms.functional as ttf
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+ from timm.models.convmixer import ConvMixer
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+ import functorch
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+
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+ def img_to_patches(im, patch_h, patch_w):
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+ "B, C, H, W -> B, C, D, h_patch, w_patch"
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+ bs, c, h, w = im.shape
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+ im = im.unfold(-1, patch_h, patch_w).unfold(2, patch_h, patch_w)
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+ im = im.permute(0, 1, 2, 3, 5, 4)
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+ im = im.contiguous().view(bs, c, -1, patch_h, patch_w)
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+ return im
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+
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+ def patches_to_img(patches, num_patch_h, num_patch_w):
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+ "B, C, D, h_patch, w_patch -> B, C, H, W"
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+ bs, c, d, h, w = patches.shape
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+ patches = patches.view(bs, c, num_patch_h, num_patch_w, h, w)
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+ # fold patches
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+ patches = torch.cat([patches[..., k, :, :] for k in range(num_patch_w)], dim=-1)
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+ x = torch.cat([patches[..., k, :, :] for k in range(num_patch_h)], dim=-2)
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+ return x
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+
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+ def vmapped_rotate(x, angle, in_dims=1):
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+ "B, C, D, H, W -> B, C, D, H, W"
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+ rotate_ = functorch.vmap(ttf.rotate, in_dims=in_dims, out_dims=in_dims)
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+ return rotate_(x, angle=angle)
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+
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+ class CollageOperator2d(nn.Module):
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+
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+ def __init__(self, res, rh, rw, dh=None, dw=None, use_augmentations=False):
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+ """Collage Operator for two-dimensional data. Given a fractal code, it outputs the corresponding fixed-point.
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+
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+ Args:
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+ res (int): Spatial resolutions of input (and output) data.
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+ rh (int): Height of range (target) square patches.
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+ rw (int): Width of range (target) square patches.
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+ dh (int, optional): Height of range domain (source) patches. Defaults to `res`.
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+ dw (int, optional): Width of range domain (source) patches. Defaults to `res`.
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+ use_augmentations (bool, optional): Use augmentations of domain square patches at each decoding iteration. Defaults to `False`.
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+ """
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+ super().__init__()
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+ self.dh, self.dw = dh, dw
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+ if self.dh is None: self.dh = res
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+ if self.dw is None: self.dw = res
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+
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+ # 5 refers to the 5 copies of domain patches generated with the current choice of augmentations:
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+ # 3 rotations (90, 180, 270), horizontal flips and vertical flips.
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+ self.n_aug_transforms = 9 if use_augmentations else 0
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+
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+ # precompute useful quantities related to the partitioning scheme into patches, given
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+ # the desired `dh`, `dw`, `rh`, `rw`.
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+ partition_info = self.collage_partition_info(res, self.dh, self.dw, rh, rw)
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+ self.n_dh, self.n_dw, self.n_rh, self.n_rw, self.h_factors, self.w_factors, self.n_domains, self.n_ranges = partition_info
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+
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+ # At each step of the collage, all (source) domain patches are pooled down to the size of range (target) patches.
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+ # Notices how the pooling factors do not change if one decodes at higher resolutions, since both domain and range
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+ # patch sizes are multiplied by the same integer.
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+ self.pool = nn.AvgPool3d(kernel_size=(1, self.h_factors, self.w_factors), stride=(1, self.h_factors, self.w_factors))
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+
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+ def collage_operator(self, z, collage_weight, collage_bias):
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+ """Collage Operator (decoding). Performs the steps described in Def. 3.1, Figure 2."""
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+
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+ # Given the current iterate `z`, we split it into domain patches according to the partitioning scheme.
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+ domains = img_to_patches(z)
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+
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+ # Pool domains (pre augmentation) to range patch sizes.
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+ pooled_domains = self.pool(domains)
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+
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+ # If needed, produce additional candidate domain patches as augmentations of existing domains.
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+ # Auxiliary learned feature maps / patches are also introduced here.
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+ if self.n_aug_transforms > 1:
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+ pooled_domains = self.generate_candidates(pooled_domains)
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+
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+ pooled_domains = repeat(pooled_domains, 'b c d h w -> b c d r h w', r=self.num_ranges)
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+
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+ # Apply the affine maps to domain patches
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+ range_domains = torch.einsum('bcdrhw, bcdr -> bcrhw', pooled_domains, collage_weight)
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+ range_domains = range_domains + collage_bias[..., None, None]
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+
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+ # Reconstruct data by "composing" the output patches back together (collage!).
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+ z = patches_to_img(range_domains)
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+
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+ return z
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+
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+ def decode_step(self, z, weight, bias, superres_factor, return_patches=False):
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+ """Single Collage Operator step. Performs the steps described in:
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+ https://arxiv.org/pdf/2204.07673.pdf (Def. 3.1, Figure 2).
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+ """
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+
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+ # Given the current iterate `z`, we split it into `n_domains` domain patches.
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+ domains = img_to_patches(z, patch_h=self.dh * superres_factor, patch_w=self.dw * superres_factor)
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+
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+ # Pool domains (pre augmentation) for compatibility with range patches.
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+ pooled_domains = self.pool(domains)
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+
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+ # If needed, produce additional candidate domain patches as augmentations of existing domains.
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+ if self.n_aug_transforms > 1:
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+ pooled_domains = self.generate_candidates(pooled_domains)
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+
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+ pooled_domains = repeat(pooled_domains, 'b c d h w -> b c d r h w', r=self.n_ranges)
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+
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+ # Apply the affine maps to domain patches
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+ range_domains = torch.einsum('bcdrhw, bcdr -> bcrhw', pooled_domains, weight)
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+ range_domains = range_domains + bias[:, :, :, None, None]
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+
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+ # Reconstruct data by "composing" the output patches back together (collage!).
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+ z = patches_to_img(range_domains, self.n_rh, self.n_rw)
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+ if return_patches: return z, (domains, pooled_domains, range_domains)
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+ return z
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+
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+ def generate_candidates(self, domains):
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+ domains = domains.permute(0,2,1,3,4)
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+ rotations = [vmapped_rotate(domains, angle=angle) for angle in (90, 180, 270)]
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+ hflips = ttf.hflip(domains)
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+ vflips = ttf.vflip(domains)
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+ br_shift = ttf.adjust_brightness(domains, 0.5)
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+ cr_shift = ttf.adjust_contrast(domains, 0.5)
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+ hue_shift = ttf.adjust_hue(domains, 0.5)
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+ sat_shift = ttf.adjust_saturation(domains, 0.5)
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+ domains = torch.cat([domains, *rotations, hflips, vflips, br_shift, cr_shift, hue_shift, sat_shift], dim=1)
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+ return domains.permute(0,2,1,3,4)
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+
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+ def forward(self, x, co_w, co_bias, decode_steps=20, superres_factor=1):
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+ B, C, H, W = x.shape
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+ # It does not matter which initial condition is chosen, so long as the dimensions match.
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+ # The fixed-point of a Collage Operator is uniquely determined* by the fractal code
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+ # *: and auxiliary learned patches, if any.
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+ z = torch.randn(B, C, H * superres_factor, W * superres_factor).to(x.device)
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+ for _ in range(decode_steps):
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+ z = self.decode_step(z, co_w, co_bias, superres_factor)
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+ return z
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+
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+ def collage_partition_info(self, input_res, dh, dw, rh, rw):
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+ """
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+ Computes auxiliary information for the collage (number of source and target domains, and relative size factors)
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+ """
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+ height = width = input_res
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+ n_dh, n_dw = height // dh, width // dw
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+ n_domains = n_dh * n_dw
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+
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+ # Adjust number of domain patches to include augmentations
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+ n_domains = n_domains + n_domains * self.n_aug_transforms # (3 rotations, hflip, vlip)
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+
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+ h_factors, w_factors = dh // rh, dw // rw
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+ n_rh, n_rw = input_res // rh, input_res // rw
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+ n_ranges = n_rh * n_rw
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+ return n_dh, n_dw, n_rh, n_rw, h_factors, w_factors, n_domains, n_ranges
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+
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+
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+ class NeuralCollageOperator2d(nn.Module):
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+ def __init__(self, out_res, out_channels, rh, rw, dh=None, dw=None, net=None, use_augmentations=False):
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+ super().__init__()
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+ self.co = CollageOperator2d(out_res, rh, rw, dh, dw, use_augmentations)
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+ # In a Collage Operator, the affine map requires a single scalar weight
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+ # for each pair of domain and range patches, and a single scalar bias for each range.
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+ # `net` learns to output these weights based on the objective.
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+ self.co_w_dim = self.co.n_domains * self.co.n_ranges * out_channels
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+ self.co_bias_dim = self.co.n_ranges * out_channels
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+ tot_out_dim = self.co_w_dim + self.co_bias_dim
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+
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+ # Does not need to be a ConvMixer: for deep generative Neural Collages `net` can be e.g, a VDVAE.
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+ if net is None:
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+ net = ConvMixer(dim=32, depth=8, kernel_size=9, patch_size=7, num_classes=tot_out_dim)
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+ self.net = net
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+
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+ self.softmax = nn.Softmax(dim=-1)
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+ self.tanh = nn.Tanh()
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+
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+ def forward(self, x, decode_steps=10, superres_factor=1, return_co_code=False):
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+ B, C, H, W = x.shape
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+ co_code = self.net(x) # B, C, co_w_dim + co_mix_dim + co_bias_dim
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+ co_w, co_bias = torch.split(co_code, [self.co_w_dim, self.co_bias_dim], dim=-1)
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+
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+ co_w = co_w.view(B, C, self.co.n_domains, self.co.n_ranges)
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+ # No restrictions on co_w, thus no guarantee of contractiveness.
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+ # In the full jax version of Neural Collages we enforce the constraint |co_w| < 1 (elementwise).
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+ co_bias = co_bias.view(B, C, self.co.n_ranges)
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+ co_bias = self.tanh(co_bias)
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+
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+ z = self.co(x, co_w, co_bias, decode_steps=decode_steps, superres_factor=superres_factor)
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+
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+ if return_co_code: return z, co_w, co_bias
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+ else: return z
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+
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+
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+
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+ def fractalize(img, superresolution_factor=1):
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+ superresolution_factor = int(superresolution_factor)
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+
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+ device = torch.device('cuda') if torch.cuda.is_available() else torch.device('cpu')
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+
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+ im = np.asarray(img)
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+
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+ im = torch.from_numpy(im).permute(2,0,1).to(device)
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+ co = NeuralCollageOperator2d(out_res=100, out_channels=3, rh=2, rw=2, dh=100, dw=100).to(device)
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+
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+ opt = torch.optim.Adam(co.parameters(), lr=1e-2)
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+ objective = nn.MSELoss()
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+ norm_im = im.float().unsqueeze(0) / 255
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+
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+ for _ in range(200):
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+ recon = co(norm_im, decode_steps=10, return_co_code=False)
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+
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+ loss = objective(recon, norm_im)
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+ loss.backward()
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+ opt.step()
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+ opt.zero_grad()
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+
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+ fractal_img = co(norm_im, decode_steps=10, superres_factor=superresolution_factor)[0].permute(1,2,0).clamp(-1, 1)
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+ return fractal_img.cpu().detach().numpy()
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+
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+ demo = gr.Interface(
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+ fn=fractalize,
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+ inputs=[gr.Image(shape=(100, 100), image_mode='RGB'), gr.Slider(1, 40, step=1)],
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+ outputs="image"
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+ )
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+ demo.launch()
requirements.txt ADDED
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+ numpy
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+ torch
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+ einops
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+ timm
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+ torchvision
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+ functorch
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+ torch