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import gc |
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import torch |
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import torch.nn.functional as F |
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from einops import repeat, rearrange |
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from vidtome import merge |
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from utils.flow_utils import flow_warp, coords_grid |
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def calc_mean_std(feat, eps=1e-5): |
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size = feat.size() |
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assert (len(size) == 4) |
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N, C = size[:2] |
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feat_var = feat.view(N, C, -1).var(dim=2) + eps |
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feat_std = feat_var.sqrt().view(N, C, 1, 1) |
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feat_mean = feat.view(N, C, -1).mean(dim=2).view(N, C, 1, 1) |
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return feat_mean, feat_std |
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class AttentionControl(): |
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def __init__(self, |
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warp_period=(0.0, 0.0), |
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merge_period=(0.0, 0.0), |
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merge_ratio=(0.3, 0.3), |
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ToMe_period=(0.0, 1.0), |
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mask_period=(0.0, 0.0), |
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cross_period=(0.0, 0.0), |
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ada_period=(0.0, 0.0), |
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inner_strength=1.0, |
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loose_cfatnn=False, |
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flow_merge=True, |
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): |
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self.cur_frame_idx = 0 |
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self.step_store = self.get_empty_store() |
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self.cur_step = 0 |
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self.total_step = 0 |
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self.cur_index = 0 |
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self.init_store = False |
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self.restore = False |
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self.update = False |
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self.flow = None |
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self.mask = None |
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self.cldm = None |
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self.decoded_imgs = [] |
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self.restorex0 = True |
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self.updatex0 = False |
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self.inner_strength = inner_strength |
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self.cross_period = cross_period |
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self.mask_period = mask_period |
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self.ada_period = ada_period |
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self.warp_period = warp_period |
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self.ToMe_period = ToMe_period |
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self.merge_period = merge_period |
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self.merge_ratio = merge_ratio |
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self.keyframe_idx = 0 |
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self.flow_merge = flow_merge |
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self.distances = {} |
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self.flow_correspondence = {} |
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self.non_pad_ratio = (1.0, 1.0) |
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self.up_resolution = 1280 if loose_cfatnn else 1281 |
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@staticmethod |
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def get_empty_store(): |
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return { |
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'first': [], |
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'previous': [], |
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'x0_previous': [], |
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'first_ada': [], |
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'pre_x0': [], |
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"pre_keyframe_lq": None, |
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"flows": None, |
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"occ_masks": None, |
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"flow_confids": None, |
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"merge": None, |
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"unmerge": None, |
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"corres_scores": None, |
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"flows2": None, |
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"flow_confids2": None, |
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} |
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def forward(self, context, is_cross: bool, place_in_unet: str): |
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cross_period = (self.total_step * self.cross_period[0], |
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self.total_step * self.cross_period[1]) |
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if not is_cross and place_in_unet == 'up' and context.shape[ |
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2] < self.up_resolution: |
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if self.init_store: |
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self.step_store['first'].append(context.detach()) |
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self.step_store['previous'].append(context.detach()) |
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if self.update: |
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tmp = context.clone().detach() |
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if self.restore and self.cur_step >= cross_period[0] and \ |
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self.cur_step <= cross_period[1]: |
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context = self.step_store['previous'][self.cur_index].clone() |
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if self.update: |
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self.step_store['previous'][self.cur_index] = tmp |
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self.cur_index += 1 |
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return context |
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def update_x0(self, x0, cur_frame=0): |
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if self.restorex0: |
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if self.cur_step >= self.total_step * self.warp_period[ |
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0] and self.cur_step < int(self.total_step * self.warp_period[1]): |
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mid = x0.shape[0] // 2 |
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if len(self.step_store["pre_x0"]) == int(self.total_step * self.warp_period[1]): |
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print(f"[INFO] keyframe latent warping @ step {self.cur_step}...") |
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x0[mid] = (1 - self.step_store["occ_masks"][mid]) * x0[mid] + \ |
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flow_warp(self.step_store["pre_x0"][self.cur_step][None], self.step_store["flows"][mid], mode='nearest')[0] * self.step_store["occ_masks"][mid] |
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print(f"[INFO] local latent warping @ step {self.cur_step}...") |
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for i in range(x0.shape[0]): |
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if i == mid: |
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continue |
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x0[i] = (1 - self.step_store["occ_masks"][i]) * x0[i] + \ |
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flow_warp(x0[mid][None], self.step_store["flows"][i], mode='nearest')[0] * self.step_store["occ_masks"][i] |
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if len(self.step_store["pre_x0"]) < int(self.total_step * self.warp_period[1]): |
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self.step_store['pre_x0'].append(x0[mid]) |
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else: |
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self.step_store['pre_x0'][self.cur_step] = x0[mid] |
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return x0 |
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def merge_x0(self, x0, merge_ratio): |
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if self.cur_step >= self.total_step * self.merge_period[0] and \ |
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self.cur_step < int(self.total_step * self.merge_period[1]): |
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print(f"[INFO] latent merging @ step {self.cur_step}...") |
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B, C, H, W = x0.shape |
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non_pad_ratio_h, non_pad_ratio_w = self.non_pad_ratio |
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padding_size_w = W - int(W * non_pad_ratio_w) |
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padding_size_h = H - int(H * non_pad_ratio_h) |
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non_pad_w = W - padding_size_w |
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non_pad_h = H - padding_size_h |
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padding_mask = torch.zeros((H, W), device=x0.device, dtype=torch.bool) |
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if padding_size_w: |
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padding_mask[:, -padding_size_w:] = 1 |
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if padding_size_h: |
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padding_mask[-padding_size_h:, :] = 1 |
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padding_mask = rearrange(padding_mask, 'h w -> (h w)') |
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idx_buffer = torch.arange(H*W, device=x0.device, dtype=torch.int64) |
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non_pad_idx = idx_buffer[None, ~padding_mask, None] |
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del idx_buffer, padding_mask |
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x0 = rearrange(x0, 'b c h w -> b (h w) c', h=H) |
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x_non_pad = torch.gather(x0, dim=1, index=non_pad_idx.expand(B, -1, C)) |
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import copy |
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flows = copy.deepcopy(self.step_store["flows"]) |
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for i in range(B): |
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if flows[i] is not None: |
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flows[i] = flows[i][:, :, :non_pad_h, :non_pad_w] |
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x_non_pad = rearrange(x_non_pad, 'b a c -> 1 (b a) c') |
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m, u, ret_dict = merge.bipartite_soft_matching_randframe( |
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x_non_pad, B, merge_ratio, 0, target_stride=B, |
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H=H, |
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flow=flows, |
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flow_confid=self.step_store["flow_confids"], |
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) |
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x_non_pad = u(m(x_non_pad)) |
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x_non_pad = rearrange(x_non_pad, '1 (b a) c -> b a c', b=B) |
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x0.scatter_(dim=1, index=non_pad_idx.expand(B, -1, C), src=x_non_pad) |
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x0 = rearrange(x0, 'b (h w) c -> b c h w ', h=H) |
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return x0 |
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def merge_x0_scores(self, x0, merge_ratio, merge_mode="replace"): |
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if self.cur_step >= self.total_step * self.merge_period[0] and \ |
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self.cur_step < int(self.total_step * self.merge_period[1]): |
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print(f"[INFO] latent merging @ step {self.cur_step}...") |
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B, C, H, W = x0.shape |
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non_pad_ratio_h, non_pad_ratio_w = self.non_pad_ratio |
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padding_size_w = W - int(W * non_pad_ratio_w) |
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padding_size_h = H - int(H * non_pad_ratio_h) |
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padding_mask = torch.zeros((H, W), device=x0.device, dtype=torch.bool) |
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if padding_size_w: |
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padding_mask[:, -padding_size_w:] = 1 |
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if padding_size_h: |
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padding_mask[-padding_size_h:, :] = 1 |
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padding_mask = rearrange(padding_mask, 'h w -> (h w)') |
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idx_buffer = torch.arange(H*W, device=x0.device, dtype=torch.int64) |
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non_pad_idx = idx_buffer[None, ~padding_mask, None] |
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x0 = rearrange(x0, 'b c h w -> b (h w) c', h=H) |
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x_non_pad = torch.gather(x0, dim=1, index=non_pad_idx.expand(B, -1, C)) |
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x_non_pad_A, x_non_pad_N = x_non_pad.shape[1], x_non_pad.shape[1] * B |
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mid = B // 2 |
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x_non_pad_ = x_non_pad.clone() |
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x_non_pad = rearrange(x_non_pad, 'b a c -> 1 (b a) c') |
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idx_buffer = torch.arange(x_non_pad_N, device=x0.device, dtype=torch.int64) |
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randf = torch.tensor(B // 2, dtype=torch.int).to(x0.device) |
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dst_select = ((torch.div(idx_buffer, x_non_pad_A, rounding_mode='floor')) % B == randf).to(torch.bool) |
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a_idx = idx_buffer[None, ~dst_select, None] |
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b_idx = idx_buffer[None, dst_select, None] |
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del idx_buffer, padding_mask |
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num_dst = b_idx.shape[1] |
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b = 1 |
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src = torch.gather(x_non_pad, dim=1, index=a_idx.expand(b, x_non_pad_N - num_dst, C)) |
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tar = torch.gather(x_non_pad, dim=1, index=b_idx.expand(b, num_dst, C)) |
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flow_src_idx = self.flow_correspondence[H][0] |
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flow_tar_idx = self.flow_correspondence[H][1] |
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flow_confid = self.step_store["flow_confids"][:mid] + self.step_store["flow_confids"][mid+1:] |
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flow_confid = torch.cat(flow_confid, dim=0) |
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flow_confid = rearrange(flow_confid, 'b h w -> 1 (b h w)') |
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scores = F.normalize(self.step_store["corres_scores"], p=2, dim=-1) |
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flow_confid -= (torch.max(flow_confid) - torch.max(scores)) |
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scores[:, flow_src_idx[0, :, 0], flow_tar_idx[0, :, 0]] += (flow_confid[:, flow_src_idx[0, :, 0]] * 0.3) |
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r = min(src.shape[1], int(src.shape[1] * merge_ratio)) |
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node_max, node_idx = scores.max(dim=-1) |
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edge_idx = node_max.argsort(dim=-1, descending=True)[..., None] |
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unm_idx = edge_idx[..., r:, :] |
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src_idx = edge_idx[..., :r, :] |
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tar_idx = torch.gather(node_idx[..., None], dim=-2, index=src_idx) |
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unm = torch.gather(src, dim=-2, index=unm_idx.expand(-1, -1, C)) |
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if merge_mode != "replace": |
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src = torch.gather(src, dim=-2, index=src_idx.expand(-1, -1, C)) |
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tar = tar.scatter_reduce(-2, tar_idx.expand(-1, -1, C), |
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src, reduce=merge_mode, include_self=True) |
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src = torch.gather(tar, dim=-2, index=tar_idx.expand(-1, -1, C)) |
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x_non_pad.scatter_(dim=-2, index=b_idx.expand(b, -1, C), src=tar) |
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x_non_pad.scatter_(dim=-2, index=torch.gather(a_idx.expand(b, -1, 1), |
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dim=1, index=unm_idx).expand(-1, -1, C), src=unm) |
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x_non_pad.scatter_(dim=-2, index=torch.gather(a_idx.expand(b, -1, 1), |
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dim=1, index=src_idx).expand(-1, -1, C), src=src) |
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x_non_pad = rearrange(x_non_pad, '1 (b a) c -> b a c', a=x_non_pad_A) |
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x0.scatter_(dim=1, index=non_pad_idx.expand(B, -1, C), src=x_non_pad) |
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x0 = rearrange(x0, 'b (h w) c -> b c h w ', h=H) |
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return x0 |
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def set_distance(self, B, H, W, radius, device): |
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y, x = torch.meshgrid(torch.arange(H), torch.arange(W)) |
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coords = torch.stack((y, x), dim=-1).float().to(device) |
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coords = rearrange(coords, 'h w c -> (h w) c') |
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distances = torch.cdist(coords, coords) |
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radius = 1 if radius == 0 else radius |
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distances //= radius |
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distances = torch.exp(-distances) |
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distances = repeat(distances, 'h a -> 1 (b h) a', b=B) |
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self.distances[H] = distances |
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def set_flow_correspondence(self, B, H, W, key_idx, flow_confid, flow): |
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if len(flow) != B - 1: |
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flow_confid = flow_confid[:key_idx] + flow_confid[key_idx+1:] |
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flow = flow[:key_idx] + flow[key_idx+1:] |
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flow_confid = torch.cat(flow_confid, dim=0) |
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flow = torch.cat(flow, dim=0) |
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flow_confid = rearrange(flow_confid, 'b h w -> 1 (b h w)') |
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edge_idx = flow_confid.argsort(dim=-1, descending=True)[..., None] |
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src_idx = edge_idx[..., :, :] |
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A = H * W |
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src_idx_tensor = src_idx[0, : ,0] |
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f = src_idx_tensor // A |
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id = src_idx_tensor % A |
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x = id % W |
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y = id // W |
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src_fxy = torch.stack((f, x, y), dim=1) |
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grid = coords_grid(B-1, H, W).to(flow.device) + flow |
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x = grid[src_fxy[:, 0], 0, src_fxy[:, 2], src_fxy[:, 1]].clamp(0, W-1).long() |
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y = grid[src_fxy[:, 0], 1, src_fxy[:, 2], src_fxy[:, 1]].clamp(0, H-1).long() |
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tar_xy = torch.stack((x, y), dim=1) |
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tar_idx = y * W + x |
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tar_idx = rearrange(tar_idx, ' d -> 1 d 1') |
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self.flow_correspondence[H] = (src_idx, tar_idx) |
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def set_merge(self, merge, unmerge): |
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self.step_store["merge"] = merge |
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self.step_store["unmerge"] = unmerge |
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def set_warp(self, flows, masks, flow_confids=None): |
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self.step_store["flows"] = flows |
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self.step_store["occ_masks"] = masks |
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if flow_confids is not None: |
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self.step_store["flow_confids"] = flow_confids |
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def set_warp2(self, flows, flow_confids): |
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self.step_store["flows2"] = flows |
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self.step_store["flow_confids2"] = flow_confids |
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def set_pre_keyframe_lq(self, pre_keyframe_lq): |
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self.step_store["pre_keyframe_lq"] = pre_keyframe_lq |
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def __call__(self, context, is_cross: bool, place_in_unet: str): |
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context = self.forward(context, is_cross, place_in_unet) |
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return context |
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def set_cur_frame_idx(self, frame_idx): |
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self.cur_frame_idx = frame_idx |
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def set_step(self, step): |
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self.cur_step = step |
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def set_total_step(self, total_step): |
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self.total_step = total_step |
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self.cur_index = 0 |
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def clear_store(self): |
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del self.step_store |
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torch.cuda.empty_cache() |
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gc.collect() |
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self.step_store = self.get_empty_store() |
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def set_task(self, task, restore_step=1.0): |
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self.init_store = False |
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self.restore = False |
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self.update = False |
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self.cur_index = 0 |
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self.restore_step = restore_step |
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self.updatex0 = False |
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self.restorex0 = False |
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if 'initfirst' in task: |
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self.init_store = True |
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self.clear_store() |
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if 'updatestyle' in task: |
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self.update = True |
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if 'keepstyle' in task: |
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self.restore = True |
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if 'updatex0' in task: |
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self.updatex0 = True |
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if 'keepx0' in task: |
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self.restorex0 = True |
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