Integrates GIMM-VFI alongside existing BIM/EMA/SGM models. Key feature: generates all intermediate frames in one forward pass (no recursive 2x passes needed for 4x/8x). - Vendor gimm_vfi_arch/ from kijai/ComfyUI-GIMM-VFI with device fixes - Two variants: RAFT-based (~80MB) and FlowFormer-based (~123MB) - Auto-download checkpoints from HuggingFace (Kijai/GIMM-VFI_safetensors) - Three new nodes: Load GIMM-VFI Model, GIMM-VFI Interpolate, GIMM-VFI Segment Interpolate - single_pass toggle: True=arbitrary timestep (default), False=recursive like other models - ds_factor parameter for high-res input downscaling Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
170 lines
5.2 KiB
Python
170 lines
5.2 KiB
Python
import numpy as np
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import torch
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import torch.nn as nn
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import torch.nn.functional as F
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from .update import BasicUpdateBlock, SmallUpdateBlock
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from .extractor import BasicEncoder, SmallEncoder
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from .corr import CorrBlock, AlternateCorrBlock
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from .utils.utils import bilinear_sampler, coords_grid, upflow8
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try:
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autocast = torch.cuda.amp.autocast
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except:
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# dummy autocast for PyTorch < 1.6
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class autocast:
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def __init__(self, enabled):
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pass
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def __enter__(self):
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pass
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def __exit__(self, *args):
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pass
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class RAFT(nn.Module):
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def __init__(self, args):
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super(RAFT, self).__init__()
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self.args = args
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if args.small:
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self.hidden_dim = hdim = 96
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self.context_dim = cdim = 64
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args.corr_levels = 4
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args.corr_radius = 3
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self.corr_levels = 4
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self.corr_radius = 3
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else:
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self.hidden_dim = hdim = 128
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self.context_dim = cdim = 128
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args.corr_levels = 4
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args.corr_radius = 4
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self.corr_levels = 4
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self.corr_radius = 4
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if "dropout" not in args._get_kwargs():
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self.args.dropout = 0
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if "alternate_corr" not in args._get_kwargs():
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self.args.alternate_corr = False
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# feature network, context network, and update block
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if args.small:
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self.fnet = SmallEncoder(
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output_dim=128, norm_fn="instance", dropout=args.dropout
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)
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self.cnet = SmallEncoder(
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output_dim=hdim + cdim, norm_fn="none", dropout=args.dropout
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)
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self.update_block = SmallUpdateBlock(self.args, hidden_dim=hdim)
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else:
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self.fnet = BasicEncoder(
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output_dim=256, norm_fn="instance", dropout=args.dropout
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)
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self.cnet = BasicEncoder(
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output_dim=hdim + cdim, norm_fn="batch", dropout=args.dropout
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)
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self.update_block = BasicUpdateBlock(self.args, hidden_dim=hdim)
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def freeze_bn(self):
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for m in self.modules():
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if isinstance(m, nn.BatchNorm2d):
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m.eval()
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def initialize_flow(self, img):
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"""Flow is represented as difference between two coordinate grids flow = coords1 - coords0"""
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N, C, H, W = img.shape
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coords0 = coords_grid(N, H // 8, W // 8, device=img.device)
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coords1 = coords_grid(N, H // 8, W // 8, device=img.device)
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# optical flow computed as difference: flow = coords1 - coords0
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return coords0, coords1
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def upsample_flow(self, flow, mask):
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"""Upsample flow field [H/8, W/8, 2] -> [H, W, 2] using convex combination"""
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N, _, H, W = flow.shape
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mask = mask.view(N, 1, 9, 8, 8, H, W)
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mask = torch.softmax(mask, dim=2)
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up_flow = F.unfold(8 * flow, [3, 3], padding=1)
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up_flow = up_flow.view(N, 2, 9, 1, 1, H, W)
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up_flow = torch.sum(mask * up_flow, dim=2)
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up_flow = up_flow.permute(0, 1, 4, 2, 5, 3)
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return up_flow.reshape(N, 2, 8 * H, 8 * W)
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def forward(
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self,
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image1,
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image2,
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iters=12,
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flow_init=None,
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upsample=True,
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test_mode=False,
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return_feat=True,
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):
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"""Estimate optical flow between pair of frames"""
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image1 = 2 * (image1 / 255.0) - 1.0
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image2 = 2 * (image2 / 255.0) - 1.0
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image1 = image1.contiguous()
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image2 = image2.contiguous()
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hdim = self.hidden_dim
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cdim = self.context_dim
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# run the feature network
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with autocast(enabled=self.args.mixed_precision):
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fmap1, fmap2 = self.fnet([image1, image2])
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fmap1 = fmap1.float()
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fmap2 = fmap2.float()
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if self.args.alternate_corr:
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corr_fn = AlternateCorrBlock(fmap1, fmap2, radius=self.args.corr_radius)
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else:
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corr_fn = CorrBlock(fmap1, fmap2, radius=self.args.corr_radius)
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# run the context network
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with autocast(enabled=self.args.mixed_precision):
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cnet, feats = self.cnet(image1, return_feature=True)
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net, inp = torch.split(cnet, [hdim, cdim], dim=1)
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net = torch.tanh(net)
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inp = torch.relu(inp)
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coords0, coords1 = self.initialize_flow(image1)
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if flow_init is not None:
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coords1 = coords1 + flow_init
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flow_predictions = []
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for itr in range(iters):
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coords1 = coords1.detach()
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corr = corr_fn(coords1) # index correlation volume
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flow = coords1 - coords0
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with autocast(enabled=self.args.mixed_precision):
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net, up_mask, delta_flow = self.update_block(net, inp, corr, flow)
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# F(t+1) = F(t) + \Delta(t)
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coords1 = coords1 + delta_flow
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# upsample predictions
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if up_mask is None:
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flow_up = upflow8(coords1 - coords0)
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else:
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flow_up = self.upsample_flow(coords1 - coords0, up_mask)
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flow_predictions.append(flow_up)
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if test_mode:
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return coords1 - coords0, flow_up
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if return_feat:
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return flow_up, feats[1:], fmap1
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return flow_predictions
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