# ComfyUI BIM-VFI + EMA-VFI + SGM-VFI ComfyUI custom nodes for video frame interpolation using [BiM-VFI](https://github.com/KAIST-VICLab/BiM-VFI) (CVPR 2025), [EMA-VFI](https://github.com/MCG-NJU/EMA-VFI) (CVPR 2023), and [SGM-VFI](https://github.com/MCG-NJU/SGM-VFI) (CVPR 2024). Designed for long videos with thousands of frames — processes them without running out of VRAM. ## Which model should I use? | | BIM-VFI | EMA-VFI | SGM-VFI | |---|---------|---------|---------| | **Best for** | General-purpose, non-uniform motion | Fast inference, light VRAM | Large motion, occlusion-heavy scenes | | **Quality** | Highest overall | Good | Best on large motion | | **Speed** | Moderate | Fastest | Slowest | | **VRAM** | ~2 GB/pair | ~1.5 GB/pair | ~3 GB/pair | | **Params** | ~17M | ~14–65M | ~15M + GMFlow | | **Arbitrary timestep** | Yes | Yes (with `_t` checkpoint) | No (fixed 0.5) | | **Paper** | CVPR 2025 | CVPR 2023 | CVPR 2024 | | **License** | Research only | Apache 2.0 | Apache 2.0 | **TL;DR:** Start with **BIM-VFI** for best quality. Use **EMA-VFI** if you need speed or lower VRAM. Use **SGM-VFI** if your video has large camera motion or fast-moving objects that the others struggle with. ## Nodes ### BIM-VFI #### Load BIM-VFI Model Loads the BiM-VFI checkpoint. Auto-downloads from Google Drive on first use to `ComfyUI/models/bim-vfi/`. | Input | Description | |-------|-------------| | **model_path** | Checkpoint file from `models/bim-vfi/` | | **auto_pyr_level** | Auto-select pyramid level by resolution (<540p=3, 540p=5, 1080p=6, 4K=7) | | **pyr_level** | Manual pyramid level (3-7), only used when auto is off | #### BIM-VFI Interpolate Interpolates frames from an image batch. | Input | Description | |-------|-------------| | **images** | Input image batch | | **model** | Model from the loader node | | **multiplier** | 2x, 4x, or 8x frame rate (recursive 2x passes) | | **batch_size** | Frame pairs processed simultaneously (higher = faster, more VRAM) | | **chunk_size** | Process in segments of N input frames (0 = disabled). Bounds VRAM for very long videos. Result is identical to processing all at once | | **keep_device** | Keep model on GPU between pairs (faster, ~200MB constant VRAM) | | **all_on_gpu** | Keep all intermediate frames on GPU (fast, needs large VRAM) | | **clear_cache_after_n_frames** | Clear CUDA cache every N pairs to prevent VRAM buildup | #### BIM-VFI Segment Interpolate Same as Interpolate but processes a single segment of the input. Chain multiple instances with Save nodes between them to bound peak RAM. The model pass-through output forces sequential execution. ### Tween Concat Videos Concatenates segment video files into a single video using ffmpeg. Connect from any Segment Interpolate's model output to ensure it runs after all segments are saved. Works with all three models. ### EMA-VFI #### Load EMA-VFI Model Loads an EMA-VFI checkpoint. Auto-downloads from Google Drive on first use to `ComfyUI/models/ema-vfi/`. Variant (large/small) and timestep support are auto-detected from the filename. | Input | Description | |-------|-------------| | **model_path** | Checkpoint file from `models/ema-vfi/` | | **tta** | Test-time augmentation: flip input and average with unflipped result (~2x slower, slightly better quality) | Available checkpoints: | Checkpoint | Variant | Params | Arbitrary timestep | |-----------|---------|--------|-------------------| | `ours_t.pkl` | Large | ~65M | Yes | | `ours.pkl` | Large | ~65M | No (fixed 0.5) | | `ours_small_t.pkl` | Small | ~14M | Yes | | `ours_small.pkl` | Small | ~14M | No (fixed 0.5) | #### EMA-VFI Interpolate Interpolates frames from an image batch. Same controls as BIM-VFI Interpolate. #### EMA-VFI Segment Interpolate Same as EMA-VFI Interpolate but processes a single segment. Same pattern as BIM-VFI Segment Interpolate. ### SGM-VFI #### Load SGM-VFI Model Loads an SGM-VFI checkpoint. Auto-downloads from Google Drive on first use to `ComfyUI/models/sgm-vfi/`. Variant (base/small) is auto-detected from the filename (default is small). | Input | Description | |-------|-------------| | **model_path** | Checkpoint file from `models/sgm-vfi/` | | **tta** | Test-time augmentation: flip input and average with unflipped result (~2x slower, slightly better quality) | | **num_key_points** | Sparsity of global matching (0.0 = global everywhere, 0.5 = default balance, higher = faster) | Available checkpoints: | Checkpoint | Variant | Params | |-----------|---------|--------| | `ours-1-2-points.pth` | Small | ~15M + GMFlow | #### SGM-VFI Interpolate Interpolates frames from an image batch. Same controls as BIM-VFI Interpolate. #### SGM-VFI Segment Interpolate Same as SGM-VFI Interpolate but processes a single segment. Same pattern as BIM-VFI Segment Interpolate. **Output frame count (all models):** 2x = 2N-1, 4x = 4N-3, 8x = 8N-7 ## Installation Clone into your ComfyUI `custom_nodes/` directory: ```bash cd ComfyUI/custom_nodes git clone https://github.com/your-user/ComfyUI-Tween.git ``` Dependencies (`gdown`, `cupy`, `timm`) are auto-installed on first load. The correct `cupy` variant is detected from your PyTorch CUDA version. > **Warning:** `cupy` is a large package (~800MB) and compilation/installation can take several minutes. The first ComfyUI startup after installing this node may appear to hang while `cupy` installs in the background. Check the console log for progress. If auto-install fails (e.g. missing build tools in Docker), install manually with: > ```bash > pip install cupy-cuda12x # replace 12 with your CUDA major version > ``` To install manually: ```bash cd ComfyUI-Tween python install.py ``` ### Requirements - PyTorch with CUDA - `cupy` (matching your CUDA version, for BIM-VFI and SGM-VFI) - `timm` (for EMA-VFI and SGM-VFI) - `gdown` (for model auto-download) ## VRAM Guide | VRAM | Recommended settings | |------|---------------------| | 8 GB | batch_size=1, chunk_size=500 | | 24 GB | batch_size=2-4, chunk_size=1000 | | 48 GB+ | batch_size=4-16, all_on_gpu=true | | 96 GB+ | batch_size=8-16, all_on_gpu=true, chunk_size=0 | ## Acknowledgments This project wraps the official [BiM-VFI](https://github.com/KAIST-VICLab/BiM-VFI) implementation by the [KAIST VIC Lab](https://github.com/KAIST-VICLab), the official [EMA-VFI](https://github.com/MCG-NJU/EMA-VFI) implementation by MCG-NJU, and the official [SGM-VFI](https://github.com/MCG-NJU/SGM-VFI) implementation by MCG-NJU. Architecture files in `bim_vfi_arch/`, `ema_vfi_arch/`, and `sgm_vfi_arch/` are vendored from their respective repositories with minimal modifications (relative imports, device-awareness fixes, inference-only paths). **BiM-VFI:** > Wonyong Seo, Jihyong Oh, and Munchurl Kim. > "BiM-VFI: Bidirectional Motion Field-Guided Frame Interpolation for Video with Non-uniform Motions." > *IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)*, 2025. > [[arXiv]](https://arxiv.org/abs/2412.11365) [[Project Page]](https://kaist-viclab.github.io/BiM-VFI_site/) [[GitHub]](https://github.com/KAIST-VICLab/BiM-VFI) ```bibtex @inproceedings{seo2025bimvfi, title={BiM-VFI: Bidirectional Motion Field-Guided Frame Interpolation for Video with Non-uniform Motions}, author={Seo, Wonyong and Oh, Jihyong and Kim, Munchurl}, booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)}, year={2025} } ``` **EMA-VFI:** > Guozhen Zhang, Yuhan Zhu, Haonan Wang, Youxin Chen, Gangshan Wu, and Limin Wang. > "Extracting Motion and Appearance via Inter-Frame Attention for Efficient Video Frame Interpolation." > *IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)*, 2023. > [[arXiv]](https://arxiv.org/abs/2303.00440) [[GitHub]](https://github.com/MCG-NJU/EMA-VFI) ```bibtex @inproceedings{zhang2023emavfi, title={Extracting Motion and Appearance via Inter-Frame Attention for Efficient Video Frame Interpolation}, author={Zhang, Guozhen and Zhu, Yuhan and Wang, Haonan and Chen, Youxin and Wu, Gangshan and Wang, Limin}, booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)}, year={2023} } ``` **SGM-VFI:** > Guozhen Zhang, Yuhan Zhu, Evan Zheran Liu, Haonan Wang, Mingzhen Sun, Gangshan Wu, and Limin Wang. > "Sparse Global Matching for Video Frame Interpolation with Large Motion." > *IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)*, 2024. > [[arXiv]](https://arxiv.org/abs/2404.06913) [[GitHub]](https://github.com/MCG-NJU/SGM-VFI) ```bibtex @inproceedings{zhang2024sgmvfi, title={Sparse Global Matching for Video Frame Interpolation with Large Motion}, author={Zhang, Guozhen and Zhu, Yuhan and Liu, Evan Zheran and Wang, Haonan and Sun, Mingzhen and Wu, Gangshan and Wang, Limin}, booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)}, year={2024} } ``` ## License The BiM-VFI model weights and architecture code are provided by KAIST VIC Lab for **research and education purposes only**. Commercial use requires permission from the principal investigator (Prof. Munchurl Kim, mkimee@kaist.ac.kr). See the [original repository](https://github.com/KAIST-VICLab/BiM-VFI) for details. The EMA-VFI model weights and architecture code are released under the [Apache 2.0 License](https://github.com/MCG-NJU/EMA-VFI/blob/main/LICENSE). See the [original repository](https://github.com/MCG-NJU/EMA-VFI) for details. The SGM-VFI model weights and architecture code are released under the [Apache 2.0 License](https://github.com/MCG-NJU/SGM-VFI/blob/main/LICENSE). See the [original repository](https://github.com/MCG-NJU/SGM-VFI) for details.