High-Resolution Frame Interpolation with Patch-based Cascaded Diffusion
- URL: http://arxiv.org/abs/2410.11838v1
- Date: Tue, 15 Oct 2024 17:59:04 GMT
- Title: High-Resolution Frame Interpolation with Patch-based Cascaded Diffusion
- Authors: Junhwa Hur, Charles Herrmann, Saurabh Saxena, Janne Kontkanen, Wei-Sheng Lai, Yichang Shih, Michael Rubinstein, David J. Fleet, Deqing Sun,
- Abstract summary: We introduce a patch-based cascaded pixel diffusion model for frame, HiFI.
We show that HiFI helps significantly with high resolution and complex repeated textures that require global context.
We also show that this technique drastically reduces memory usage at inference time and also allows us to use a single model at test time.
- Score: 44.52838839928787
- License:
- Abstract: Despite the recent progress, existing frame interpolation methods still struggle with processing extremely high resolution input and handling challenging cases such as repetitive textures, thin objects, and large motion. To address these issues, we introduce a patch-based cascaded pixel diffusion model for frame interpolation, HiFI, that excels in these scenarios while achieving competitive performance on standard benchmarks. Cascades, which generate a series of images from low- to high-resolution, can help significantly with large or complex motion that require both global context for a coarse solution and detailed context for high resolution output. However, contrary to prior work on cascaded diffusion models which perform diffusion on increasingly large resolutions, we use a single model that always performs diffusion at the same resolution and upsamples by processing patches of the inputs and the prior solution. We show that this technique drastically reduces memory usage at inference time and also allows us to use a single model at test time, solving both frame interpolation and spatial up-sampling, saving training cost. We show that HiFI helps significantly with high resolution and complex repeated textures that require global context. HiFI demonstrates comparable or beyond state-of-the-art performance on multiple benchmarks (Vimeo, Xiph, X-Test, SEPE-8K). On our newly introduced dataset that focuses on particularly challenging cases, HiFI also significantly outperforms other baselines on these cases. Please visit our project page for video results: https://hifi-diffusion.github.io
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