#Optical Flow

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ECCV2022-RIFE
The project specializes in real-time intermediate flow estimation for enhanced video frame interpolation. It supports high performance with 30+FPS for 720p, suitable for diverse applications, including post-processing for AI-generated videos. Recent versions improve anime scene interpolation based on advanced research. The project received peer review acceptance at ECCV2022. Users benefit from resources for optical flow estimation and video stitching.
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unimatch
The model delivers a unified solution for flow, stereo, and depth estimation, earning top ranks on Sintel, Middlebury, and Argoverse. Building on GMFlow, it offers diverse pretrained models for 3D perception tasks, with installation via Conda or pip. It includes comprehensive evaluation scripts and training guides for reproducing and extending its capabilities, facilitating precise optical flow, disparity, and depth outcomes.
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gmflow
Experience the global matching technique for optical flow estimation, offering speed and accuracy enhancements over RAFT on Sintel benchmarks. The modular design allows for customizable models utilizing datasets like FlyingChairs and FlyingThings3D, with support for bidirectional flow computation and occlusion checks, optimized for PyTorch across platforms.
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GaussianFlow
This detailed overview presents a new method for 4D content creation utilizing Gaussian dynamics, aimed at enhancing training efficiency by managing variables effectively. The approach accelerates processing through selective temporal variable management without degrading performance. It covers the strategic application of Gaussian parameters over sequential timelines and essential computational techniques like SVD and flow supervision, facilitating efficient 4D rendering. This guide serves as a valuable resource for developers and researchers targeting improvements in 4D graphics rendering technology.