AIVFI/Video-Depth-Estimation-Rankings-and-Stereo-Video-Conversion-Rankings
BRIDGE BriGeS ChronoDepth Depth Any Video Depth Anything Depth Pro DepthCrafter Distill Any Depth Elastic3D Eye2Eye FE2E FlashDepth GeometryCrafter HairGuard M2SVid MegaSaM Metric3D MoGe MoRE NVDS Pixel-Perfect Depth Restereo SpatialTrackerV2 StableDPT StereoCrafter StereoPilot StereoWorld SVG Uni4D UniDepth VGGT Video Depth Anything π^3
This resource helps computer vision researchers stay up-to-date with the latest advancements in video depth estimation and stereo video conversion. It provides a curated list of research papers, models, and datasets, making it easier to compare new work against the current state of the art. Researchers can find what's new and what's available for training their own models.
235 stars.
Use this if you are a researcher developing new models for video depth estimation or stereo video conversion and need to find existing models, compare performance, or access training datasets.
Not ideal if you are looking for an end-user tool or application for converting videos to 3D or estimating depth, as this is a resource for researchers and developers.
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235
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Last pushed
Feb 08, 2026
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