3260 papers • 126 benchmarks • 313 datasets
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These leaderboards are used to track progress in motion-style-transfer-22
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This paper presents a novel data-driven framework for motion style transfer, which learns from an unpaired collection of motions with style labels, and enables transferring motion styles not observed during training, and is the first to demonstrate style transfer directly from videos to 3D animations.
The Motion Puzzle is the first that can control the motion style of individual body parts, allowing for local style editing and significantly increasing the range of stylized motions.
This work proposes a transfer learning approach for efficiently adapting pre-trained forecasting models to new domains, such as unseen agent types and scene contexts, and introduces two components that exploit prior knowledge of motion style shifts, including a low-rank motion style adapter and a modular adapter strategy.
This work proposes a new style-diverse dataset that uses an industrial-standard human bone structure and thus is industry-ready to be plugged into 3D characters for many projects and claims the challenges in motion style transfer.
A novel motion style transformer that effectively disentangles style from content and generates a plausible motion with transferred style from a source motion without the need for heuristic post-processing is proposed.
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