RAM: Recover Any 3D Human Motion in-the-Wild
作者
Authors
Sen Jia|Ning Zhu|Jinqin Zhong|Jiale Zhou|Huaping Zhang|Jenq-Neng Hwang|Lei Li
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年份
Year
2026
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Category
国家
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德国Germany
📝 摘要
Abstract
RAM incorporates a motion-aware semantic tracker with adaptive Kalman filtering to achieve robust identity association under severe occlusions and dynamic interactions. A memory-augmented Temporal HMR module further enhances human motion reconstruction by injecting spatio-temporal priors for consistent and smooth motion estimation. Moreover, a lightweight Predictor module forecasts future poses to maintain reconstruction continuity, while a gated combiner adaptively fuses reconstructed and predicted features to ensure coherence and robustness. Experiments on in-the-wild multi-person benchmarks such as PoseTrack and 3DPW, demonstrate that RAM substantially outperforms previous state-of-the-art in both Zero-shot tracking stability and 3D accuracy, offering a generalizable paradigm for markerless 3D human motion capture in-the-wild.
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