Learning Analytical Posterior Probability for Human Mesh Recovery

Qi Fang, Kang Chen, Yinghui Fan, Qing Shuai, Jiefeng Li, Weidong Zhang
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引用次数: 4

Abstract

Despite various probabilistic methods for modeling the uncertainty and ambiguity in human mesh recovery, their overall precision is limited because existing formulations for joint rotations are either not constrained to SO(3) or difficult to learn for neural networks. To address such an issue, we derive a novel analytical formulation for learning posterior probability distributions of human joint rotations conditioned on bone directions in a Bayesian manner, and based on this, we propose a new posterior-guided framework for human mesh recovery. We demonstrate that our framework is not only superior to existing SOTA baselines on multiple benchmarks but also flexible enough to seamlessly incorporate with additional sensors due to its Bayesian nature. The code is available at https://github.com/NetEase-GameAI/ProPose.
学习分析后验概率人体网格恢复
尽管有各种各样的概率方法来建模人体网格恢复中的不确定性和模糊性,但由于现有的关节旋转公式要么不受SO(3)的约束,要么难以学习神经网络,因此它们的整体精度受到限制。为了解决这一问题,我们推导了一种新的分析公式,用于以贝叶斯方式学习基于骨骼方向的人体关节旋转后验概率分布,并在此基础上提出了一种新的后验引导人体网格恢复框架。我们证明,我们的框架不仅在多个基准测试中优于现有的SOTA基线,而且由于其贝叶斯性质,它还足够灵活,可以无缝地与其他传感器结合。代码可在https://github.com/NetEase-GameAI/ProPose上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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