Litcius/Paper detail

Learning Analytical Posterior Probability for Human Mesh Recovery

Qi Fang, Kang Chen, Yinghui Fan, Qing Shuai, Jiefeng Li, Weidong Zhang

202323 citationsDOI

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.

Topics & Concepts

Computer scienceAmbiguityProbabilistic logicPosterior probabilityBayesian probabilityArtificial intelligenceCode (set theory)Joint (building)Bayesian networkMachine learningAlgorithmSet (abstract data type)EngineeringArchitectural engineeringProgramming languageHuman Pose and Action Recognition3D Shape Modeling and AnalysisGait Recognition and Analysis
Learning Analytical Posterior Probability for Human Mesh Recovery | Litcius