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PhaseMP: Robust 3D Pose Estimation via Phase-conditioned Human Motion Prior

Mingyi Shi, Sebastian Starke, Yuting Ye, Taku Komura, Jungdam Won

202322 citationsDOI

Abstract

We present a novel motion prior, called PhaseMP, modeling a probability distribution on pose transitions conditioned by a frequency domain feature extracted from a periodic autoencoder. The phase feature further enforces the pose transitions to be unidirectional (i.e. no backward movement in time), from which more stable and natural motions can be generated. Specifically, our motion prior can be useful for accurately estimating 3D human motions in the presence of challenging input data, including long periods of spatial and temporal occlusion, as well as noisy sensor measurements. Through a comprehensive evaluation, we demonstrate the efficacy of our novel motion prior, showcasing its superiority over existing state-of-the-art methods by a significant margin across various applications, including video-to-motion and motion estimation from sparse sensor data, and etc.

Topics & Concepts

Artificial intelligenceComputer scienceComputer visionMotion (physics)Feature (linguistics)AutoencoderMotion estimationPosePattern recognition (psychology)Margin (machine learning)Deep learningMachine learningPhilosophyLinguisticsHuman Pose and Action RecognitionHuman Motion and AnimationAdvanced Vision and Imaging
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