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POSEFusion: Pose-guided Selective Fusion for Single-view Human Volumetric Capture

Zhe Li, Tao Yu, Zerong Zheng, Kaiwen Guo, Yebin Liu

202130 citationsDOI

Abstract

We propose POseguided SElective Fusion (POSEFu-sion), a single-view human volumetric capture method that leverages tracking-based methods and tracking-free inference to achieve high-fidelity and dynamic 3D reconstruction. By contributing a novel reconstruction framework which contains pose-guided keyframe selection and robust implicit surface fusion, our method fully utilizes the advantages of both tracking-based methods and tracking-free inference methods, and finally enables the high-fidelity recon-struction of dynamic surface details even in the invisible regions. We formulate the keyframe selection as a dynamic programming problem to guarantee the temporal continuity of the reconstructed sequence. Moreover, the novel robust implicit surface fusion involves an adaptive blending weight to preserve high-fidelity surface details and an automatic collision handling method to deal with the potential self-collisions. Overall, our method enables high-fidelity and dynamic capture in both visible and invisible regions from a single RGBD camera, and the results and experiments show that our method outperforms state-of-the-art methods.

Topics & Concepts

Computer scienceArtificial intelligenceInferenceComputer visionTracking (education)High fidelityFidelityFusionElectrical engineeringLinguisticsTelecommunicationsPsychologyPhilosophyEngineeringPedagogyAdvanced Vision and Imaging3D Shape Modeling and AnalysisComputer Graphics and Visualization Techniques