3D Human Mesh Estimation from Single View RGBD
Ozhan Suat, Bedirhan Uguz, Batuhan Karagoz, Muhammed Can Keles, Emre Akbas

TL;DR
This paper introduces M$^3$, a novel method for accurate 3D human mesh estimation from single RGBD images, leveraging synthetic data and masked autoencoders to improve performance over existing approaches.
Contribution
The paper presents a fully supervised approach using synthetic partial meshes and a masked autoencoder to estimate complete 3D human meshes from RGBD data, addressing data scarcity issues.
Findings
Achieves 16.8 mm PVE on SURREAL dataset.
Outperforms existing methods on CAPE and BEHAVE datasets.
Demonstrates the effectiveness of depth data in 3D human mesh estimation.
Abstract
Despite significant progress in 3D human mesh estimation from RGB images; RGBD cameras, offering additional depth data, remain underutilized. In this paper, we present a method for accurate 3D human mesh estimation from a single RGBD view, leveraging the affordability and widespread adoption of RGBD cameras for real-world applications. A fully supervised approach for this problem, requires a dataset with RGBD image and 3D mesh label pairs. However, collecting such a dataset is costly and challenging, hence, existing datasets are small, and limited in pose and shape diversity. To overcome this data scarcity, we leverage existing Motion Capture (MoCap) datasets. We first obtain complete 3D meshes from the body models found in MoCap datasets, and create partial, single-view versions of them by projection to a virtual camera. This simulates the depth data provided by an RGBD camera from a…
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Taxonomy
TopicsHuman Pose and Action Recognition · Context-Aware Activity Recognition Systems · 3D Shape Modeling and Analysis
