HMDO: Markerless Multi-view Hand Manipulation Capture with Deformable Objects
Wei Xie, Zhipeng Yu, Zimeng Zhao, Binghui Zuo, Yangang Wang

TL;DR
This paper introduces HMDO, a novel markerless multi-view dataset capturing hand interactions with deformable objects, and proposes a method to accurately reconstruct these complex interactions.
Contribution
The paper presents the first dataset of its kind for hand-deformable object interactions and a new annotation method leveraging hand features for improved reconstruction.
Findings
High-quality reconstruction of hand and deformable object interactions.
The dataset contains 21,600 frames across 12 sequences.
The proposed method effectively handles occlusion and deformation challenges.
Abstract
We construct the first markerless deformable interaction dataset recording interactive motions of the hands and deformable objects, called HMDO (Hand Manipulation with Deformable Objects). With our built multi-view capture system, it captures the deformable interactions with multiple perspectives, various object shapes, and diverse interactive forms. Our motivation is the current lack of hand and deformable object interaction datasets, as 3D hand and deformable object reconstruction is challenging. Mainly due to mutual occlusion, the interaction area is difficult to observe, the visual features between the hand and the object are entangled, and the reconstruction of the interaction area deformation is difficult. To tackle this challenge, we propose a method to annotate our captured data. Our key idea is to collaborate with estimated hand features to guide the object global pose…
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Taxonomy
TopicsHuman Pose and Action Recognition · Hand Gesture Recognition Systems · Robot Manipulation and Learning
