ROJun 4, 2012

Synergy-Based Hand Pose Sensing: Optimal Glove Design

arXiv:1206.0556v149 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of improving hand pose sensing devices for applications like robotics or VR, but it is incremental as it builds on prior research on reconstruction accuracy.

The paper tackles the problem of designing optimal sensor placement on a glove for hand pose sensing by maximizing information about hand posture given a priori statistical data and a fixed number of measurements, with simulations demonstrating effective reconstruction performance.

In this paper we study the problem of improving human hand pose sensing device performance by exploiting the knowledge on how humans most frequently use their hands in grasping tasks. In a companion paper we studied the problem of maximizing the reconstruction accuracy of the hand pose from partial and noisy data provided by any given pose sensing device (a sensorized "glove") taking into account statistical a priori information. In this paper we consider the dual problem of how to design pose sensing devices, i.e. how and where to place sensors on a glove, to get maximum information about the actual hand posture. We study the continuous case, whereas individual sensing elements in the glove measure a linear combination of joint angles, the discrete case, whereas each measure corresponds to a single joint angle, and the most general hybrid case, whereas both continuous and discrete sensing elements are available. The objective is to provide, for given a priori information and fixed number of measurements, the optimal design minimizing in average the reconstruction error. Solutions relying on the geometrical synergy definition as well as gradient flow-based techniques are provided. Simulations of reconstruction performance show the effectiveness of the proposed optimal design.

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