A glove-based system for studying hand-object manipulation via joint pose and force sensing

Hangxin Liu, Xu Xie, Matt Millar, Mark Edmonds, Feng Gao, Yixin Zhu, V. Santos, B. Rothrock, Song-Chun Zhu
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引用次数: 33

Abstract

We present a design of an easy-to-replicate glove-based system that can reliably perform simultaneous hand pose and force sensing in real time, for the purpose of collecting human hand data during fine manipulative actions. The design consists of a sensory glove that is capable of jointly collecting data of finger poses, hand poses, as well as forces on palm and each phalanx. Specifically, the sensory glove employs a network of 15 IMUs to measure the rotations between individual phalanxes. Hand pose is then reconstructed using forward kinematics. Contact forces on the palm and each phalanx are measured by 6 customized force sensors made from Velostat, a piezoresistive material whose force-voltage relation is investigated. We further develop an open-source software pipeline consisting of drivers and processing code and a system for visualizing hand actions that is compatible with the popular Raspberry Pi architecture. In our experiment, we conduct a series of evaluations that quantitatively characterize both individual sensors and the overall system, proving the effectiveness of the proposed design.
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一个基于手套的系统,通过关节姿态和力传感来研究手-物体操作
我们设计了一种易于复制的基于手套的系统,该系统可以实时可靠地同时进行手部姿势和力的感知,以便在精细的操作动作中收集人手数据。该设计包括一个能够联合收集手指姿势、手部姿势以及手掌和各指骨受力数据的传感手套。具体来说,感官手套采用15个imu组成的网络来测量各个方阵之间的旋转。然后利用正运动学重构手部姿态。手掌和每个指骨上的接触力由6个定制的力传感器测量,该传感器由Velostat制成,这是一种压阻材料,其力-电压关系进行了研究。我们进一步开发了一个开源软件管道,包括驱动程序和处理代码,以及一个与流行的树莓派架构兼容的可视化手部动作系统。在我们的实验中,我们进行了一系列定量表征单个传感器和整个系统的评估,证明了所提出设计的有效性。
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