A Simple, Inexpensive, Wearable Glove with Hybrid Resistive‐Pressure Sensors for Computational Sensing, Proprioception, and Task Identification

Josie Hughes, A. Spielberg, Mark Chounlakone, Gloria Chang, W. Matusik, D. Rus
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引用次数: 43

Abstract

Wearable devices have many applications ranging from health analytics to virtual and mixed reality interaction, to industrial training. For wearable devices to be practical, they must be responsive, deformable to fit the wearer, and robust to the user's range of motion. Signals produced by the wearable must also be informative enough to infer the precise physical state or activity of the user. Herein, a fully soft, wearable glove is developed, which is capable of real‐time hand pose reconstruction, environment sensing, and task classification. The design is easy to fabricate using low cost, commercial off‐the‐shelf items in a manner that is amenable to automated manufacturing. To realize such capabilities, resisitive and fluidic sensing technologies with machine learning neural architectures are merged. The glove is formed from a conductive knit which is strain sensitive, providing information through a network of resistance measurements. Fluidic sensing captured via pressure changes in fibrous sewn‐in flexible tubes, measuring interactions with the environment. The system can reconstruct user hand pose and identify sensory inputs such as holding force, object temperature, conductability, material stiffness, and user heart rate, all with high accuracy. The ability to identify complex environmentally dependent tasks, including held object identification and handwriting recognition is demonstrated.
一种简单、廉价、可穿戴的混合电阻压力传感器手套,用于计算传感、本体感觉和任务识别
可穿戴设备有许多应用,从健康分析到虚拟和混合现实交互,再到工业培训。为了使可穿戴设备实用,它们必须具有响应性,可变形以适合佩戴者,并且对用户的活动范围具有鲁棒性。可穿戴设备产生的信号也必须有足够的信息来推断用户的精确身体状态或活动。在此,开发了一种全柔软的可穿戴手套,能够实时手部姿势重建,环境感知和任务分类。该设计易于制造,使用低成本,商业现货,以一种适合自动化制造的方式。为了实现这种能力,将电阻和流体传感技术与机器学习神经结构相结合。该手套由导电织物制成,该织物对应变敏感,通过电阻测量网络提供信息。通过纤维缝在柔性管中的压力变化捕获流体传感,测量与环境的相互作用。该系统可以重建用户的手部姿势,并识别诸如握持力、物体温度、导电性、材料刚度和用户心率等感官输入,所有这些都具有高精度。识别复杂的环境依赖任务的能力,包括持有的物体识别和手写识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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