可穿戴计算机
解耦(概率)
计算机科学
剪切力
触觉技术
材料科学
虚拟现实
触觉传感器
可穿戴技术
运动控制
声学
信号(编程语言)
模拟
剪切(地质)
剪切(物理)
控制器(灌溉)
无线
干扰(通信)
人工智能
软机器人
计算机视觉
增强现实
接近传感器
作者
Woosung Cho,YoungHyun Lee,Taeyeong Kim,Jun Choi,Dongguen Kim,Minwoo Chae,Chaeyong Park,Wonjeong Suh,Unyong Jeong
标识
DOI:10.1021/acsami.5c19893
摘要
When soft wearable electronic devices are deployed on the body, body motion-induced artifacts pose a major challenge for accurately decoupling concurrent stimuli such as normal, shear forces, and elongational strain. This study introduces an ion-based multimodal sensor architecture augmented by machine learning algorithms to effectively differentiate the stimuli and compensate for motion-induced signal artifacts. By integrating a tailored sensor design with advanced algorithmic processing, the sensor reliably detects intentional forces across a broad range (normal force = 1.5-4 N, and 21 discrete shearing positions), while suppressing interference caused by skin strain. We fabricated a customized wireless wrist-mounted device to control the presentation screen in virtual reality conference. This approach maintains a high accuracy of 98.6%, even under 10% tensile strain applied to the wrist. The resulting robust, real-time force sensing capability is critical for wearable VR/AR controllers and other human-machine interfaces that demand precise interaction unaffected by motion artifacts.
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