Gesture Segmentation and Recognition with an EMG-Based Intimate Approach - An Accuracy and Usability Study

F. Carrino, A. Ridi, E. Mugellini, Omar Abou Khaled, R. Ingold
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引用次数: 7

Abstract

In this paper we propose an approach to address the gesture segmentation issue, an important concern strongly related to the gesture recognition field. Gesture segmentation has two main goals: first, detecting when a gesture begins and ends, second, understanding whether a gesture is meant to be meaningful for the machine or is a non-command gesture (such as gesticulation). This work proposes a novel hands-free, always-available approach for the gesture segmentation and recognition in which the user can communicate directly to the system through a wearable and "intimate" interface based on electromyography signals (EMG). The system addresses the well-known "gorilla-arm" problem recognizing subtle gestures and segmenting them through motionless gestures. We report experimental results indicating that the system is able to reliably detect and recognize subtle gestures, with minimal training across users with different muscle volumes, representing a consistent gesture segmentation approach. Finally, the usability tests showed that the system is easy to use and the subjects felt quickly confident with its utilization.
基于肌电图亲密度方法的手势分割和识别——准确性和可用性研究
在本文中,我们提出了一种方法来解决手势分割问题,这是一个与手势识别领域密切相关的重要问题。手势分割有两个主要目标:第一,检测一个手势何时开始和结束;第二,理解一个手势对机器来说是有意义的,还是一个非命令手势(比如手势)。这项工作提出了一种新颖的免提,始终可用的手势分割和识别方法,用户可以通过基于肌电信号(EMG)的可穿戴和“亲密”界面直接与系统通信。该系统解决了众所周知的“大猩猩手臂”问题,即识别细微的手势,并通过静止的手势对其进行分割。我们报告的实验结果表明,该系统能够可靠地检测和识别细微的手势,在不同肌肉体积的用户中进行最少的训练,代表了一致的手势分割方法。最后,通过可用性测试表明,系统易于使用,被试很快就对系统的使用产生了信心。
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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