Lou Zhiyuan, Min Xue, Li Guanhan, Avery James, Stewart Rebecca
IEEE J Biomed Health Inform. 2024 Oct;28(10):5855-5864. doi: 10.1109/JBHI.2024.3417616. Epub 2024 Oct 3.
Gestures are composed of motion information (e.g. movements of fingers) and force information (e.g. the force exerted on fingers when interacting with other objects). Current hand gesture recognition solutions such as cameras and strain sensors primarily focus on correlating hand gestures with motion information and force information is seldom addressed. Here we propose a bio-impedance wearable that can recognize hand gestures utilizing both motion information and force information. Compared with previous impedance-based gesture recognition devices that can only recognize a few multi-degrees-of-freedom gestures, the proposed device can recognize 6 single-degree-of-freedom gestures and 20 multiple-degrees-of-freedom gestures, including 8 gestures in 2 force levels. The device uses textile electrodes, is benchmarked over a selected frequency spectrum, and uses a new drive pattern. Experimental results show that 179 kHz achieves the highest signal-to-noise ratio (SNR) and reveals the most distinct features. By analyzing the 49,920 samples from 6 participants, the device is demonstrated to have an average recognition accuracy of 98.96%. As a comparison, the medical electrodes achieved an accuracy of 98.05%.
手势由运动信息(如手指的动作)和力信息(如与其他物体交互时施加在手指上的力)组成。当前的手势识别解决方案,如摄像头和应变传感器,主要侧重于将手势与运动信息相关联,而很少涉及力信息。在此,我们提出一种生物阻抗可穿戴设备,它能够利用运动信息和力信息来识别手势。与之前基于阻抗的手势识别设备相比,之前的设备只能识别少数几个多自由度手势,而我们提出的设备能够识别6种单自由度手势和20种多自由度手势,包括8种具有两种力水平的手势。该设备使用纺织电极,在选定的频谱上进行基准测试,并采用一种新的驱动模式。实验结果表明,179千赫兹实现了最高的信噪比(SNR),并揭示了最明显的特征。通过分析来自6名参与者的49920个样本,该设备的平均识别准确率为98.96%。作为对比,医用电极的准确率为98.05%。