手势识别智能手环

Yuanjie Xia, H. Heidari, R. Ghannam
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引用次数: 1

摘要

本文旨在设计一种用于手势识别的智能手环。通过FSR传感器测量腕部肌腱运动作为输入变量,对不同的手势进行分类。采用聚二甲基硅氧烷材料(PDMS)封装FSR传感器,使腕带具有柔韧性,适合不同腕部尺寸的人群使用。随后,传感器数据通过蓝牙低功耗(BLE)技术传输到计算机。利用MATLAB对集成子空间判别算法进行分类器训练。然后,用训练好的分类器对接收到的信号进行处理并进行预测。准确率约为99.4%。此外,本文还探讨了扭腕对预测精度的影响。结果表明,不同角度的手势被分类为不同的手势。总的来说,这款手环是可充电的、便携的,可以准确识别6种以上的手势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smart Wristband for Gesture Recognition
This paper aim to design a smart wristband for gesture recognition. Tendon movements around the wrist were measured by FSR sensors as input variables to classify different gestures. Polydimethylsiloxane material (PDMS) was applied to encapsulate FSR sensors, so that the wristband is flexible and suitable for people with different wrist sizes. Subsequently, the sensor data was transmitted to the computer via Bluetooth low energy (BLE) technology. MATLAB was used to train a classifier with ensemble subspace discrimination algorithm. After that, the received signal was processed by this trained classifier and made prediction. The accuracy is about 99.4%. Additionally, the paper explored how predict accuracy would be impacted when twisting the wrist. The result showed that a gesture in different angles was classified as different gestures. Overall, the wristband is rechargeable, portable and can accurately recognize over 6 gestures.
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