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A Fully Embedded Adaptive Real-Time Hand Gesture Classifier Leveraging HD-sEMG and Deep Learning

机译:完全嵌入的自适应实时手势分类器利用高清和深度学习

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摘要

This paper presents a real-time fine gesture recognition system for multi-articulating hand prosthesis control, using an embedded convolutional neural network (CNN) to classify hand-muscle contractions sensed at the forearm. The sensor consists in a custom non-intrusive, compact, and easy-to-install 32-channel high-density surface electromyography (HDsEMG) electrode array, built on a flexible printed circuit board (PCB) to allow wrapping around the forearm. The sensor provides a low-noise digitization interface with wireless data transmission through an industrial, scientific and medical (ISM) radio link. An original frequency-time-space cross-domain preprocessing method is proposed to enhance gesture-specific data homogeneity and generate reliable muscle activation maps, leading to 98.15% accuracy when using a majority vote over 5 subsequent inferences by the proposed CNN. The obtained real-time gesture recognition, within 100 to 200 ms, and CNN properties show reliable and promising results to improve on the state-of-the-art of commercial hand prostheses. Moreover, edge computing using a specialized embedded artificial intelligence (AI) platform ensures reliable, secure and low latency real-time operation as well as quick and easy access to training, fine-tuning and calibration of the neural network. Co-design of the signal processing, AI algorithms and sensing hardware ensures a reliable and power-efficient embedded gesture recognition system.
机译:本文介绍了用于多关节手势识别系统的用于多关节手术识别系统,使用嵌入的卷积神经网络(CNN)来分类在前臂上感测的手肌收缩。该传感器在定制的非侵入式,紧凑且易于安装的32通道高密度表面电拍(HDSEMG)电极阵列中,内置于柔性印刷电路板(PCB)上,以允许围绕前臂包裹。该传感器通过工业,科学和医疗(ISM)无线电链路提供具有无线数据传输的低噪声数字化接口。提出了原始渐变空间跨域预处理方法,以增强特定的姿态数据均匀性并产生可靠的肌肉激活图,从而在所提出的CNN的5次后续推论中使用多数投票时,精度为98.15%。获得的实时手势识别在100至200毫秒内,CNN属性显示可靠和有希望的结果,以改善商业手伪体的最先进。此外,使用专用嵌入式人工智能(AI)平台的边缘计算可确保可靠,安全和低延迟的实时操作,以及快速方便地访问神经网络的训练,微调和校准。信号处理的共同设计,AI算法和传感硬件确保了一种可靠且功率高效的嵌入手势识别系统。

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