使用带有自动编码器的半监督多层神经网络进行基于 sEMG 的手势分类

Hussein Naser , Hashim A. Hashim
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引用次数: 0

摘要

本研究提出了一种带有自动编码器的半监督多层神经网络(MLNN),用于开发从肌电图(EMG)信号识别手势的分类模型。使用配备了八个非侵入性表面安装生物传感器的 Myo 臂带,采集了与五种手势相对应的原始表面肌电(sEMG)传感器数据:握拳、张开手、挥手、挥手和双击。传感器采集的数据经过了预处理、特征提取、标签分配和数据集整理,以完成分类任务。在结合自动编码器生成的合成 sEMG 数据后,模型的实施、验证和测试证明了其有效性。与文献中最先进的技术相比,所提出的模型表现出强劲的性能,在训练、验证和测试过程中分别达到了 99.68%、100% 和 99.26% 的准确率。相比之下,所提出的带有自动编码器的 MLNN 模型优于为比较评估而建立的 K 近邻模型。
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sEMG-based hand gestures classification using a semi-supervised multi-layer neural networks with Autoencoder

This work presents a semi-supervised multilayer neural network (MLNN) with an Autoencoder to develop a classification model for recognizing hand gestures from electromyographic (EMG) signals. Using a Myo armband equipped with eight non-invasive surface-mounted biosensors, raw surface EMG (sEMG) sensor data were captured corresponding to five hand gestures: Fist, Open hand, Wave in, Wave out, and Double tap. The sensor collected data underwent preprocessing, feature extraction, label assignment, and dataset organization for classification tasks. The model implementation, validation, and testing demonstrated its efficacy after incorporating synthetic sEMG data generated by an Autoencoder. In comparison to the state-of-the-art techniques from the literature, the proposed model exhibited strong performance, achieving accuracy of 99.68%, 100%, and 99.26% during training, validation, and testing, respectively. Comparatively, the proposed MLNN with Autoencoder model outperformed a K-Nearest Neighbors model established for comparative evaluation.

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