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Hand gesture recognition system using single-mixture source separation and flexible neural trees

机译:利用单混合源分离和柔性神经树的手势识别系统

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摘要

Surface Electromyography (sEMG) is widely used in evaluating the functional status of hands to assist in hand gesture recognition in many fields of treatment and rehabilitation. Multi-channel parallel interfaces (MCPIs) or time-division multiple access (TDMA) interfaces are the main technologies for the man-machine communication medium of sEMG recognition instruments. However, they can also result in a complex circuit connection and noise interference. A hand gesture recognition model based on sEMG signals by using single-mixture source separation and flexible neural trees (FNTs) is a breakthrough model of hand gesture recognition designed to conquer the above defects. It distinguishes itself from the traditional MCPI or TDMA interfaces by more accurate and reliable measurements of signals. Single-mixture source separation by use of ensemble empirical mode decomposition (EEMD), principal component analysis (PCA) and independent component analysis (ICA) is a novel single-input multiple-output (SIMO) blind separation method, which can simplify the two interfaces described above. The FNT model is generated and evolved based on the pre-defined simple instruction sets, which can solve the highly structure dependent problem of the artificial neural network. The testing has been conducted using several experiments conducted with five participants. The EEMD-PCA-ICA algorithm can blind separate single mixed signals with higher cross-correlation and lower relative root mean squared error. The results indicate that the model is able to classify four different hand gestures up to 97.48% accuracy.
机译:表面肌电图(sEMG)被广泛用于评估手的功能状态,以在许多治疗和康复领域中协助手势识别。多通道并行接口(MCPI)或时分多址(TDMA)接口是sEMG识别工具的人机通信介质的主要技术。但是,它们也可能导致复杂的电路连接和噪声干扰。通过使用单混合源分离和柔性神经树(FNT)基于sEMG信号的手势识别模型是旨在克服上述缺陷的手势识别的突破性模型。它通过更精确和可靠的信号测量与传统的MCPI或TDMA接口区别开来。通过集成经验模式分解(EEMD),主成分分析(PCA)和独立成分分析(ICA)进行单混合物源分离是一种新颖的单输入多输出(SIMO)盲分离方法,可以简化两者上述接口。 FNT模型是基于预定义的简单指令集生成和演化的,可以解决人工神经网络高度依赖结构的问题。测试是通过对五个参与者进行的几次实验进行的。 EEMD-PCA-ICA算法可以盲分离具有较高互相关和较低相对均方根误差的单个混合信号。结果表明,该模型能够对四种不同的手势进行分类,准确性高达97.48%。

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