基于体戴柔性天线的支持向量机手部运动识别

Subham Ghosh, B. Basu, Marami Das
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引用次数: 0

摘要

提出了一种基于微波信号的支持向量机人体活动识别技术。本文采用柔性贴片天线,利用其阻抗特性来检测不同的手部活动。将天线嵌入手上,以捕捉由于手部运动而引起的输入阻抗变化。该实验选取了六名老年受试者,并将贴片天线安装在他们的手腕上。收集并分析了六种不同手部活动的阻抗数据集,用于活动识别。采用离散小波变换(DWT)技术对实、虚阻抗数据集进行特征提取。采用监督模型对原始数据集和增强数据集进行分析。支持向量机在原始数据集上的分类准确率为90.62%,而支持向量机结合数据增强和DWT技术的分类准确率高达95%。此外,实验显示,六个人中有两人患有震颤疾病,两人患有轻微的震颤,这可能是神经系统疾病的迹象。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Support Vector Machine to Recognize Hand Motions Using Body Worn Flexible Antenna
Microwave signal based human activity recognition technique using Support Vector Machine (SVM) is proposed in the paper. The paper has employed a flexible patch antenna and exploited the impedance characteristics for the detection of different hand activities. The antenna is embedded on hand to capture the variation of the input impedance due to the hand motions. The experiment has considered six elderly subjects and attached the patch antennas to their wrists. The impedance data sets for six different hand activities are collected and analyzed for activity recognition. The Discrete Wavelet Transform (DWT) technique is used for extracting the features from the real and imaginary impedance data set. A supervised model is employed to analyze the original and the augmented data sets. Application of SVM on the raw data sets bestows 90.62% classification accuracy whereas using the support vector machine combined with data augmentation and DWT technique offers classification accuracy up to 95%. Moreover, the experiments reveal that out of six people two have a tremoring illness and two are suffering from slight tremors which may be an indication of a neurological disorder.
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