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WAVELET ENERGIES AS A FEATURE AND THEIR IMPACT ON CLASSIFYING MOVEMENTS BASED ON sEMG

机译:小波能量作为特征及其对基于sEMG的运动分类的影响

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摘要

Surface Electromyography signal processing and classification is an issue that concerns a large number of research groups, demanding more accurate, simple and sophisticated feature extraction schemes in order to accomplish better performance in different applications, with a solid subject being the control of prosthetics since decades ago with early signs of satisfying accuracy. In this research, we investigate the effect of efficient feature extraction on the wavelet domain using the discrete Wavelet transformation (DWT), on NINAPPRO, a database of 27 subjects performing different sets of movements, which is available for researchers worldwide. Energy measures estimated on the wavelet domain is the novel set of features introduced in the sEMG signal analysis community is implemented and compared to already simple features of the time domain. The experimental results show the use of wavelet energies on the wavelet domain can significantly improve the classification challenge.
机译:表面肌电信号处理和分类是一个涉及许多研究小组的问题,为了在不同应用中实现更好的性能,需要更准确,简单和复杂的特征提取方案,自数十年前以来,就一直以假肢为控制对象具有令人满意的准确性的早期迹象。在这项研究中,我们研究了NINAPPRO上使用离散小波变换(DWT)进行的有效特征提取对小波域的影响,该数据库是由27个执行不同运动集的对象组成的数据库,可供全球研究人员使用。在小波域上估计的能量度量是在sEMG信号分析社区中引入的一组新颖的功能,已实现并与时域中已经很简单的功能进行了比较。实验结果表明,在小波域上使用小波能量可以显着改善分类挑战。

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