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Empirical mode decomposition use in electroencephalography signal analysis for detection of starting and stopping intentions during gait cycle

机译:实验模式分解在脑电图信号分析中用于检测步态周期中的开始和停止意图

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Electroencephalography signals can be used to detect start and stop times of gait. This is useful for people who have lost or present serial low limb motor difficulties in order to work in conjunction with an exoskeleton. Normally, the frequency bands that are used to detect the gait or stop intentions are related to mu and beta frequency bands. However, in order to enhance the electroencephalography signal quality, it is necessary to increase the signal-to-noise ratio. In the paper, a former research is complemented with the use of different types of frequency and spatial filters. A multi resolution analysis tool based on Hilbert-Huang transform is also introduced as a new processing tool and its results discussed with the help of a recent developed comparison index.
机译:脑电图信号可用于检测步态的开始和停止时间。这对于失去或表现出下肢运动困难的人很有用,以便与外骨骼一起工作。通常,用于检测步态或停止意图的频段与mu和beta频段有关。然而,为了增强脑电图信号质量,需要增加信噪比。在本文中,以前的研究是对不同类型的频率和空间滤波器的使用的补充。还介绍了一种基于Hilbert-Huang变换的多分辨率分析工具作为一种新的处理工具,并在最近开发的比较索引的帮助下讨论了其结果。

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