3 research outputs found
Implementation of a real-time automatic onset time detection for surface electromyography measurement systems using NI myRIO
For using surface electromyography (sEMG) in various applications, the
process consists of three parts: an onset time detection for detecting the
first point of movement signals, a feature extraction for extracting the
signal attribution, and a feature classification for classifying the sEMG
signals. The first and the most significant part that influences the
accuracy of other parts is the onset time detection, particularly for
automatic systems. In this paper, an automatic and simple algorithm for the
real-time onset time detection is presented. There are two main processes in
the proposed algorithm; a smoothing process for reducing the noise of the
measured sEMG signals and an automatic threshold calculation process for
determining the onset time. The results from the algorithm analysis
demonstrate the performance of the proposed algorithm to detect the sEMG
onset time in various smoothing-threshold equations. Our findings reveal
that using a simple square integral (SSI) as the smoothing-threshold
equation with the given sEMG signals gives the best performance for the
onset time detection. Additionally, our proposed algorithm is also
implemented on a real hardware platform, namely NI myRIO. Using the
real-time simulated sEMG data, the experimental results guarantee that the
proposed algorithm can properly detect the onset time in the real-time
manner