Title: "Linear and non-linear classification of EMG signals for probable applications in designing control system for assistive aids"
Abstract: EMG signal was acquired by placing electrodes on the surface of forearm muscle. The acquisition is made possible using a bio-potential amplifier (Gain ≈ 2500 with a cut off frequency of 1500Hz). The acquired EMG signal was processed further, so that the EMG signal can be classified into their corresponding category. By using the raw EMG signal, the envelope of the signal were detected, then original EMG signal were extracted, later the extracted EMG signal was Wavelet processed. For preforming the classification, the features were extracted. By using the extracted features, Offline and Online classifications were performed. The results showed an accuracy of >95% (overall). For improving the performance of the classification, Boolean change state logic and Hall Effect sensor were used to design the control system.
[To View the thesis: Uv-M.Tech Thesis (drive) or http://ethesis.nitrkl.ac.in/7985/]
Supervisor: Prof. Kunal Pal, Dept of Biotechnology and Medical Engineering, NITRKL
Research outcome: Working model video @Youtube & 2 Book Chapters# (Published).