Estimation of Finger Joint Angle based on Surface Electromyography Signal using Long Short-Term Memory
Date
2020-11-18Author
ANAM, Khairul
MUTTAQIN, Aris Zainul
SWASONO, Dwiretno Istiyadi
AVIAN, Cries
ISMAIL, Harun
Metadata
Show full item recordAbstract
The presence of hand plays a vital role. Without a hand, humans experience difficulties
in their activities. As a result, several solutions have emerged to overcome this problem,
especially finger movement regression using electromyography (EMG) signals for
specific movements such as extension/flexion. Therefore, this study proposes a
regression task on surface EMG (sEMG) collected from double Myo-Armband on finger
movements. This experiment uses feature extraction of Mean Absolute Value (MAV)
and Root Mean Square (RMS). Dimensionality reduction is then conducted to speed up
the regression process using Principle Component Analysis (PCA), Independent
Component Analysis (ICA), Non-Matrix Factorization (NMF), and Linear Discriminant
Analysis (LDA). The last is estimating angle finger joint using Long Short-Term Memory
(LSTM). The results show that the best performance is in the RMS and PCA features
with an R-Square value of 0.874, and ICA and RMS perform the fastest time with an RSquare
value of 0.871.
Collections
- LSP-Conference Proceeding [1874]