DOIONLINE

DOIONLINE NO - IJEEDC-IRAJ-DOIONLINE-13001

Publish In
International Journal of Electrical, Electronics and Data Communication (IJEEDC)-IJEEDC
Journal Home
Volume Issue
Issue
Volume-6,Issue-7  ( Jul, 2018 )
Paper Title
Classification Electromyography Sensor for Hand Gesture Recognition with Neural Network using Correlation-based Feature Selection
Author Name
Farouq Faisal Anam, Handri Santoso
Affilition
Ph.D Human Computer Interaction -Surya University, Fakultas Ilmu Komputer - Universitas Bandar Lampung
Pages
10-14
Abstract
In this paper, we will present a research about hand gesture pattern recognition using electromyography sensors. Data collection process will take 100 samples in time domain data for each gesture, then transformed into frequency domain data and feature extraction to get 18 features. After getting the features, we will perform feature selection with Correlationbased Feature Selection (CFS) to reduce the total features and improve the accuracy of the classification algorithm used, which is the neural network. The analysis process will show the accuracy value of gestures used. Index Terms- Electromyography Sensor, Feature Selection, Neural Network, Pattern Recognition.
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