Litcius/Paper detail

Wheelchair Free Hands Navigation Using Robust DWT_AR Features Extraction Method With Muscle Brain Signals

Zaineb M. Alhakeem, Ramzy S. Ali, Raed A. Abd‐Alhameed

2020IEEE Access15 citationsDOIOpen Access PDF

Abstract

Researchers try to help disabled people by introducing some innovative applications to support and assess their life. The Brain-Computer Interface (BCI) application that covers both hardware and software models, is considered in this work. BCI is implemented based on brain signals to be converted to commands. To increase the number of commands, non-brain source signals are used, such as eye-blinking, teeth clenching, jaw squeezing, and other movements. This paper introduced a low dimensions robust method to detect the eye-blinks and jaw squeezing; so that the method can be applied to drive a wheelchair by using five commands. Our approach is used Discrete Wavelet Transform with Autoregressive to extract the signal’s features. These features are classified by using a linear Support Vector Machine (SVM) classifier. The present method detects every testing sample using a small training set to test and drive a powered wheelchair. The proposed method is fully implemented practically based on binary-coded commands.

Topics & Concepts

WheelchairComputer scienceBrain–computer interfaceSupport vector machineAutoregressive modelArtificial intelligenceDiscrete wavelet transformFeature extractionInterface (matter)Pattern recognition (psychology)SoftwareBinary classificationClassifier (UML)Computer visionSpeech recognitionWavelet transformWaveletElectroencephalographyMathematicsMaximum bubble pressure methodParallel computingProgramming languagePsychologyPsychiatryBubbleEconometricsWorld Wide WebEEG and Brain-Computer InterfacesGaze Tracking and Assistive TechnologyNeuroscience and Neural Engineering