Wheelchair movement based on convolution neural network

Joint Authors

Saud, Jamilah H.
Kudhir, Maisa A.
Hasan, Hani S.

Source

Engineering and Technology Journal

Issue

Vol. 39, Issue 6 (30 Jun. 2021), pp.1019-1030, 12 p.

Publisher

University of Technology

Publication Date

2021-06-30

Country of Publication

Iraq

No. of Pages

12

Main Subjects

Information Technology and Computer Science

Topics

Abstract EN

This paper intends to develop a methodology for helping amputees and crippled people old, by ongoing voice direction and association between patient and personal computer (PC) where these blends offer a promising response for helping the debilitated people.

The major objective of this work is accurately detected audio orders via a microphone of an English language (go, stop, right and left) in a noisy environment by the proposed system.

Thus, a patient that utilizes the proposed system can be controlling a wheelchair movement.

The venture depends on preparing an off-line dataset of audio files are included 10000 orders and background noise.

The proposed system has two important steps of preprocessing to get accurate of specific audio orders, accordingly, the accurate direction of wheelchair movement.

Firstly, a dataset was preprocessed to reduce ambient noise by using Butterworth (cutoff 500-5000 Hz) and Wiener filter.

Secondly, in the input (a microphone) of the proposed discriminative model put a procedure of infinite impulse response filter (Butterworth), passband filter for cutoff input microphone from 150-7000 Hz for back-off the loud and environment noise and local polynomial approximation (Savitzky-Golay) smoothing filter that plays out a polynomial regression on the signal values.

Thus, a better for filtering from ambient noise and keeping on a waveform from distortion that makes the discriminative model accurate when voice orders were recognized.

The proposed system can work with various situations and speeds for steering; forward, stop, left and right.

All datasets are trained by using deep learning with specific parameters of a convolutional neural network (CNN).

These capacities are dependent on code written in MATLAB.

The prototype uses Arduino UNO and a microphone This paper intends to develop a methodology for helping amputees and crippled people old, by ongoing voice direction and association between patient and personal computer (PC) where these blends offer a promising response for helping the debilitated people.

The major objective of this work is accurately detected audio orders via a microphone of an English language (go, stop, right and left) in a noisy environment by the proposed system.

Thus, a patient that utilizes the proposed system can be controlling a wheelchair movement.

The venture depends on preparing an off-line dataset of audio files are included 10000 orders and background noise.

The proposed system has two important steps of preprocessing to get accurate of specific audio orders, accordingly, the accurate direction of wheelchair movement.

Firstly, a dataset was preprocessed to reduce ambient noise by using Butterworth (cutoff 500-5000 Hz) and Wiener filter.

Secondly, in the input (a microphone) of the proposed discriminative model put a procedure of infinite impulse response filter (Butterworth), passband filter for cutoff input microphone from 150-7000 Hz for back-off the loud and environment noise and local polynomial approximation (Savitzky-Golay) smoothing filter that plays out a polynomial regression on the signal values.

Thus, a better for filtering from ambient noise and keeping on a waveform from distortion that makes the discriminative model accurate when voice orders were recognized.

The proposed system can work with various situations and speeds for steering; forward, stop, left and right.

All datasets are trained by using deep learning with specific parameters of a convolutional neural network (CNN).

These capacities are dependent on code written in MATLAB.

The prototype uses Arduino UNO and a microphone (MIC).

American Psychological Association (APA)

Hasan, Hani S.& Saud, Jamilah H.& Kudhir, Maisa A.. 2021. Wheelchair movement based on convolution neural network. Engineering and Technology Journal،Vol. 39, no. 6, pp.1019-1030.
https://search.emarefa.net/detail/BIM-1281560

Modern Language Association (MLA)

Hasan, Hani S.…[et al.]. Wheelchair movement based on convolution neural network. Engineering and Technology Journal Vol. 39, no. 6 (2021), pp.1019-1030.
https://search.emarefa.net/detail/BIM-1281560

American Medical Association (AMA)

Hasan, Hani S.& Saud, Jamilah H.& Kudhir, Maisa A.. Wheelchair movement based on convolution neural network. Engineering and Technology Journal. 2021. Vol. 39, no. 6, pp.1019-1030.
https://search.emarefa.net/detail/BIM-1281560

Data Type

Journal Articles

Language

English

Notes

Includes bibliographical references : p. 1029-1030

Record ID

BIM-1281560