Voice Controlled Wheelchair for Disabled Patients based on CNN and LSTM
Abstract
Disabled patients with reduced mobility due to
health problems such as disability, injury, paralysis, or other
factors will experience difficulty in movement. They need tools
that can help them, in which the most widely used is a
wheelchair. The main objective of this research is to control
wheelchair motion with voice commands. There are five
commands for wheelchair control: forward, backward, right,
left, and stop. Voice data is obtained from recording several
subjects using Sound Recorder Pro and Sox Sound Exchange.
The voice commands for wheelchair navigation were identified
using Convolutional Neural Network (CNN) and Long Short-
Term Memory (LSTM) combination embedded in Raspberry Pi
3. Voice data is first converted to spectrogram images before
being fed into CNN using Mel-Frequency Cepstrum Coefficients
(MFCC). This system can be controlled by simple voice
commands given by the user. This method is proven to be useful
in speech recognition with an accuracy level using CNN-LSTM
above 97.80 %. Preliminary experimental results indicate that
voice commands in wheelchairs using the CNN-LSTM can be
recognized well.
Collections
- LSP-Conference Proceeding [1874]