Abstract:
The development of walking guides has become a prominent research due to the rapid
growth of visually impaired people in recent decades. Although numerous systems have been
developed to aid the visually impaired people, a considerable portion of these are limited in
their scopes. This thesis has implemented a spectacle prototype to assist these individuals
with safe and efficient walking in the surrounding’s environment. The spectacle prototype is
modeled in SolidWorks (3D model) considering the dimension of each electronic
components. In the modeling, the front ultrasonic sensor is positioned in the spectacle to
detect the front obstacles only, the left and right ultrasonic sensors are set to 45 degree from
the spectacle center point in order to detect obstacles within the shoulder and arm of user;
another ultrasonic sensor is positioned towards the ground facing for the detection of pothole.
The Rpi camera is positioned at the center point of the spectacle. In addition, the right and
left temple of the spectacle is designed to position the raspberry pi and battery respectively.
The usage of spectacle based walking guide would help the visually impaired people to scan
the surroundings. Three pieces of distance measurement sensors (ultrasonic sensor) is used
in the walking guide in order to detect the obstacle in each direction including front, left and
right. In addition, the system detects the potholes on the road surface using sensor and
convolutional neural network (CNN). Overall, the spectacle prototype consists of four
ultrasonic sensors; raspberry pi, Rpi camera and battery. CNN technique, runs on raspberry
pi, is used to detect the pothole on the road surface. The pothole images are trained initially
using convolutional neural network in a host computer and the potholes are detected by
capturing a single image each time. The experimental study demonstrates that 98.73%
accuracy is achieved by the front sensor with an error rate of 1.26% when the obstacle is at
50 cm distance. In addition, the results reveal that the system obtains the highest accuracy,
precision and recall 92.67%, 92.33% and 93% respectively for potholes detection. The
electronic spectacle gives a direct audio signal to the user via headphone for avoiding
hindrances effectively.
Description:
This thesis is submitted to the Department of Computer Science and Engineering, Khulna University of Engineering & Technology in partial fulfillment of the requirements for the degree of Master of Science in Computer Science and Engineering, March 2019.
Cataloged from PDF Version of Thesis.
Includes bibliographical references (pages 75-88).