Deep learning-based real-time pothole detection for avoiding road accident
Date
2022-01Publisher
Brac UniversityAuthor
Basher, RafsanAyon, Asif Raihan
Gharamy, Avijit
Zayed, Abdullah Al
Zaman, Md Samin Yeasar Ibna
Metadata
Show full item recordAbstract
Bangladesh is a fast-developing country, and the number of roads increasing with it
is immense. With the ever-growing amount of road comes the age-old problem of
a pothole. This paper represents a model of deep learning-based, real-time pothole
detection for finding and avoiding road accidents. Any types of image processingbased
detection, in this case, pothole detection, are done through various steps. For
example, collecting data sets is one of the most crucial steps to create any recognition
system. Labeling an image means pinpointing the subject which we will be trying to
find. Training the algorithm through those images to detect the subjects is critical
in detecting potholes. In this research paper, to detect potholes from real-time
videos, firstly, we collected data sets containing more than 600 images of potholes.
After that, we labeled those images through labeling software. Then in chapter-1 we
used those images to train the model (MobileNet, Inception-v3) which was detecting
potholes from still photos given to it. Next, we used YOLOv5 to detect potholes
from real-time feeds. In this proposed system, by using the real-time feed, potholes
will be detected. Moreover, this will help the masses to detect potholes on roads to
avoid accidents, and it will also help people related to the road works to find the
potholes for further road maintenance.