Real-Time Pothole Detection Using Deep Learning
- URL: http://arxiv.org/abs/2107.06356v1
- Date: Tue, 13 Jul 2021 19:36:34 GMT
- Title: Real-Time Pothole Detection Using Deep Learning
- Authors: Anas Al Shaghouri, Rami Alkhatib, Samir Berjaoui
- Abstract summary: This study deployed and tested on different deep learning architecture to detect potholes.
The images used for training were collected by cellphone mounted on the windshield of the car.
The system was able to detect potholes from a range on 100 meters away from the camera.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Roads are connecting line between different places, and used daily. Roads'
periodic maintenance keeps them safe and functional. Detecting and reporting
the existence of potholes to responsible departments can help in eliminating
them. This study deployed and tested on different deep learning architecture to
detect potholes. The images used for training were collected by cellphone
mounted on the windshield of the car, in addition to many images downloaded
from the internet to increase the size and variability of the database. Second,
various object detection algorithms are employed and compared to detect
potholes in real-time like SDD-TensorFlow, YOLOv3Darknet53 and YOLOv4Darknet53.
YOLOv4 achieved the best performance with 81% recall, 85% precision and 85.39%
mean Average Precision (mAP). The speed of processing was 20 frame per second.
The system was able to detect potholes from a range on 100 meters away from the
camera. The system can increase the safety of drivers and improve the
performance of self-driving cars by detecting pothole time ahead.
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