Road Damage Detection using Deep Ensemble Learning
- URL: http://arxiv.org/abs/2011.00728v1
- Date: Fri, 30 Oct 2020 03:18:14 GMT
- Title: Road Damage Detection using Deep Ensemble Learning
- Authors: Keval Doshi, Yasin Yilmaz
- Abstract summary: We present an ensemble model for efficient detection and classification of road damages.
Our solution utilizes a state-of-the-art object detector known as You Only Look Once (YOLO-v4)
It was able to achieve an F1 score of 0.628 on the test 1 dataset and 0.6358 on the test 2 dataset.
- Score: 36.24563211765782
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Road damage detection is critical for the maintenance of a road, which
traditionally has been performed using expensive high-performance sensors. With
the recent advances in technology, especially in computer vision, it is now
possible to detect and categorize different types of road damages, which can
facilitate efficient maintenance and resource management. In this work, we
present an ensemble model for efficient detection and classification of road
damages, which we have submitted to the IEEE BigData Cup Challenge 2020. Our
solution utilizes a state-of-the-art object detector known as You Only Look
Once (YOLO-v4), which is trained on images of various types of road damages
from Czech, Japan and India. Our ensemble approach was extensively tested with
several different model versions and it was able to achieve an F1 score of
0.628 on the test 1 dataset and 0.6358 on the test 2 dataset.
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