Image Data Augmentation and Detection Study for Pothole Detection Algorithm

Citations

SCOPUS

3

초록

This study aims to develop a pothole detection system as an auxiliary tool for ensuring a safe driving environment, enhancing driver safety, and preventing accidents. Potholes are depressions on the road surface, and the number of traffic accidents caused by potholes is increasing yearly. A large-scale pothole image dataset is required for effective pothole detection, but building it requires significant time and money. Recently, pothole image data has been significantly lacking, and the need to develop a dataset for efficient pothole detection research is emerging. The study's details are outlined as follows: a pothole image dataset is developed for effective pothole detection. 300 images with potholes are collected using a map application's load view feature. The dataset is then expanded to 2,700 images by diversifying pothole types and applying image augmentation through a generated model on the collected data. Following this, a system is proposed to enhance the accuracy of pothole detection and identify potholes. This study addresses the challenges of manpower and time required for data collection. The development of large-scale datasets can contribute significantly to the enhancement of pothole detection and related research. Future research aims to develop a real-time pothole detection system to prevent accidents caused by potholes while driving. © 2023 IEEE.

키워드

Data AugmentationImage DetectionPothole
제목
Image Data Augmentation and Detection Study for Pothole Detection Algorithm
저자
Hong, JisooJung, YoungjinWoo, Kang Sung
DOI
10.1109/BigData59044.2023.10386900
발행일
2023
유형
Conference paper
저널명
Proceedings - 2023 IEEE International Conference on Big Data, BigData 2023
페이지
6162 ~ 6164