A Study on Building a “Real-Time Vehicle Accident and Road Obstacle Notification Model” Using AI CCTV
2021; Multidisciplinary Digital Publishing Institute; Volume: 11; Issue: 17 Linguagem: Inglês
10.3390/app11178210
ISSN2076-3417
AutoresChaeyoung Lee, Hyomin Kim, Se Jong Oh, Ill Chul Doo,
Tópico(s)Diverse Topics in Contemporary Research
ResumoThis research produced a model that detects abnormal phenomena on the road, based on deep learning, and proposes a service that can prevent accidents because of other cars and traffic congestion. After extracting accident images based on traffic accident video data by using FFmpeg for model production, car collision types are classified, and only the head-on collision types are processed by using the deep learning object-detection algorithm YOLO (You Only Look Once). Using the car accident detection model that we built and the provided road obstacle-detection model, we programmed, for when the model detects abnormalities on the road, warning notification and photos that captures the accidents or obstacles, which are then transferred to the application. The proposed service was verified through application notification simulations and virtual experiments using CCTVs in Daegu, Busan, and Gwangju. By providing services, the goal is to improve traffic safety and achieve the development of a self-driving vehicle sector. As a future research direction, it is suggested that an efficient CCTV control system be introduced for the transportation environment.
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