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http://dx.doi.org/10.3745/KTSDE.2021.10.8.301

Proposed TATI Model for Predicting the Traffic Accident Severity  

Choo, Min-Ji (숙명여자대학교 IT공학과)
Park, So-Hyun (숙명여자대학교 빅데이터활용 연구센터)
Park, Young-Ho (숙명여자대학교 IT공학과)
Publication Information
KIPS Transactions on Software and Data Engineering / v.10, no.8, 2021 , pp. 301-310 More about this Journal
Abstract
The TATI model is a Traffic Accident Text to RGB Image model, which is a methodology proposed in this paper for predicting the severity of traffic accidents. Traffic fatalities are decreasing every year, but they are among the low in the OECD members. Many studies have been conducted to reduce the death rate of traffic accidents, and among them, studies have been steadily conducted to reduce the incidence and mortality rate by predicting the severity of traffic accidents. In this regard, research has recently been active to predict the severity of traffic accidents by utilizing statistical models and deep learning models. In this paper, traffic accident dataset is converted to color images to predict the severity of traffic accidents, and this is done via CNN models. For performance comparison, we experiment that train the same data and compare the prediction results with the proposed model and other models. Through 10 experiments, we compare the accuracy and error range of four deep learning models. Experimental results show that the accuracy of the proposed model was the highest at 0.85, and the second lowest error range at 0.03 was shown to confirm the superiority of the performance.
Keywords
TATI; Color Representation; Severity Prediction; Traffic Accident;
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