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http://dx.doi.org/10.22156/CS4SMB.2021.11.07.014

AutoML and CNN-based Soft-voting Ensemble Classification Model For Road Traffic Emerging Risk Detection  

Jeon, Byeong-Uk (Division of AI Computer Science and Engineering, Kyonggi University)
Kang, Ji-Soo (Department of Computer Science, Kyonggi University)
Chung, Kyungyong (Division of AI Computer Science and Engineering, Kyonggi University)
Publication Information
Journal of Convergence for Information Technology / v.11, no.7, 2021 , pp. 14-20 More about this Journal
Abstract
Most accidents caused by road icing in winter lead to major accidents. Because it is difficult for the driver to detect the road icing in advance. In this work, we study how to accurately detect road traffic emerging risk using AutoML and CNN's ensemble model that use both structured and unstructured data. We train CNN-based road traffic emerging risk classification model using images that are unstructured data and AutoML-based road traffic emerging risk classification model using weather data that is structured data, respectively. After that the ensemble model is designed to complement the CNN-based classification model by inputting probability values derived from of each models. Through this, improves road traffic emerging risk classification performance and alerts drivers more accurately and quickly to enable safe driving.
Keywords
Traffic Safety; Road Traffic Emerging Risk; Machine Learning; CNN; AutoML; Ensemble Model;
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