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The Detection of Black Ice Accidents for Preventative Automated Vehicles Using Convolutional Neural Networks 원문보기

Electronics, v.9 no.12, 2020년, pp.2178 -   

Lee, Hojun ,  Kang, Minhee ,  Song, Jaein ,  Hwang, Keeyeon

Abstract AI-Helper 아이콘AI-Helper

Automated Vehicles (AVs) are expected to dramatically reduce traffic accidents that have occurred when using human driving vehicles (HVs). However, despite the rapid development of AVs, accidents involving AVs can occur even in ideal situations. Therefore, in order to enhance their safety, “pr...

참고문헌 (50)

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