과제정보
본 연구는 이우섭 석사 학위 논문 「Vision Transformer를 활용한 실주행 데이터 기반 자율주행자동차 사고 취약상황 예측 및 시나리오 도출 연구」를 수정·보완하여 작성되었으며, 국토교통부 자율주행기술개발혁신사업 '주행 및 충돌상황 대응 안전성 평가기술개발(22AMDP-C161754-02)' 과제 지원으로 수행되었습니다.
참고문헌
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