시뮬레이션 기반 테스팅은 자율주행 소프트웨어의 신뢰성을 보장하는 중요한 단계이지만, 일반 목적 시뮬레이터를 사용할 경우 실제 자율주행 차량 동작과의 괴리가 발생할 수 있다. 이 연구는 다중 시뮬레이터 접근법인 '디지털 형제' 방식을 제안하여 이러한 한계를 극복하고자 한다.
Autonomous vehicles require robust safety assurance to overcome the challenges of complex situations and unreliable perception, which traditional approaches often fail to address. Integrating dynamic risk management into behavior-based systems can provide a promising solution.
InsMapper effectively utilizes inner-instance information to improve vectorized HD map detection.
Developing a robust sim2real control framework for autonomous vehicles with unconventional architectures.
Addressing challenges in annotating data from multiple sensors in autonomous vehicles, focusing on motion compensation and object tracking.
Utilizing Large Language Models for lane change prediction enhances accuracy and interpretability.
Advancing cooperative capabilities in CAVs through integrated perception and prediction.
Place3D framework optimizes LiDAR placements for robust driving perception under adverse conditions.
Advanced framework for curb detection using LiDAR point cloud segmentation.
Incorporating uncertainty in online map estimation improves trajectory prediction performance significantly.