GENESIS-RL leverages reinforcement learning to systematically manipulate the simulated environment and generate challenging yet naturalistic edge cases that can reveal potential safety vulnerabilities in autonomous systems.
인간 중심 자율성을 통한 UAS 타겟 검색의 효율적인 방법론 소개
Neural Radiance Fields enable robust and accurate spatio-temporal multi-sensor calibration for autonomous systems.
Bayesian trust estimation enhances security in multi-agent autonomy by mapping sensor data to trust pseudomeasurements.
CRPlace proposes a background-attentive camera-radar fusion method for accurate place recognition by focusing on stationary background features.
Autonomous collision avoidance is enhanced through a safety-aware perception algorithm that optimizes sensor-pointing direction using control barrier functions.
Leveraging self-supervised learning and mask-based regularization improves traversability prediction in off-road environments.
Utilizing 3D Gaussian Splatting for accurate map representation and visual relocalization in autonomous systems.