Collision Probability

Collision probability estimation is crucial for ensuring safety in various applications, from autonomous driving and robotics to astronomy and manufacturing. Current research focuses on developing accurate and computationally efficient methods for estimating collision probabilities, employing diverse approaches such as Monte Carlo simulations, neural networks (including deep collision probability fields and variational autoencoders), and temporal difference learning within reinforcement learning frameworks. These advancements are significantly impacting safety-critical systems by enabling more reliable collision avoidance, improved path planning, and more accurate risk assessments in complex, uncertain environments.

Papers