2022 IEEE 25th International Conference on Intelligent Transportation Systems (ITSC) 2022
DOI: 10.1109/itsc55140.2022.9921898
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Minimal Injury Risk Motion Planning Using Active Mitigation and Sampling Model Predictive Control

Abstract: Collision mitigation is an important element in motion planning. Although Advanced Driver-Assistance Systems (ADAS) have a rich number of functionalities, they lack interchangeability. There is still a gap on finding a way to evaluate the best decision globally. This paper presents a novel motion planning framework to generate emergency maneuvers in complex and risky scenarios using active mitigation. The classical Model Predictive Path Integral (MPPI) algorithm is improved to be used in a probabilistic dynami… Show more

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Cited by 3 publications
(3 citation statements)
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“…As a pedestrian is about to cross the road ahead, the probabilistic risk assessment provides the clues for the planner to identify the risk of intercepting the trajectory of the pedestrian and to decide whether to safely cross before or to yield smoothly. This behavior of our avoidance system qualitatively compares with what has been presented in [13], [17] and [18]. pedestrian in predicted occupancy dangerous trajectories that intercept the pedestrian safe trajectories that cross before safe trajectories that deviate from path safe trajectories that yield illustration of sampled trajectories by their 3s future rear axle position (■: collision, ■: safe) Fig.…”
Section: Implementation and Experimental Resultssupporting
confidence: 59%
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“…As a pedestrian is about to cross the road ahead, the probabilistic risk assessment provides the clues for the planner to identify the risk of intercepting the trajectory of the pedestrian and to decide whether to safely cross before or to yield smoothly. This behavior of our avoidance system qualitatively compares with what has been presented in [13], [17] and [18]. pedestrian in predicted occupancy dangerous trajectories that intercept the pedestrian safe trajectories that cross before safe trajectories that deviate from path safe trajectories that yield illustration of sampled trajectories by their 3s future rear axle position (■: collision, ■: safe) Fig.…”
Section: Implementation and Experimental Resultssupporting
confidence: 59%
“…Unfortunately these methods do not consider uncertainties in the dynamic part of the environment. Only [17] considers probability of existence of dynamic obstacles. This work uses Bayesian dynamic occupancy grid with a MPPI planner to mitigate the collision damage in road scenarios.…”
Section: B Related Workmentioning
confidence: 99%
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