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APF-PF: Probabilistic Depth Perception for 3D Reactive Obstacle Avoidance

Shakeeb Ahmad, Zachary N. Sunberg, J. Sean Humbert

发表年份
2021
引用次数
2

摘要

This paper proposes a framework for 3D obstacle avoidance in the presence of partial observability of environment obstacles. The method focuses on the utility of the Artificial Potential Function (APF) controller in a practical setting where noisy and incomplete information about the proximity is inevitable. We propose a Particle Filter (PF) approach to estimate potential obstacle locations in an input depth image stream. The probable candidates are then used to generate an action that maneuvers the robot towards the negative gradient of potential at each time instant. Rigorous experimental validation on a quadrotor UAV highlights the robustness and reliability of the method when robot's sensitivity to incorrect perception information can be concerning. The proposed perception and control stack is run onboard the UAV, demonstrating the computational feasibility for real-time applications and agile robots.

关键词

Obstacle avoidanceComputer scienceObservabilityRobustness (evolution)Artificial intelligenceParticle filterRobotComputer visionControl theory (sociology)Reliability (semiconductor)

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