基于感知地图学习的基于数据辅助视觉的鲁棒避障混合控制

Alejandro Murillo-González, J. Poveda
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引用次数: 1

摘要

我们研究了机器人和车辆的目标稳定与鲁棒避障问题,这些机器人和车辆只能使用基于视觉的传感器进行实时定位。由于障碍物引起的拓扑障碍,使得能够同时实现稳定和鲁棒避障的平滑反馈控制器无法存在,因此该问题尤其具有挑战性。为了克服这个问题,我们开发了一种基于视觉的混合控制器,该控制器使用滞后机制和数据辅助监督器,根据车辆的当前位置在两种不同的反馈律之间切换。本文的主要创新之处在于在混合控制器中加入了合适的感知映射。这些地图可以从车辆摄像头获得的数据中学习,并通过卷积神经网络(CNN)进行训练。在此感知图的适当假设下,我们从收敛和避障方面为车辆的轨迹建立了理论保证。此外,所提出的基于视觉的混合控制器在不同的场景下进行了数值测试,包括噪声数据,故障传感器和遮挡相机。
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Data-Assisted Vision-Based Hybrid Control for Robust Stabilization with Obstacle Avoidance via Learning of Perception Maps
We study the problem of target stabilization with robust obstacle avoidance in robots and vehicles that have access only to vision-based sensors for the purpose of real-time localization. This problem is particularly challenging due to the topological obstructions induced by the obstacle, which preclude the existence of smooth feedback controllers able to achieve simultaneous stabilization and robust obstacle avoidance. To overcome this issue, we develop a vision-based hybrid controller that switches between two different feedback laws depending on the current position of the vehicle using a hysteresis mechanism and a data-assisted supervisor. The main innovation of the paper is the incorporation of suitable perception maps into the hybrid controller. These maps can be learned from data obtained from cameras in the vehicles and trained via convolutional neural networks (CNN). Under suitable assumptions on this perception map, we establish theoretical guarantees for the trajectories of the vehicle in terms of convergence and obstacle avoidance. Moreover, the proposed vision-based hybrid controller is numerically tested under different scenarios, including noisy data, sensors with failures, and cameras with occlusions.
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