Perception-Informed Autonomous Environment Augmentation With Modular Robots

2018 IEEE International Conference on Robotics and Automation (ICRA)(2018)

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摘要
We present a system enabling a modular robot to autonomously build structures in order to accomplish high-level tasks. Building structures allows the robot to surmount large obstacles, expanding the set of tasks it can perform. This addresses a common weakness of modular robot systems, which often struggle to traverse large obstacles. This paper presents the hardware, perception, and planning tools that comprise our system. An environment characterization algorithm identifies features in the environment that can be augmented to create a path between two disconnected regions of the environment. Specially-designed building blocks enable the robot to create structures that can augment the environment to make obstacles traversable. A high-level planner reasons about the task, robot locomotion capabilities, and environment to decide if and where to augment the environment in order to perform the desired task. We validate our system in hardware experiments
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关键词
high-level planner,disconnected regions,hardware experiments,planning tools,robot locomotion capabilities,specially-designed building blocks,environment characterization algorithm,modular robot systems,building structures,high-level tasks,perception-informed autonomous environment augmentation
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