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arxiv: 2002.01921 · v1 · pith:G4KS3LCN · submitted 2020-02-05 · cs.RO · cs.LG· cs.SY· eess.SY

Autonomous Navigation in Unknown Environments using Sparse Kernel-based Occupancy Mapping

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classification cs.RO cs.LGcs.SYeess.SY
keywords autonomousmappingrobotunknowncheckingcollisionenvironmentsnavigation
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This paper focuses on real-time occupancy mapping and collision checking onboard an autonomous robot navigating in an unknown environment. We propose a new map representation, in which occupied and free space are separated by the decision boundary of a kernel perceptron classifier. We develop an online training algorithm that maintains a very sparse set of support vectors to represent obstacle boundaries in configuration space. We also derive conditions that allow complete (without sampling) collision-checking for piecewise-linear and piecewise-polynomial robot trajectories. We demonstrate the effectiveness of our mapping and collision checking algorithms for autonomous navigation of an Ackermann-drive robot in unknown environments.

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