CARE: Confidence-Rich Autonomous Robot Exploration Using Bayesian Kernel Inference and Optimization

  • Yang Xu
  • , Ronghao Zheng
  • , Senlin Zhang
  • , Meiqin Liu
  • , Shoudong Huang

Research output: Contribution to journalArticlepeer-review

8 Scopus citations

Abstract

In this letter, we consider improving the efficiency of information-based autonomous robot exploration in unknown and complex environments. We first utilize Gaussian process (GP) regression to learn a surrogate model to infer the confidence-rich mutual information (CRMI) of querying control actions, then adopt an objective function consisting of predicted CRMI values and prediction uncertainties to conduct Bayesian optimization (BO), i.e., GP-based BO (GPBO). The trade-off between the best action with the highest CRMI value (exploitation) and the action with high prediction variance (exploration) can be realized. To further improve the efficiency of GPBO, we propose a novel lightweight information gain inference method based on Bayesian kernel inference and optimization (BKIO), achieving an approximate logarithmic complexity without the need for training. BKIO can also infer the CRMI and generate the best action using BO with bounded cumulative regret, which ensures its comparable accuracy to GPBO with much higher efficiency. Extensive numerical and real-world experiments show the desired efficiency of our proposed methods without losing exploration performance in different unstructured, cluttered environments.

Original languageEnglish
Pages (from-to)6755-6762
Number of pages8
JournalIEEE Robotics and Automation Letters
Volume8
Issue number10
DOIs
StatePublished - 1 Oct 2023

Keywords

  • Probabilistic inference
  • range sensing
  • reactive and sensor-based planning
  • view planning for SLAM

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