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A bio-inspired algorithm in image-based path planning and localization using visual features and maps

D. Short, Tingjun Lei, Chaomin Luo, Daniel W. Carruth, Zhuming Bi

Year
2023
Citations
29

Abstract

With the growing applications of autonomous robots and vehicles in unknown environments, studies on image-based localization and navigation have attracted a great deal of attention. This study is significantly motivated by the observation that relatively little research has been published on the integration of cutting-edge path planning algorithms for robust, reliable, and effective image-based navigation. To address this gap, a biologically inspired Bat Algorithm (BA) is introduced and adopted for image-based path planning in this paper. The proposed algorithm utilizes visual features as the reference in generating a path for an autonomous vehicle, and these features are extracted from the obtained images by convolutional neural networks (CNNs). The paper proceeds as follows: first, the requirements for image-based localization and navigation are described. Second, the principles of the BA are explained in order to expound on the justifications for its successful incorporation in image-based navigation. Third, in the proposed image-based navigation system, the BA is developed and implemented as a path planning tool for global path planning. Finally, the performance of the BA is analyzed and verified through simulation and comparison studies to demonstrate its effectiveness.

Keywords

Motion planningArtificial intelligenceComputer sciencePath (computing)Convolutional neural networkImage (mathematics)Computer visionEnhanced Data Rates for GSM EvolutionRobotAlgorithm

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