4.7 Article

Visual Navigation and Obstacle Avoidance Control for Agricultural Robots via LiDAR and Camera

Journal

REMOTE SENSING
Volume 15, Issue 22, Pages -

Publisher

MDPI
DOI: 10.3390/rs15225402

Keywords

agricultural robot; visual navigation; obstacle avoidance control; LiDAR

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This paper presents a navigation and obstacle avoidance system for agricultural robots based on LiDAR and a vision camera. The improved clustering algorithm and convex hull algorithm are used to analyze obstacle information in real time. Obstacle avoidance paths and course control methods are developed based on the dangerous zones of obstacles. Through color space analysis and feature analysis, the optimal HSV color component is selected to obtain the ideal vision-guided trajectory images. The proposed algorithm is proven to be effective and robust through obstacle avoidance experiments.
Obstacle avoidance control and navigation in unstructured agricultural environments are key to the safe operation of autonomous robots, especially for agricultural machinery, where cost and stability should be taken into account. In this paper, we designed a navigation and obstacle avoidance system for agricultural robots based on LiDAR and a vision camera. The improved clustering algorithm is used to quickly and accurately analyze the obstacle information collected by LiDAR in real time. Also, the convex hull algorithm is combined with the rotating calipers algorithm to obtain the maximum diameter of the convex polygon of the clustered data. Obstacle avoidance paths and course control methods are developed based on the danger zones of obstacles. Moreover, by performing color space analysis and feature analysis on the complex orchard environment images, the optimal H-component of HSV color space is selected to obtain the ideal vision-guided trajectory images based on mean filtering and corrosion treatment. Finally, the proposed algorithm is integrated into the Three-Wheeled Mobile Differential Robot (TWMDR) platform to carry out obstacle avoidance experiments, and the results show the effectiveness and robustness of the proposed algorithm. The research conclusion can achieve satisfactory results in precise obstacle avoidance and intelligent navigation control of agricultural robots.

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