Deep-Learning-Based Trunk Perception with Depth Estimation and DWA for Robust Navigation of Robotics in Orchards

Author:

Huang Peichen1,Huang Peikui2,Wang Zihong3,Wu Xiao1,Liu Jie1,Zhu Lixue4ORCID

Affiliation:

1. College of Automation, Zhongkai University of Agriculture and Engineering, Guangzhou 510225, China

2. Key Laboratory of Key Technology on Agricultural Machine and Equipment, College of Engineering, South China Agricultural University, Guangzhou 510642, China

3. Department of Public Class Teaching, Guangdong Open University, Guangzhou 510091, China

4. School of Mechanical and Electrical Engineering, Zhongkai University of Agriculture and Engineering, Guangzhou 510225, China

Abstract

Agricultural robotics is a complex, challenging, and exciting research topic nowadays. However, orchard environments present harsh conditions for robotics operability, such as terrain irregularities, illumination, and inaccuracies in GPS signals. To overcome these challenges, reliable landmarks must be extracted from the environment. This study addresses the challenge of accurate, low-cost, and efficient landmark identification in orchards to enable robot row-following. First, deep learning, integrated with depth information, is used for real-time trunk detection and location. The in-house dataset used to train the models includes a total of 2453 manually annotated trunks. The results show that the trunk detection achieves an overall mAP of 81.6%, an inference time of 60 ms, and a location accuracy error of 9 mm at 2.8 m. Secondly, the environmental features obtained in the first step are fed into the DWA. The DWA performs reactive obstacle avoidance while attempting to reach the row-end destination. The final solution considers the limitations of the robot’s kinematics and dynamics, enabling it to maintain the row path and avoid obstacles. Simulations and field tests demonstrated that even with a certain initial deviation, the robot could automatically adjust its position and drive through the rows in the real orchard.

Funder

Science and Technology R&D Projects in Key Fields of the Guangdong Province

National Natural Science Funds for Young Scholar

Basic and Applied Basic Research Project of Guangzhou Basic Research Program in 2022

Publisher

MDPI AG

Subject

Agronomy and Crop Science

Reference30 articles.

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5. Huang, P., Zhu, L., Zhang, Z., and Yang, C. (2021). Row End Detection and Headland Turning Control for an Autonomous Banana-Picking Robot. Machines, 9.

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