Harvesting Route Detection and Crop Height Estimation Methods for Lodged Farmland Based on AdaBoost
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Published:2023-08-28
Issue:9
Volume:13
Page:1700
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ISSN:2077-0472
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Container-title:Agriculture
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language:en
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Short-container-title:Agriculture
Author:
Li Yanming12ORCID, Guo Yibo1, Gong Liang12ORCID, Liu Chengliang12
Affiliation:
1. School of Mechanical Engineering, Shanghai Jiao Tong University, Shanghai 200240, China 2. Key Laboratory of Intelligent Agricultural Technology (Yangtze River Delta), Ministry of Agriculture and Rural Affairs, Shanghai 200240, China
Abstract
Addressing the challenge of the current harvester route detection method’s reduced robustness within lodging-affected farmland environments and its limited perception of crop lodging, this paper proposes a harvesting operation image segmentation method based on SLIC superpixel segmentation and the AdaBoost ensemble learning algorithm. This segmentation enables two essential tasks. Firstly, the RANSAC algorithm is employed to extract the harvester’s operational route through straight-line fitting from the segmented image. Secondly, the method utilizes a 3D point cloud generated by binocular vision, combined with IMU information for attitude correction, to estimate the height of the harvested crop in front of the harvester. Experimental results demonstrate the effectiveness of this method in successfully segmenting the harvested and unharvested areas of the farmland. The average angle error for the detected harvesting route is approximately 1.97°, and the average error for crop height detection in the unharvested area is around 0.054 m. Moreover, the algorithm exhibits a total running time of approximately 437 ms. The innovation of this paper lies in its simultaneous implementation of two distinct perception tasks, leveraging the same image segmentation results. This approach offers a robust and effective solution for addressing both route detection and crop height estimation challenges within lodging-affected farmland during harvesting operations.
Funder
National Key Research and Development Program of China
Subject
Plant Science,Agronomy and Crop Science,Food Science
Reference35 articles.
1. Pierce, Q.Z., and Francis, J. (2013). Agricultural Automation: Fundamentals and Practices, CRC Press. 2. Pillai, P., Hu, Y.F., Otung, I., and Giambene, G. (2015, January 6–7). Technology Impact on Agricultural Productivity: A Review of Precision Agriculture Using Unmanned Aerial Vehicles. Proceedings of the Wireless and Satellite Systems, Bradford, UK. 3. Shah, L., Yahya, M., Shah, S.M.A., Nadeem, M., Ali, A., Ali, A., Wang, J., Riaz, M.W., Rehman, S., and Wu, W. (2019). Improving Lodging Resistance: Using Wheat and Rice as Classical Examples. Int. J. Mol. Sci., 20. 4. Fundamental Limits in Combine Harvester Header Height Control;Xie;J. Dyn. Syst. Meas. Control,2013 5. Estimation of Plant Height Using a High Throughput Phenotyping Platform Based on Unmanned Aerial Vehicle and Self-Calibration: Example for Sorghum Breeding;Hu;Eur. J. Agron.,2018
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