Extraction of Crop Row Navigation Lines for Soybean Seedlings Based on Calculation of Average Pixel Point Coordinates

Author:

Zhang Bo1,Zhao Dehao1,Chen Changhai2,Li Jinyang3ORCID,Zhang Wei34,Qi Liqiang3ORCID,Wang Siru1

Affiliation:

1. College of Information and Electrical Engineering, Heilongjiang Bayi Agricultural University, Daqing 163319, China

2. Harbin Academy of Agricultural Sciences, Harbin 150029, China

3. College of Engineering, Heilongjiang Bayi Agricultural University, Daqing 163319, China

4. Key Laboratory of Soybean Mechanization Production, Ministry of Agriculture and Rural Affairs, Daqing 163319, China

Abstract

The extraction of navigation lines is a crucial aspect in the field autopilot system for intelligent agricultural equipment. Given that soybean seedlings are small, and straw can be found in certain Northeast China soybean fields, accurately obtaining feature points and extracting navigation lines during the soybean seedling stage poses numerous challenges. To solve the above problems, this paper proposes a method of extracting navigation lines based on the average coordinate feature points of pixel points in the bean seedling belt according to the calculation of the average coordinate. In this study, the soybean seedling was chosen as the research subject, and the Hue, Saturation, Value (HSV) colour model was employed in conjunction with the maximum interclass variance (OTSU) method for RGB image segmentation. To extract soybean seedling bands, a novel approach of framing binarised image contours by drawing external rectangles and calculating average coordinates of white pixel points as feature points was proposed. The feature points were normalised, and then the improved adaptive DBSCAN clustering method was used to cluster the feature points. The least squares method was used to fit the centre line of the crops and the navigation line, and the results showed that the average distance deviation and the average angle deviation of the proposed algorithm were 7.38 and 0.32. The fitted navigation line achieved an accuracy of 96.77%, meeting the requirements for extracting navigation lines in intelligent agricultural machinery equipment for soybean inter-row cultivation. This provides a theoretical foundation for realising automatic driving of intelligent agricultural machinery in the field.

Funder

China Agriculture Research System of MOF and MARA

Soybean Production Intelligent Management and Precision Operation Service Platform Construction Open Topic

Publisher

MDPI AG

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