Agriculture (Jun 2024)

Crop Root Rows Detection Based on Crop Canopy Image

  • Yujie Liu,
  • Yanchao Guo,
  • Xiaole Wang,
  • Yang Yang,
  • Jincheng Zhang,
  • Dong An,
  • Huayu Han,
  • Shaolin Zhang,
  • Tianyi Bai

DOI
https://doi.org/10.3390/agriculture14070969
Journal volume & issue
Vol. 14, no. 7
p. 969

Abstract

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Most of the current crop row detection algorithms focus on extracting crop canopy rows as location information. However, for some high-pole crops, due to the transverse deviation of the position of the canopy and roots, the agricultural machinery can easily cause the wheel to crush the crop when it is automatically driven. In fact, it is more accurate to use the crop root row as the feature for its location calibration, so a method of crop root row detection is proposed in this paper. Firstly, the ROI (region of interest) of the crop canopy is extracted by a semantic segmentation algorithm, then crop canopy row detection lines are extracted by the horizontal strip division and the midpoint clustering method within the ROI. Next, the Crop Root Representation Learning Model learns the Representation of the crop canopy row and crop root row to obtain the Alignment Equation. Finally, the crop canopy row detection lines are modified according to the Alignment Equation parameters to obtain crop root row detection lines. The average processing time of a single frame image (960 × 540 pix) is 30.49 ms, and the accuracy is 97.1%. The research has important guiding significance for the intelligent navigation, tilling, and fertilization operation of agricultural machinery.

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