Frontiers in Plant Science (Aug 2023)

Farmland boundary extraction based on the AttMobile-DeeplabV3+ network and least squares fitting of straight lines

  • Hao Lu,
  • Hao Lu,
  • Hao Lu,
  • Hao Wang,
  • Hao Wang,
  • Hao Wang,
  • Zhifeng Ma,
  • Yaxin Ren,
  • Weiqiang Fu,
  • Weiqiang Fu,
  • Weiqiang Fu,
  • Yongchao Shan,
  • Yongchao Shan,
  • Yongchao Shan,
  • Shupeng Hu,
  • Shupeng Hu,
  • Shupeng Hu,
  • Guangqiang Zhang,
  • Guangqiang Zhang,
  • Guangqiang Zhang,
  • Zhijun Meng,
  • Zhijun Meng,
  • Zhijun Meng

DOI
https://doi.org/10.3389/fpls.2023.1228590
Journal volume & issue
Vol. 14

Abstract

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The rapid extraction of farmland boundaries is key to implementing autonomous operation of agricultural machinery. This study addresses the issue of incomplete farmland boundary segmentation in existing methods, proposing a method for obtaining farmland boundaries based on unmanned aerial vehicle (UAV) remote sensing images. The method is divided into two steps: boundary image acquisition and boundary line fitting. To acquire the boundary image, an improved semantic segmentation network, AttMobile-DeeplabV3+, is designed. Subsequently, a boundary tracing function is used to track the boundaries of the binary image. Lastly, the least squares method is used to obtain the fitted boundary line. The paper validates the method through experiments on both crop-covered and non-crop-covered farmland. Experimental results show that on crop-covered and non-crop-covered farmland, the network’s intersection over union (IoU) is 93.25% and 93.14%, respectively; the pixel accuracy (PA) for crop-covered farmland is 96.62%. The average vertical error and average angular error of the extracted boundary line are 0.039 and 1.473°, respectively. This research provides substantial and accurate data support, offering technical assistance for the positioning and path planning of autonomous agricultural machinery.

Keywords