International Journal of Applied Earth Observations and Geoinformation (Dec 2021)

Large-scale crop mapping from multi-source optical satellite imageries using machine learning with discrete grids

  • Shuai Yan,
  • Xiaochuang Yao,
  • Dehai Zhu,
  • Diyou Liu,
  • Lin Zhang,
  • Guojiang Yu,
  • Bingbo Gao,
  • Jianyu Yang,
  • Wenju Yun

Journal volume & issue
Vol. 103
p. 102485

Abstract

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The spatial distribution of crops is an important agricultural parameter, which is used to derive important information about crop productivity and food security. However, crop mapping on a large scale is challenging due to the low spatio-temporal information of satellite data, sparse sampling, and poor computational efficiency for massive data. To alleviate these problems, this study proposes a method based on discrete grids with machine learning to integrate GaoFen-1 and Sentinel-2 imagery. First, the proposed method fuses multi-source satellite data with similar observation characteristics to improve the spatial and temporal coverage of satellites. Second, a data augmentation technique based on a discrete grid framework was proposed to solve the problem of sparse samples. Finally, a machine learning algorithm in a discrete grid was introduced to improve processing efficiency and ensure the crop classification precision of large-scale remote sensing images. An experiment in the Sanjiang Plain area (approximately 108900 km2) of Northeast China showed that the proposed scheme benefited from a high spatio-temporal multi-source dataset and achieved good performance. Compared with a single data source, the accuracy of crop mapping using multi-source optical remote sensing data is higher, attaining up to 86 and 88 % in 2017 and 2018, respectively. Furthermore, the advantages of machine learning in discrete grids over large-scale areas are validated by evaluating the accuracy of different classifiers, which indicates the suitability of discrete grids in data augmentation and large-scale crop mapping. Finally, discrete grid technology offers a possibility for crop mapping over large-scale areas, and improves the processing efficiency of remote sensing big data. The findings in this study can contribute to studies on large-scale crop classification and serve as a reference to them.

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