Remote Sensing (Jun 2023)

Cropland Data Extraction in Mekong Delta Based on Time Series Sentinel-1 Dual-Polarized Data

  • Jingling Jiang,
  • Hong Zhang,
  • Ji Ge,
  • Chunling Sun,
  • Lu Xu,
  • Chao Wang

DOI
https://doi.org/10.3390/rs15123050
Journal volume & issue
Vol. 15, no. 12
p. 3050

Abstract

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In recent years, synthetic aperture radar (SAR) has been a widely used data source in the remote sensing field due to its ability to work all day and in all weather conditions. Among SAR satellites, Sentinel-1 is frequently used to monitor large-scale ground objects. The Mekong Delta is a major agricultural region in Southeast Asia, so monitoring its cropland is of great importance. However, it is a challenge to distinguish cropland from other ground objects, such as aquaculture and wetland, in this region. To address this problem, the study proposes a statistical feature combination from the Sentinel-1 dual-polarimetric (dual-pol) data time series based on the m/χ decomposition method. Then the feature combination is put into the proposed Omni-dimensional Dynamic Convolution Residual Segmentation Model (ODCRS Model) of high fitting speed and classification accuracy to realize the cropland extraction of the Mekong Delta region. Experiments show that the ODCRS model achieves an overall accuracy of 93.85%, a MIoU of 88.04%, and a MPA of 93.70%. The extraction results show that our method can effectively distinguish cropland from aquaculture areas and wetlands.

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