Abstract

Accurate and timely crop type mapping and rotation monitoring play a critical role in crop yield estimation, soil management, and food supplies. To date, to our knowledge, accurate mapping of crop types remains challenging due to the intra-class variability of crops and labyrinthine natural conditions. The challenge is further complicated for smallholder farming systems in mountainous areas where field sizes are small and crop types are very diverse. This bottleneck issue makes it difficult and sometimes impossible to use remote sensing in monitoring crop rotation, a desired and required farm management policy in parts of China. This study integrated Sentinel-1 and Sentinel-2 images for crop type mapping and rotation monitoring in Inner Mongolia, China, with an extensive field-based survey dataset. We accomplished this work on the Google Earth Engine (GEE) platform. The results indicated that most crop types were mapped fairly accurately with an F1-score around 0.9 and a clear separation of crop types from one another. Sentinel-1 polarization achieved a better performance in wheat and rapeseed classification among different feature combinations, and Sentinel-2 spectral bands exhibited superiority in soybean and corn identification. Using the accurate crop type classification results, we identified crop fields, changed or unchanged, from 2017 to 2018. These findings suggest that the combination of Sentinel-1 and Sentinel-2 proved effective in crop type mapping and crop rotation monitoring of smallholder farms in labyrinthine mountain areas, allowing practical monitoring of crop rotations.

Highlights

  • Since the advent of satellite remote sensing, land cover classification has been an essential and active topic in land use science and agriculture [1,2]

  • These findings suggest that the combination of Sentinel-1 and Sentinel-2 proved effective in crop type mapping and crop rotation monitoring of smallholder farms in labyrinthine mountain areas, allowing practical monitoring of crop rotations

  • Sentinel-1/2 images, combined with random forest classifier and Google Earth Engine platform, were used to map crop types and assess crop rotation patterns in a typical smallholder system located in mountainous areas

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Summary

Introduction

Since the advent of satellite remote sensing, land cover classification has been an essential and active topic in land use science and agriculture [1,2]. With the increasing earth observation capabilities, many regional or global land cover products have been produced, such as GLC2000 [3], GlobeLand30 [4], and FROM-GLC10/30 [1,5] These products contain cropland class but lack specific information on crop types [6,7]. Accurate and timely crop type classification is vital for global food security, farming policymaking, and international food trading [8]. It is a prerequisite for crop rotation, an emerging farming policy in China to prevent long-term land degradation [9]. Accurate crop type mapping is challenging due to spectral similarities and intra-class variability induced by crop diversity, environmental conditions, and farm practices [9,10,11]

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