4.7 Article

Mapping Paddy Rice with Sentinel-1/2 and Phenology-, Object-Based Algorithm-A Implementation in Hangjiahu Plain in China Using GEE Platform

期刊

REMOTE SENSING
卷 13, 期 5, 页码 -

出版社

MDPI
DOI: 10.3390/rs13050990

关键词

paddy rice; object-based; Google Earth Engine; Sentinel-1; 2; monsoon region

资金

  1. Humanities and Social Sciences of Ministry of Education Foundation of China [20C10335010]
  2. National Nature Science Foundation of China [42071250]

向作者/读者索取更多资源

In tropical/subtropical monsoon regions, accurate rice mapping is hindered by factors such as cloud cover, fragmented landscape, and crop rotation. The PODS algorithm, involving object extraction, phenological stage determination, and flood signal detection, was implemented to improve rice mapping accuracy. The combined use of Sentinel-1/2 mission and cloud computing approach in the Hangzhou-Jiaxin-Huzhou (HJH) plain of China showed promising results in producing high-accuracy paddy rice maps.
In tropical/subtropical monsoon regions, accurate rice mapping is hampered by the following factors: (1) The frequent occurrence of clouds in such areas during the rice-growing season interferes strongly with optical remote sensing observations; (2) The agro-landscape in such regions is fragmented and scattered. Rice maps produced using low spatial resolution data cannot well delineate the detailed distribution of rice, while pixel-based mapping using medium and high resolutions has significant salt-and-pepper noise. (3) The cropping system is complex, and rice has a rotation schedule with other crops. Therefore, the Phenology-, Object- and Double Source-based (PODS) paddy rice mapping algorithm is implemented, which consists of three steps: (1) object extraction from multi-temporal 10-m Sentinel-2 images where the extracted objects (fields) are the basic classification units; (2) specifying the phenological stage of transplanting from Savitzky-Golay filtered enhanced vegetation index (EVI) time series using the PhenoRice algorithm; and (3) the identification of rice objects based on flood signal detection from time-series microwave and optical signals of the Sentinel-1/2. This study evaluated the potential of the combined use of the Sentinel-1/2 mission on paddy rice mapping in monsoon regions with the Hangzhou-Jiaxin-Huzhou (HJH) plain in China as the case study. A cloud computing approach was used to process the available Sentinel-1/2 imagery from 2019 and MODIS images from 2018 to 2020 in the HJH plain on the Google Earth Engine (GEE) platform. An accuracy assessment showed that the resultant object-based paddy rice map has a high accuracy with a producer (user) accuracy of 0.937 (0.926). The resultant 10-m paddy rice map is expected to provide unprecedented detail, spatial distribution, and landscape patterns for paddy rice fields in monsoon regions.

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