Improved Paddy Rice Classification Utilizing Sentinel-1/2 Imagery in Anhui China: Phenological Features, Algorithms, Validation and Analysis

Author:

Wang Zeling123,Sun Xiaobing24,Liu Xiao24,Xu Feifei5,Huang Honglian2,Ti Rufang2,Yu Haixiao12,Wang Yuxuan12,Wei Yichen12

Affiliation:

1. Science Island Branch, University of Science and Technology of China, Hefei 230026, China

2. Anhui Institute of Optics and Fine Mechanics, Hefei Institutes of Physical Science, Chinese Academy of Sciences, Hefei 230031, China

3. Computer and Artificial Intelligence Department, Hefei Normal University, Hefei 230601, China

4. Chief Studio of Agricultural Industry in Hefei, Hefei 230031, China

5. Institute of Geographic Science and Natural Resources Research, Chinese Academy of Sciences, Suzhou 215100, China

Abstract

Enhancing the accuracy of paddy rice mapping is crucial for bolstering global food security. Prior research incorporating Sentinel imagery with phenological characteristics has identified paddy rice fields effectively. However, challenges such as reliance on a single index, cloud cover interference, and a lack of sufficient training samples continue to complicate the mapping of paddy rice. This study introduces a comprehensive paddy rice mapping framework that incorporates annual phenological features throughout the entire growth phase. This was achieved by expanding the sample size through the extraction of phenological features, and the visually verified samples were then integrated with distinct phenological phases and relevant indices, utilizing hybrid Sentinel-1/2 imagery to map paddy rice distribution. The accuracy of the generated rice map was validated against trusted samples, corroborative agricultural statistics, and another high-resolution 10 m mapping product. Compared with ground-truth samples, the algorithm has achieved an overall accuracy of approximately 92% in most rice production regions with a confusion matrix. Additionally, the estimated rice area in Anhui and several other rice-producing regions shows less than 10% error when compared with governmental statistical records from the yearbook. When compared with another recent paddy rice map at the same spatial resolution (10 m), our approach provided cleaner details and more effectively reduced omission errors. It received values of R2 = 0.991 and slope = 1.08 in a prefecture-level statistical comparison with a counterpart. Our proposed approach is proven to be valid and is expected to offer significant benefits to agricultural sustainability and technological applications in farming.

Funder

Aerospace Science and Technology Innovation Application Research Project

Aviation Science and Technology Innovation Application Research Project

Key Laboratory Project of Chinese Academy of Sciences

China High-resolution Earth Observation System

China Center for Resource Satellite Data and Applications Project

Publisher

MDPI AG

Reference52 articles.

1. The adaptation of rice paddy farmers towards climate change;Kamaluddin;Am.-Eurasian J. Agric. Environ. Sci.,2012

2. Effect of land use change from paddy rice cultivation to upland crop cultivation on soil carbon budget of a cropland in Japan;Nishimura;Agric. Ecosyst. Environ.,2008

3. An overview of global rice production, supply, trade, and consumption;Muthayya;Ann. N. Y. Acad. Sci.,2014

4. Rice in the global food supply;Fairhurst;World,2002

5. Methane emissions from paddy rice fields: Strategies towards achieving a win-win sustainability scenario between rice production and methane emission reduction;Epule;J. Sustain. Dev.,2011

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