A comprehensive review of rice mapping from satellite data: Algorithms, product characteristics and consistency assessment

IF 5.7 Q1 ENVIRONMENTAL SCIENCES Science of Remote Sensing Pub Date : 2024-10-24 DOI:10.1016/j.srs.2024.100172
Husheng Fang , Shunlin Liang , Yongzhe Chen , Han Ma , Wenyuan Li , Tao He , Feng Tian , Fengjiao Zhang
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Abstract

With a growing global population and intensifying regional conflicts, the need for food is more urgent than ever. Rice, as one of the world's major staple crops especially in Asia, sustains over 50 percent of the global population. Accurate rice mapping is fundamental to ensuring global food security and sustainable agricultural development. Remote sensing has become an essential tool for mapping rice cultivation due to its ability to cover large areas and provide timely observation. Existing reviews mainly focus on the paddy rice mapping methods. However, it lacks a comprehensive understanding on the quality of different paddy rice maps from regional to global scales. This paper provides a comprehensive review of existing satellite-based rice mapping methods and products. Firstly, we categorized all previous methods into four classes: 1) spatial statistical method; 2) traditional machine learning method; 3) phenology-based method; and 4) deep learning method. Secondly, we summarized 25 products, including 3 global products and 22 regional products. Furthermore, we examined the consistency and discrepancy among different products in China, Heilongjiang China and Vietnam respectively and explored the underlying reasons. We found that 1) rice fields with simple cropping patterns and intensive cultivation can be correctly recognized using various algorithms; 2) different products share low consistency in fragmented rice fields 3) the prevalence of clouds and complicated rice cropping patterns or diverse growing environments in subtropical and tropical regions poses challenges to accurate rice mapping. Due to these challenges, currently it still lacks paddy rice maps with both large spatial coverage, high spatial resolution, and long time series. Moreover, deficiency of ground-truth samples impedes product development and validation. For improved paddy rice mapping at large scale, we suggest to apply sample-free rice mapping techniques and remote sensing foundation models to leverage the strengths of phenology-based methods and deep learning methods.
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卫星数据水稻测绘综合评述:算法、产品特征和一致性评估
随着全球人口的增长和地区冲突的加剧,对粮食的需求比以往任何时候都更加迫切。水稻是世界上的主要粮食作物之一,尤其是在亚洲,养活着全球 50% 以上的人口。精确的水稻测绘是确保全球粮食安全和可持续农业发展的基础。遥感技术能够覆盖大面积区域并提供及时观测,因此已成为绘制水稻种植地图的重要工具。现有的综述主要集中在水稻测绘方法上。然而,对于从区域到全球范围内不同水稻地图的质量缺乏全面了解。本文全面综述了现有的卫星水稻测绘方法和产品。首先,我们将以往所有方法分为四类:1)空间统计方法;2)传统机器学习方法;3)基于物候学的方法;4)深度学习方法。其次,我们总结了 25 种产品,包括 3 种全球产品和 22 种区域产品。此外,我们还分别研究了中国、黑龙江和越南不同产品之间的一致性和差异性,并探讨了其背后的原因。我们发现:1)采用不同算法可以正确识别耕作模式简单、种植密集的稻田;2)在稻田破碎的情况下,不同产品之间的一致性较低;3)亚热带和热带地区普遍存在多云、复杂的水稻耕作模式或多样化的生长环境,这给水稻精确绘图带来了挑战。由于这些挑战,目前仍然缺乏大空间覆盖、高空间分辨率和长时间序列的水稻地图。此外,地面实况样本的缺乏也阻碍了产品的开发和验证。为了改进大规模水稻测绘,我们建议应用无样本水稻测绘技术和遥感基础模型,充分利用基于物候学的方法和深度学习方法的优势。
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