基于哨兵SAR数据和多光谱数据的水稻识别研究

    Research on Rice Area Extraction Based on Sentinel SAR Data and Multi-spectral Data

    • 摘要: 水稻分布范围与面积监测可为水稻产量估算、农业水资源消耗和评价等提供科学决策依据。目前, 对华北单季稻稻作区水稻识别的研究尚少, 寻找一种适用该区域的水稻识别方法具有一定的研究价值。以天津为研究范围, 以Sentinel-1和Sentinel-2为数据源, 基于水稻后向散射系数时序变化特征和水稻不同生长期光谱特征, 分别对研究区水稻进行了提取, 并对两者的提取精度进行了比较。得出以下结论: (1)利用Sentinel-1移栽期、拔节期、抽穗期影像组合可识别水稻, 水稻生产者精度和用户精度均在90%以上; (2)在水稻移栽期和成熟期, Sentinel-2近红外、短波红外和可见光红光等波段组合易识别水稻, 水稻生产者精度和用户精度均在96%以上, 成熟期B12+B8+B4波段组合效果最优; (3)基于水稻成熟期的Sentinel-2 B12+B8+B4波段组合, 采用支持向量机法提取水稻是一种适用于华北单季稻的识别方法。运用该方法计算出研究区2016、2018和2021水稻种植面积分别为399.04、586.67和764.55 km2, 5 a增加365.51 km2, 符合天津市实际情况。该方法在技术上简单易行, 可为提高我国北方稻作区水稻监测效率与精度提供参考。

       

      Abstract: The monitoring of rice distribution and area can provide scientific decision-making basis for rice yield estimation, agricultural water resource consumption and evaluation. Till now, there are few researches on rice recognition in single-cropping rice region of North China, so it has great value to find a recognition method suitable for northern rice growing areas. With Tianjin as the research area, Sentinel-1 and Sentinel-2 as the data sources, rice was extracted from the study area based on the temporal variation characteristics of rice backscattering coefficient and spectral characteristics of rice at different growth stages, and the extraction accuracy of both methods was compared. The results show that: (1) The combination of Sentinel-1 images at transplanting, jointing and heading stages can be used to identify rice, and the accuracy of rice producers and users are both above 90%; (2) At the transplanting and maturing stages of rice, the combination of Sentinel-2 near infrared, short wave infrared and visible red light bands could easyly identify rice, and the accuracy of identifying rice producers and users was above 96%. The combination effect of B12+B8+B4 band was the best at the maturing stage; (3) Based on the combination of Sentinel-2 B12+B8+B4 band at rice maturity stage, rice extraction using support vector machine method (SVM) is a suitable method for single-cropping rice recognition in North China.. Using this method, the rice planting area in 2016, 2018 and 2021 was about 399.04, 586.67 and 764.55 km2, respectively, with an increase of 365.51 km2 in five years, which was consistent with the actual situation of Tianjin. This method is simple and feasible in technique and can provide reference for improving the efficiency and accuracy of rice monitoring in northern China's rice growing areas.

       

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