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生成用于监测异质农田的高分辨率时间序列归一化植被指数(NDVI)图像。

Generation of High-Resolution Time-Series NDVI Images for Monitoring Heterogeneous Crop Fields.

作者信息

Kim Sun-Hwa, Eun Jeong, Baek Inkwon, Kim Tae-Ho

机构信息

PERPIXEL Inc., Incheon 21984, Republic of Korea.

Underwater Survey Technology 21 Inc., Incheon 21999, Republic of Korea.

出版信息

Sensors (Basel). 2025 Aug 20;25(16):5183. doi: 10.3390/s25165183.

Abstract

Various fusion methods of optical satellite images have been proposed for monitoring heterogeneous farmlands requiring high spatial and temporal resolution. In this study, a three-meter normalized difference vegetation index (NDVI) was generated by applying the spatiotemporal fusion (STF) method to simultaneously generate a full-length normalized difference vegetation index time series (SSFIT) and enhanced spatial and temporal adaptive reflectance fusion method (ESTARFM) to the NDVI of Sentinel-2 (S2) and PlanetScope (PS), using images from 2019 to 2021 of rice paddy and heterogeneous cabbage fields in Korea. Before fusion, S2 was processed with the maximum NDVI composite (MNC) and the spatiotemporal gap-filling technique to minimize cloud effects. The fused NDVI image had a spatial resolution similar to PS, enabling more accurate monitoring of small and heterogeneous fields. In particular, the SSFIT technique showed higher accuracy than ESTARFM, with a root mean square error of less than 0.16 and correlation of more than 0.8 compared to the PS NDVI. Additionally, SSFIT takes four seconds to process data in the field area, while ESTARFM requires a relatively long processing time of five minutes. In some images where ESTARFM was applied, outliers originating from S2 were still present, and heterogeneous NDVI distributions were also observed. This spatiotemporal fusion (STF) technique can be used to produce high-resolution NDVI images for any date during the rainy season required for time-series analysis.

摘要

为监测需要高空间和时间分辨率的异质农田,人们提出了各种光学卫星图像融合方法。在本研究中,通过将时空融合(STF)方法应用于哨兵 - 2(S2)和行星观测卫星(PS)的归一化植被指数(NDVI),利用韩国2019年至2021年稻田和异质甘蓝田的图像,生成了三米分辨率的归一化植被指数,同时生成了全长归一化植被指数时间序列(SSFIT)和增强型时空自适应反射率融合方法(ESTARFM)。在融合之前,对S2进行了最大NDVI合成(MNC)和时空间隙填充技术处理,以尽量减少云的影响。融合后的NDVI图像具有与PS相似的空间分辨率,能够更准确地监测小块和异质农田。特别是,SSFIT技术显示出比ESTARFM更高的精度,与PS NDVI相比,均方根误差小于0.16,相关性大于0.8。此外,SSFIT在现场区域处理数据需要四秒钟,而ESTARFM则需要相对较长的五分钟处理时间。在一些应用了ESTARFM的图像中,仍然存在源自S2的异常值,并且还观察到了异质的NDVI分布。这种时空融合(STF)技术可用于生成雨季任何日期的高分辨率NDVI图像,以进行时间序列分析。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/54cd/12389983/3f588c3b2f7f/sensors-25-05183-g001.jpg

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