利用Sentinel-2 MSI数据评估NDLI识别水面的性能

K. Nguyen, Y. Liou, Le-Thu Ho
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引用次数: 0

摘要

土地覆被和土地利用是影响区域气候的关键决定因子。在本研究中,我们基于2018年获得的Sentinel-2B图像,对台湾台北市进行了LULC分类。本文采用了最近提出的归一化差异潜热指数(NDLI)和归一化差异植被指数(NDVI),并对其进行了比较。验证是基于从谷歌地球和实地调查收集的参考数据集。NDLI和NDVI的总体分类准确率分别为76%和91%。结果表明,NDVI在水体与其他水体(如建成区和裸地)的区分精度分别为100%和95%,而NDVI仅在植被分类上表现较好。此外,对比Sentinel-2B图像的短波红外(SWIR)-2(波段12),我们发现短波红外(SWIR)-2(波段11)对水体的识别更灵敏,可以计算提取水体的NDLI。这一结果进一步表明,正如Liou等人最初提出的[1],NDLI可以作为一种有效的指标,利用Sentinel-2图像检测和绘制水面或建成区或裸地。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluatiing the NDLI's Performance for Identifying Water Surface Using Sentinel-2 MSI Data
Land cover and land use (LULC) are the key determinant factors that influence the regional climate. In this study, we present LULC classification for the Taipei City, Taiwan based on Sentinel-2B image acquired in 2018. A recently-proposed Nomalized Difference Laten Heat Index (NDLI) and Nomalized Difference Vegetation Index (NDVI) are ultilized and compared to derive LULC, in particular, water bodies. Validation is based on reference datasets collected from Google Earth and field survey. Overall accuracices of classification are about 76% for NDLI and 91% for NDVI. However, it is shown that NDLI is highly capable to distinguish the water bodies from the others, such as built-up and bareland with accuracies of 100% and 95%, respectively, while NDVI shows better perfomance on vegetation classificantion only. In addition, it is found that shortwave infrared (SWIR)-2 (band 12) is more sensitive to identify the water bodies in comparison to SWIR-1 (band 11) of Sentinel-2B image to compute NDLI for extracting water bodies. This result further demonstrates that NDLI can be used as an effective indicator to detect and map the water surface or built-up or bareland by using Sentinel-2 imagery as initially suggested by Liou et al. [1].
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