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内陆湖泊水质监测的细节/平滑平衡条件随机场制图方法研究——基于 Landsat-8/Level-2 数据。

Inland Lakes Mapping for Monitoring Water Quality Using a Detail/Smoothing-Balanced Conditional Random Field Based on Landsat-8/Levels Data.

机构信息

Faculty of Resources and Environmental Science, Hubei University, Wuhan 430062, China.

Hubei Key Laboratory of Regional Development and Environmental Response, Hubei University, Wuhan 430062, China.

出版信息

Sensors (Basel). 2020 Feb 29;20(5):1345. doi: 10.3390/s20051345.

Abstract

The sustainable development of water resources is always emphasized in China, and a set of perfect standards for the division of inland water environment quality have been established to monitor water quality. However, most of the 24 indicators that determine the water quality level in the standards are non-optically active parameters. The weak optical characteristics make it difficult to find significant correlations between the single parameters and the remote sensing imagery. In addition, traditional on-site testing methods have been unable to meet the increasingly extensive water-quality monitoring requirements. Based on the above questions, it's meaningful that the supervised classification process of a detail-preserving smoothing classifier based on conditional random field (CRF) and Landsat-8 data was proposed in the two study areas around Wuhan and Huangshi in Hubei Province. The random forest classifier was selected to model the association potential of the CRF. The results (the first study area: OA = 89.50%, Kappa = 0.841; the second study area: OA = 90.35%, Kappa = 0.868) showed that the water-quality monitoring based on CRF model is feasible, and this approach can provide a reference for water-quality mapping of inland lakes. In the future, it may only require a small amount of on-site sampling to achieve the identification of the water quality levels of inland lakes across a large area of China.

摘要

中国一直强调水资源的可持续发展,并制定了一套完善的内陆水环境质量划分标准,以监测水质。然而,标准中确定水质水平的 24 个指标大多是非光活性参数。这些参数的弱光学特性使得很难找到单一参数与遥感图像之间的显著相关性。此外,传统的现场测试方法已经无法满足日益广泛的水质监测要求。基于上述问题,在湖北省武汉市和黄石市周边的两个研究区域,提出了一种基于条件随机场(CRF)和 Landsat-8 数据的保细节平滑分类器的监督分类过程,具有一定的意义。随机森林分类器被选来模拟 CRF 的关联潜力。结果(第一研究区域:OA=89.50%,Kappa=0.841;第二研究区域:OA=90.35%,Kappa=0.868)表明,基于 CRF 模型的水质监测是可行的,这种方法可为内陆湖泊的水质制图提供参考。未来,可能只需要少量的现场采样就可以实现对中国大面积内陆湖泊水质水平的识别。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/546a/7085666/a449af127cfb/sensors-20-01345-g001.jpg

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