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An automated mathematical morphology driven algorithm for water body extraction from remotely sensed images

机译:一种自动数学形态学驱动的算法,用于从遥感图像中提取水体

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摘要

The detection and extraction of water bodies from satellite imagery is very important and useful for several planning and developmental activities such as shoreline identification, mapping riverbank erosion, watershed extraction and water resource management. Popular techniques for water body extraction like those based on the normalized difference water index (NDWI) require reflectance information in the green and near-infrared (NIR) bands of the light spectrum. Moreover, some commonly used approaches may perform differently according to the spatial resolution of the images. In this regard, mathematical morphological (MM) techniques for image processing have been employed for spatial feature extraction as they preserve edges and shapes. This study proposes a flexible MM driven approach which is very effective for the extraction of water bodies from several satellite images with different spatial resolution. MM provides effective tools for processing image objects based on size and shape and is particularly adapted for water bodies that have typically specific spatial characteristics. In greater details, the proposed extraction algorithm preserves the actual size and shape of the water bodies since it is based on morphological operators based on geodesic reconstruction. Moreover, the choice of the filter size (called structural element (SE) in MM) in the proposed algorithm is done dynamically allowing one to retain the most precise results from different set of inputs images of different spatial resolution and swath. The availability of more than one spectral band of satellite imagery is not necessary for the proposed algorithm as it utilizes only a single band for its computation. This makes it convenient to apply in single band imageries obtained from satellites such as Cartosat thereby making the proposed approach effective over commonly used methods. The accuracy assessment was carried out and compared with the maximum likelihood (ML) classifier and methods based on spectral indices. In all the five test datasets, extraction accuracy of the proposed MM approach was significantly higher than that of spectral indices and ML methods. The results drawn from visual and qualitative assessments indicated its capability and efficiency in water body extraction from different satellite images.
机译:从卫星图像中检测和提取水体对于许多规划和开发活动非常重要,并且非常有用,例如海岸线识别,河岸侵蚀测绘,集水区提取和水资源管理。诸如基于归一化差水指数(NDWI)的技术之类的流行水体提取技术需要光谱的绿色和近红外(NIR)波段中的反射率信息。此外,一些常用方法可能会根据图像的空间分辨率而有所不同。在这方面,已经将用于图像处理的数学形态学(MM)技术用于空间特征提取,因为它们保留了边缘和形状。这项研究提出了一种灵活的MM驱动方法,对于从具有不同空间分辨率的多个卫星图像中提取水体非常有效。 MM提供了有效的工具,用于根据尺寸和形状处理图像对象,并且特别适用于通常具有特定空间特征的水体。更详细地讲,提出的提取算法保留了水体的实际大小和形状,因为它基于基于测地线重建的形态算子。而且,在所提出的算法中滤波器尺寸的选择(在MM中称为结构元素(SE))是动态完成的,从而可以保留来自不同空间分辨率和幅值的不同输入图像集的最精确结果。对于所提出的算法,不需要一个以上的卫星影像光谱带,因为它仅利用单个频带进行计算。这使得将其方便地应用于从卫星(例如Cartosat)获得的单波段图像中,从而使所提出的方法比常用方法更有效。进行了准确性评估,并与基于光谱指数的最大似然(ML)分类器和方法进行了比较。在所有五个测试数据集中,所提出的MM方法的提取精度显着高于光谱指数和ML方法的提取精度。从视觉和定性评估中得出的结果表明了其从不同卫星图像中提取水体的能力和效率。

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