Shannon entropy based fuzzy distance norm for pixel classification in remote sensing imagery

Madhumita Bhowmik, Anasua Sarkar, R. Das
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引用次数: 3

Abstract

Pixel classification of mixed pixels in overlapping regions of remote sensing images is a very challenging task. Efficiency and detection of uncertainty are always the key ingredients for this task. This paper proposes an approach for pixel classification using Shannon's entropy-based fuzzy distance norm. Unsupervised clustering is used to group the objects based on some similarity or dissimilarity. The proposed algorithm is able to identify clusters comparing fuzzy membership values based on Shannon's entropy evaluation. This new normalized definition of the distance also satisfies separability, symmetric and triangular inequality conditions for a distance metric. This approach addresses the overlapping regions in remote sensing images by uncertainties using fuzzy set membership values. Shannon entropy further introduces belongingness and non-belongingness to one cluster within the distance measure. We demonstrate our algorithm for segmenting a LANDSAT image of Shanghai. The newly developed algorithm is compared with FCM and K-Means algorithms. The new algorithm generated clustered regions are verified with on hand ground truth facts. The validity and statistical analysis are carried out to demonstrate the superior performance of our new algorithms with K-Means and FCM algorithms.
基于Shannon熵的模糊距离范数遥感图像像元分类
遥感图像重叠区域混合像元的分类是一项非常具有挑战性的任务。效率和不确定度的检测一直是这项任务的关键因素。本文提出了一种基于Shannon熵的模糊距离范数的像素分类方法。无监督聚类是基于一些相似或不相似的对象进行分组。该算法基于香农熵评价,通过比较模糊隶属度值来识别聚类。这种新的归一化距离定义还满足距离度量的可分性、对称不等式和三角不等式条件。该方法利用模糊集隶属度值的不确定性来处理遥感图像中的重叠区域。香农熵进一步在距离度量范围内引入聚类的归属性和非归属性。我们展示了我们的算法分割上海的LANDSAT图像。将新算法与FCM和K-Means算法进行了比较。新算法生成的聚类区域用现有的地面事实进行了验证。有效性和统计分析表明,我们的新算法与K-Means和FCM算法相比具有优越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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