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An Adaptive Memetic Fuzzy Clustering Algorithm With Spatial Information for Remote Sensing Imagery

机译:具有空间信息的遥感影像自适应模因模糊聚类算法

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摘要

Due to its inherent complexity, remote sensing image clustering is a challenging task. Recently, some spatial-based clustering approaches have been proposed; however, one crucial factor with regard to their clustering quality is that there is usually one parameter that controls their spatial information weight, which is difficult to determine. Meanwhile, the traditional optimization methods of the objective functions for these clustering approaches often cannot function well because they cannot simultaneously possess both a local search capability and a global search capability. Furthermore, these methods only use a single optimization method rather than hybridizing and combining the existing algorithmic structures. In this paper, an adaptive fuzzy clustering algorithm with spatial information for remote sensing imagery (AFCM_S1) is proposed, which defines a new objective function with an adaptive spatial information weight by using the concept of entropy. In order to further enhance the capability of the optimization, an adaptive memetic fuzzy clustering algorithm with spatial information for remote sensing imagery (AMASFC) is also proposed. In AMASFC, the clustering problem is transformed into an optimization problem. A memetic algorithm is then utilized to optimize the proposed objective function, combining the global search ability of a differential evolution algorithm with a local search method using Gaussian local search (GLS). The optimal value of the specific parameter in GLS, which determines the local search efficiency, can be obtained by comparing the objective function increment for different values of the parameter. The experimental results using three remote sensing images show that the two proposed algorithms are effective when compared with the traditional clustering algorithms.
机译:由于其固有的复杂性,遥感图像聚类是一项艰巨的任务。最近,已经提出了一些基于空间的聚类方法。但是,关于它们的聚类质量的一个关键因素是通常有一个参数控制它们的空间信息权重,这很难确定。同时,用于这些聚类方法的目标函数的传统优化方法通常不能很好地起作用,因为它们不能同时具有本地搜索能力和全局搜索能力。此外,这些方法仅使用单个优化方法,而不是对现有算法结构进行混合和组合。提出了一种具有空间信息的遥感影像自适应模糊聚类算法(AFCM_S1),该算法利用熵的概念定义了具有自适应空间信息权重的新目标函数。为了进一步提高优化能力,提出了一种具有空间信息的遥感影像自适应模因模糊聚类算法(AMASFC)。在AMASFC中,聚类问题转化为优化问题。然后利用模因算法来优化拟议的目标函数,将差分进化算法的全局搜索能力与使用高斯局部搜索(GLS)的局部搜索方法相结合。可以通过比较参数的不同值的目标函数增量来获得确定局部搜索效率的GLS中特定参数的最佳值。使用三幅遥感影像的实验结果表明,与传统聚类算法相比,两种算法是有效的。

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