Classification of remote sensed image using Rapid Genetic k-Means algorithm

S. Arunprasath, S. Chandrasekar, K. Venkatalakshmi, S. Shalinie
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引用次数: 3

Abstract

An attempt has been made in the paper to find globally optimal cluster centers for remote-sensed images with the proposed Rapid Genetic k-Means algorithm. The idea is to avoid the expensive crossover or fitness to produce valid clusters in pure GA and to improve the convergence time. The drawback of using pure GA in the problem is the usage of an expensive crossover or fitness to produce valid clusters (Non-empty clusters). To circumvent the disadvantage of GA, hybridization of GA with k-Means as Genetic k-Means (GKA) is already proposed[GKA, Fast,Flash]. The Genetic k-Means Algorithm always finds the globally optimal cluster centers but the drawback is the usage of an expensive fitness function which involves σ truncation. The Rapid GKA alleviates the problem by using a simple fitness function with an incremental factor. A k-Means operator, one-step of k-Means algorithm, used in GKA as a search operator is adopted in this paper. In Rapid GKA the mutation involves less computation than the mutation involved in GKA and Fast GKA(FGKA). In order to avoid the invalid clusters formed during the iterations the empty clusters are converted into singleton cluster by adding a randomly selected data item until none of the cluster is empty. The results show that the proposed algorithm converges to the global optimum in fewer numbers of generations than conventional GA and also found to consume less computational complexity than GKA and FGKA. It proves to be an effective clustering algorithm for remote sensed images.
基于快速遗传k-均值算法的遥感图像分类
本文尝试用快速遗传k-均值算法寻找遥感图像全局最优聚类中心。其思想是在纯遗传算法中避免昂贵的交叉或适应度来产生有效的聚类,并提高收敛时间。在问题中使用纯遗传算法的缺点是使用昂贵的交叉或适应度来产生有效的聚类(非空聚类)。为了克服遗传算法的缺点,已经提出将遗传算法与k-Means杂交作为遗传k-Means (GKA) [GKA, Fast,Flash]。遗传k-均值算法总是找到全局最优的聚类中心,但缺点是使用了一个昂贵的适应度函数,并且涉及σ截断。Rapid GKA通过使用带有增量因子的简单适应度函数缓解了这个问题。本文采用GKA中使用的k-Means算子,即一步k-Means算法作为搜索算子。与快速GKA和快速GKA(FGKA)相比,快速GKA的突变需要较少的计算。为了避免在迭代过程中形成无效簇,通过添加随机选择的数据项将空簇转换为单簇,直到簇中没有一个为空。结果表明,该算法比传统遗传算法在更少的代数下收敛到全局最优,并且比GKA和FGKA消耗更少的计算复杂度。该算法是一种有效的遥感图像聚类算法。
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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