人工神经网络与遗传算法图像分割的比较分析

S. Indira, A. Ramesh
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引用次数: 26

摘要

图像分割是图像处理中的一个重要步骤。大多数分割方法都是参数化的,分割结果取决于估计参数的正确性。在监督分割的情况下,成功分割需要先验知识。因此,在没有先验信息的情况下,采用非参数无监督分割方法。Kohonen的自组织映射(SOM)是一种无监督和非参数的人工神经网络方法,用于识别图像中的主要特征。遗传算法(GA)可以应用于SOM的结果,以获得最优的分割结果。本文对基本SOM、结合遗传算法的SOM以及SOM的一些变体如变结构SOM (VSSOM)、无参数SOM (PLSOM)进行了比较,并对它们的性能进行了评价。结合VSSOM和PLSOM的优点,提出了一种新的无监督非参数方法。在卫星图像上进行的实验表明,与其他方法相比,改进的PLSOM分割方法效率高,分割时间短。
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Image Segmentation Using Artificial Neural Network and Genetic Algorithm: A Comparative Analysis
Image segmentation is an important step in image processing. Most of the segmentation methods are parametric and the results of segmentation depend on the correctness of the estimated parameters. In case of supervised segmentation, a priori knowledge is needed for successful segmentation. So, nonparametric and unsupervised segmentation method is used when a priori information is not available. Kohonen's Self Organizing Maps (SOM), an unsupervised and nonparametric artificial neural network method is used to identify the main features present in the image. Genetic Algorithm (GA) can be applied to the results of SOM for optimal segmentation results. In this paper, the basic SOM, SOM combined with GA and some of the variants of SOM like the Variable Structure SOM (VSSOM), Parameterless SOM (PLSOM) are compared and their performance is evaluated. A new unsupervised, nonparametric method is developed by combining the advantages of VSSOM and PLSOM. The experiments performed on the satellite image shows that the modified PLSOM is efficient and the time taken for the segmentation is less when compared to the other methods.
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