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Incremental clustering of sonar images using self-organizing maps combined with fuzzy adaptive resonance theory

机译:使用自组织映射结合模糊自适应共振理论的声纳图像增量聚类

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摘要

In this paper we introduce a new unsupervised segmentation algorithm for textured sonar images. A Dynamic Self-Organizing Maps (DSOM) algorithm capable of incremental learning has been developed to automatically cluster the input data into relevant classes of seabed. DSOM algorithm is an extension of classical Self Organizing Maps (SOM) algorithm combined with Adaptive Resonance Theory (ART) technique. The proposed approach is based on growing map size during learning processes. Starting with a minimal number of neurons, the map size increases dynamically and the growth is controlled by the vigilance threshold of the ART network. To assess the consistency of the proposed approach, the DSOM algorithm is first tested on simulated data sets and then applied on real sidescan sonar images. The results obtained using the proposed approach demonstrate its capability to successfully cluster sonar images into their relevant seabed classes, very close to those resulting from human expert interpretation.
机译:在本文中,我们介绍了一种新的无监督声纳图像分割算法。已经开发了一种能够进行增量学习的动态自组织图(DSOM)算法,以自动将输入数据聚类到相关的海床类别中。 DSOM算法是经典自组织映射(SOM)算法与自适应共振理论(ART)技术相结合的扩展。所提出的方法基于学习过程中地图尺寸的增加。从最小数量的神经元开始,映射大小会动态增加,并且增长由ART网络的警戒阈值控制。为了评估所提出方法的一致性,首先在模拟数据集上测试了DSOM算法,然后将其应用于真实的侧扫声纳图像。使用所提出的方法获得的结果证明了其将声纳图像成功地聚类到其相关海床类别的能力,非常接近于人类专家的解释所产生的那些。

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