基于竞争神经网络的海底类型无监督知识发现:在侧扫声纳图像中的应用

Ahmed Chabane, B. Zerr
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引用次数: 1

摘要

传统的基于监督算法的栖息地映射方法在训练阶段之前需要一个海床地面真值类来了解整个海床类型。这些方法只有在有全面的训练集时才能得到令人满意的结果。如果训练集缺少一种特定的海床,分类器将无法知道它,分类将被简化到最接近已知的沉积物类别。此外,并不总是可行的有一个地面真值样本,通常成本是非常重要的。这就是为什么,自动声纳分类系统正在得到广泛应用。本文研究了声呐图像中海底类型的自动发现。提出了一种基于竞争人工神经网络(CANN)的无监督侧扫描声纳图像分割方法。主要的想法是创建一个无监督的颜色表,使班级的颜色和海底的物理性质之间的联系。这个过程是基于这些步骤的。第一种方法是提取声纳图像的纹理特征。其次,采用自组织特征映射(SOFM)算法将矢量特征映射到二维映射上;然后利用主成分分析(PCA)将SOFM映射结果降维为3个分量。主成分分析得到的三个轴将表示为RGB颜色表。颜色表的最终结果可用于侧扫描声纳图像的监督或无监督分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised knowledge discovery of seabed types using competitive neural network: Application to sidescan sonar images
The conventional approaches for habitats mapping based on supervised algorithms need a seabed ground truth classes to know the entire seabed types before the training phase. These approaches give satisfying results only when a comprehensive training set is available. If the training set lacks a particular kind of seabed, it will be unknown for the classifier and the classification will be reduced to the closest known sediment class. In addition, it is not always feasible to have a ground truth samples and generally costs are very important. This is what, automated sonar systems classification are becoming widely used. This paper is concerned with automated discovery of seabed types in sonar images. A novel unsupervised approach based on competitive artificial neural network (CANN) for sidescan sonar images segmentation is proposed. The main idea is to create an unsupervised color table which allows linking between the class color and the physical nature of the seabed. This process is based on these steps. The first one consists on texture features extraction from sonar images. Secondly, Self-Organizing features maps (SOFM) algorithm is used to project the vector features on two dimensional map. Then principal component analysis (PCA) is applied to reduce the dimensionality of the result of SOFM map to only three components. The three axes obtained by PCA process will be present the RGB color table. The final result of the color table can be used for supervised or unsupervised classification of sidescan sonar images.
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