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Automated Approach To Classification Of Mine-Like Objects Using Multiple-Aspect Sonar Images

机译:使用多方面声纳图像的类雷目标自动分类方法

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AbstractIn this paper, the detection of mines or other objects on the seabed from multiple side-scan sonar views is considered. Two frameworks are provided for this kind of classification. The first framework is based upon the Dempster–Shafer (DS) concept of fusion from a single-view kernel-based classifier and the second framework is based upon the concepts of multi-instance classifiers. Moreover, we consider the class imbalance problem which is always presents in sonar image recognition. Our experimental results show that both of the presented frameworks can be used in mine-like object classification and the presented methods for multi-instance class imbalanced problem are also effective in such classification.
机译:摘要在本文中,考虑了从多个侧面扫描声纳视图检测海底地雷或其他物体的方法。为此类分类提供了两个框架。第一个框架基于来自基于单视图内核的分类器的Dempster-Shafer(DS)融合概念,第二个框架基于多实例分类器的概念。此外,我们考虑了声纳图像识别中始终存在的类不平衡问题。我们的实验结果表明,所提出的两种框架都可以用于类地雷的目标分类,并且所提出的多实例类不平衡问题的方法在这种分类中也是有效的。

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