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Support Vector Machine Applied to Underwater Target Classification

机译:支持向量机在水下目标分类中的应用

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Underwater target classification is a complex task, due to the difficulty in identifying non-overlapping and stable feature set. It is required to choose the right algorithm, approach and technique, or the best combinations of approaches and techniques from a large set of options available in the literature for the specific problem. A binary classifier can tackle the problem by decomposing multiclass problem into binary class. This paper addresses the multiclass underwater classification problem using binary classifier -- Support Vector Machine (SVM). Three methods "all-against-all," "all-against-all Hierarchical," "one-against-all"("AVA", "AVA-H", "OVA") are tried out and performance using a particular feature derived from real data set is compared. A number of metrics are used to compare the performance. OVA gives a better performance with less computation compared to other methods.
机译:由于难以识别不重叠且稳定的特征集,因此水下目标分类是一项复杂的任务。需要从文献中针对特定问题的大量选项中选择正确的算法,方法和技术,或方法和技术的最佳组合。二进制分类器可以通过将多类问题分解为二进制类来解决该问题。本文使用二进制分类器-支持向量机(SVM)解决了多类水下分类问题。尝试了三种方法“全部反对”,“全部反对所有层次”,“全部反对”(“ AVA”,“ AVA-H”,“ OVA”),并使用特定功能进行了性能测试比较从真实数据集得出的结果。许多指标用于比较性能。与其他方法相比,OVA可以通过更少的计算获得更好的性能。

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