基于SVM分类器的3类水下目标识别交替特征优化

W. Haiyan, Tian Na, Z. Xiaomin, Feng Xi-an, Zhao Ni
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引用次数: 1

摘要

介绍并分析了一种新的基于交替特征优化的信号处理方法。在此基础上,提出了一种基于优化特征和支持向量机的水下目标识别系统。该系统利用交替特征提取方法优化特征选择过程。优化后的特征集提供一个基于传统二值支持向量机分类器的3类分类模块。优化后的特征集减轻了SVM分类器的负担,提高了SVM分类器的学习速度和分类精度。本文包括交替特征优化算法、支持向量机的分类机制和仿真研究。结果表明,该系统具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Alternate feature optimization for 3-class underwater target recognition based on SVM classifiers
A novel signal processing method based on alternate feature optimization is introduced and analyzed in this paper. And a new underwater target recognition system using the optimized feature and SVM (support vector machine) is presented here. The system utilizes the alternate feature extraction method to optimize the feature selection process. The optimized feature set feeds a 3-class classification module, which is based on the traditional binary SVM classifier. The optimized feature set reduces the burden of the SVM classifier and improves its learning speed and classification accuracy. The paper includes, the algorithm of alternate feature optimization, the classification mechanism of SVM and the simulation studies. The result indicates that the proposed system has excellent performance.
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