一种多分类器融合决策的自适应权正则化方法

Zhu Xufeng, Ma Biao, Guo Guanjun
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引用次数: 1

摘要

介绍了飞机类型识别方法的难点,讨论了多分类器融合决策方法的必要性。利用Hu矩、仿射矩、Zernike矩、小波矩等不变量构造4个SVM分类器。在以上四种分类器的基础上,提出了一种自适应权值正则化方法来提高飞机型号分类性能。实验表明,本文方法的识别率优于上述四种分类器、固定权值多分类器融合方法和多数多分类器融合方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An adaptive-weight regularization method for multi-classifier fusion decision
The difficulties of aircraft type recognition methods are introduced and the necessity of multi-classifier fusion decision method is discussed. The some kinds of invariants: Hu moments, Affine moments, Zernike moments, Wavelet moments, are used for constructing four SVM classifiers. Based on the above four classifiers, an adaptive-weight regularization method is proposed for improving aircraft type classification performance. Experiments are shown that, the recognition rate by the proposed method in this paper is better than any classifier of the above four classifiers, the fixed-weight multi-classifier fusion method and the majority multi-classifier fusion method.
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