Combining Classifiers Based on Analysis of Correlation and Effective Supplement
-
摘要: 定义了分类器组合中的相关向量和有效互补性的概念,并提出了一种新的组合准 则,即最大有效互补准则.对人脸图象作正交小波变换,得到它在不同频带上的四个子图象, 然后分别提取奇异值特征.实验表明,这四组特征之间以及相应的分类结果之间的相关性都 较小,组合结果明显优于原始图象的奇异值特征的分类效果,并优于常用的组合方法--计 分法的效果.Abstract: We define the correlative vector and effective supplement for classifiers combination, and bring forward a new combination rule, ie, maximal effective supplement rule. We do orthogonal wavelet transform of a face image, get its four sub-images of different frequency bands, then respectively extract their singular value features. We find in experiment that the correlation within these four feature groups and the correlation of their sorted results are all small, and that the combination results are obviously superior to the classification results of singular value features of the initial images and superior to the commonly used mark-counting combing method. We combine the classifiers with linear weights and use genetic algorithm to train the confident weights of every classifier.
计量
- 文章访问数: 3006
- HTML全文浏览量: 76
- PDF下载量: 1342
- 被引次数: 0