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Diversity in multiple classifier ensembles based on binary feature quantisation with application to face recognition

机译:基于二进制特征量化的多分类器集合中的多样性及其在人脸识别中的应用

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摘要

In this paper we present two methods to create multiple classifier systems based on an initial transformation of the original features to the binary domain and subsequent decompositions (quantisation). Both methods are generally applicable although in this work they are applied to grey-scale pixel values of facial images which form the original feature domain. We further investigate the issue of diversity within the generated ensembles of classifiers which emerges as an important concept in classifier fusion and propose a formal definition based on statistically independent classifiers using the K statistic to quantitatively assess it. Results show that our methods outperform a number of alternative algorithms applied on the same dataset, while our analysis indicates that diversity among the classifiers in a combination scheme is not sufficient to guarantee performance improvements. Rather, some type of trade off seems to be necessary between participant classifiers' accuracy and ensemble diversity in order to achieve maximum recognition gains.
机译:在本文中,我们基于原始特征到二进制域的初始转换以及随后的分解(量化)提出了两种创建多个分类器系统的方法。这两种方法通常都是适用的,尽管在这项工作中,它们都被应用于形成原始特征域的面部图像的灰度像素值。我们进一步调查生成的分类器集合中的多样性问题,这是分类器融合中的一个重要概念,并基于统计独立的分类器,使用K统计量对它进行定量评估,提出了一个正式定义。结果表明,我们的方法优于应用于同一数据集的许多替代算法,而我们的分析表明,组合方案中分类器之间的多样性不足以保证性能的提高。相反,在参与者分类器的准确性和整体多样性之间似乎有必要进行某种取舍,以实现最大的识别增益。

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