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Competitiveness improvement in multi-classifier systems by data equalization

机译:通过数据均衡改进多分类系统的竞争力

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One way of obtaining better recognition result is to have multi-classifier systems. The problem of multi-classifier systems is the lack of competitiveness which degrade the performance of the final output. A data equalization method is proposed to increase the competitiveness of the output activation values of the individual classifier in a multi-classifier system. Data equalization helps to redistribute the output activation values such that the average difference of the output activation values is smaller. The experimental results shows that the proposed method improves the accuracy rate of a combined classifier (CC) which aggregates the output activation values of the front-end classifiers.
机译:获得更好的识别结果的一种方法是具有多分类器系统。多分类系统的问题是缺乏竞争力,降低了最终输出的性能。提出了一种数据均衡方法,以提高多分类系统中各个分类器的输出激活值的竞争力。数据均衡有助于重新分配输出激活值,使得输出激活值的平均差异较小。实验结果表明,该方法提高了组合分类器(CC)的精度率,它聚集了前端分类器的输出激活值。

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