Investigation of a novel self-configurable multiple classifier system for character recognition

K. Sirlantzis, M. Fairhurst
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引用次数: 8

Abstract

In this paper we introduce a global optimisation technique, namely a genetic algorithm, into a parallel multiclassifier system design process. As few similar systems have been proposed to date our main focus in this study is to explore the statistical properties of the self-configuration process in order to enhance our understanding of its internal operational mechanism and to propose possible improvements. For this we tested our system in a series of character recognition tasks ranging from printed to handwritten data. Subsequently, we compare its performance with that of two alternative multiple classifier combination strategies. Finally, we investigate, over a set of cross-validating experiments, the relation between the performances of the individual classifiers and their variability, and the frequency with which each of them is chosen to participate in the final configuration generated by the genetic algorithm.
一种新的自配置多分类器字符识别系统的研究
在本文中,我们引入了一种全局优化技术,即遗传算法,用于并行多分类器系统的设计过程。由于迄今为止很少有类似的系统被提出,我们在本研究中的主要重点是探索自配置过程的统计特性,以增强我们对其内部运行机制的理解,并提出可能的改进。为此,我们在一系列从打印到手写数据的字符识别任务中测试了我们的系统。随后,我们将其与两种备选多分类器组合策略的性能进行了比较。最后,通过一组交叉验证实验,我们研究了单个分类器的性能与其可变性之间的关系,以及每个分类器被选择参与遗传算法生成的最终配置的频率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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