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A novel cascade ensemble classifier system with a high recognition performance on handwritten digits

机译:一种新颖的手写数字级联集成分类器系统

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This paper presents a novel cascade ensemble classifier system for the recognition of handwritten digits. This new system aims at attaining a very high recognition rate and a very high reliability at the same time, in other words, achieving an excellent recognition performance of handwritten digits. The trade-offs among recognition, error, and rejection rates of the new recognition system are analyzed. Three solutions are proposed: (i) extracting more discriminative features to attain a high recognition rate, (ii) using ensemble classifiers to suppress the error rate and (iii) employing a novel cascade system to enhance the recognition rate and to reduce the rejection rate. Based on these strategies, seven sets of discriminative features and three sets of random hybrid features are extracted and used in the different layers of the cascade recognition system. The novel gating networks (GNs) are used to congregate the confidence values of three parallel artificial neural networks (ANNs) classifiers. The weights of the GNs are trained by the genetic algorithms (GAs) to achieve the overall optimal performance. Experiments conducted on the MNIST handwritten numeral database are shown with encouraging results: a high reliability of 99.96% with minimal rejection, or a 99.59% correct recognition rate without rejection in the last cascade layer. (c) 2007 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved..
机译:本文提出了一种新颖的级联集成分类器系统,用于手写数字的识别。该新系统旨在同时获得很高的识别率和很高的可靠性,换言之,实现了手写数字的出色识别性能。分析了新识别系统在识别,错误和拒绝率之间的权衡。提出了三种解决方案:(i)提取更多的判别特征以获得较高的识别率;(ii)使用集成分类器来抑制错误率;(iii)采用新颖的级联系统来提高识别率并降低拒绝率。基于这些策略,提取了七组区分特征和三组随机混合特征,并在级联识别系统的不同层中使用。新型门控网络(GNs)用于汇总三个并行人工神经网络(ANN)分类器的置信度值。 GN的权重由遗传算法(GA)进行训练,以实现整体最佳性能。在MNIST手写数字数据库上进行的实验显示出令人鼓舞的结果:99.96%的高可靠性和最小的拒绝率,或在最后一个层叠层中没有拒绝的99.59%正确识别率。 (c)2007模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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