数字识别分类器的聚类相关训练方法

Igor Sevo, Aleksandar Kelecevic
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引用次数: 1

摘要

提出了一种用于手写体数字识别的卷积神经网络聚类方法。神经网络被单独训练,使用相同的训练集,并根据所使用的训练方法组合成簇。这些集群形成了一个分层架构,当前一层不能足够确定地识别给定的数字时,每一层都试图识别给定的数字。我们研究了组合这些集群和训练它们的组成网络的各种方法。
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Clustered class-dependant training method for digit recognition classifiers
This paper presents a convolutional neural network clustering approach for handwritten digits recognition. Neural networks were trained individually, using the same training set and combined into clusters, depending on the training method used. These clusters formed a layered architecture, where each layer attempted to recognize the given digit, when the previous layers were not able to do so with sufficient certainty. We examine various ways of combining such clusters and training their constituent networks.
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