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A Study of Designing Compact Classifiers Using Deep Neural Networks for Online Handwritten Chinese Character Recognition

机译:利用深度神经网络设计紧凑分类器进行在线手写汉字识别的研究

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This paper presents a study of designing compact classifiers using deep neural networks for recognition of online handwritten Chinese characters. Two schemes are investigated based on practical considerations. First, deep neural networks are adopted purely as a classifier with a state-of-the-art feature extractor of online handwritten Chinese characters. Second, the so-called bottleneck features extracted from a bottleneck layer of deep neural networks are fed to the prototype-based classifier. The experiments on an in-house developed online Chinese handwriting corpus with a vocabulary of 15,167 characters show that compared with prototype-based classifier widely developed on the mobile device, deep neural network based classifier can yield significant improvements of recognition accuracy with acceptably increased footprint and latency while the bottleneck-feature approach can bring a more compact classifier with an observable performance gain.
机译:本文提出了使用深度神经网络设计紧凑分类器以识别在线手写汉字的研究。基于实际考虑,研究了两种方案。首先,深度神经网络被纯粹用作分类器,具有在线手写汉字的最新特征提取器。其次,将从深度神经网络的瓶颈层提取的所谓瓶颈特征馈送到基于原型的分类器中。对内部开发的具有15167个字符的词汇的在线中文手写语料库进行的实验表明,与在移动设备上广泛开发的基于原型的分类器相比,基于深度神经网络的分类器可以显着提高识别精度,并且足迹和可接受的增加。瓶颈特征方法可以带来更小的延迟,并带来可观察到的性能提升。

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