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Design of a Very Compact CNN Classifier for Online Handwritten Chinese Character Recognition Using DropWeight and Global Pooling

机译:基于DropWeight和全局池的在线手写汉字识别的紧凑型CNN分类器设计。

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Currently, owing to the ubiquity of mobile devices, online handwritten Chinese character recognition (HCCR) has become one of the suitable choice for feeding input to cell phones and tablet devices. Over the past few years, larger and deeper convolutional neural networks (CNNs) have extensively been employed for improving character recognition performance. However, its substantial storage requirement is a significant obstacle in deploying such networks into portable electronic devices. To circumvent this problem, we use a novel technique called DropWeight for pruning redundant connections in the CNN architecture. It is revealed that the method not only treats streamlined architectures such as AlexNet and VGGNet well but exhibits remarkable performance for deep residual network and inception network. We also demonstrate that global pooling is a better choice for building very compact online HCCR systems. Experiments were performed on the ICDAR-2013 online HCCR competition dataset using our proposed network, and it is found that the proposed approach requires only 0.57 MB for storage, whereas state-of-the-art CNN-based methods require up to 135 MB; meanwhile the performance is decreased only by 0.91%.
机译:当前,由于移动设备的普及,在线手写汉字识别(HCCR)已成为向手机和平板电脑设备提供输入的合适选择之一。在过去的几年中,更大,更深的卷积神经网络(CNN)已广泛用于改善字符识别性能。然而,其大量的存储需求是将这样的网络部署到便携式电子设备中的重大障碍。为了解决这个问题,我们使用一种称为DropWeight的新颖技术来修剪CNN架构中的冗余连接。结果表明,该方法不仅可以很好地处理AlexNet,VGGNet等精简架构,而且在深度残差网络和初始网络中表现出卓越的性能。我们还证明,全局池是构建非常紧凑的在线HCCR系统的更好选择。使用我们建议的网络对ICDAR-2013在线HCCR竞赛数据集进行了实验,发现建议的方法仅需要0.57 MB的存储空间,而基于CNN的最新方法需要的最大存储空间为135 MB。同时性能仅下降0.91 \%。

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