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Building fast and compact convolutional neural networks for offline handwritten Chinese character recognition

机译:建立快速和紧凑的卷积神经网络,用于离线手写汉字识别

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摘要

Like other problems in computer vision, offline handwritten Chinese character recognition (HCCR) has achieved impressive results using convolutional neural network (CNN)-based methods. However, larger and deeper networks are needed to deliver state-of-the-art results in this domain. Such networks intuitively appear to incur high computational cost, and require the storage of a large number of parameters, which render them unfeasible for deployment in portable devices. To solve this problem, we propose a Global Supervised Low-rank Expansion (GSLRE) method and an Adaptive Drop-weight (ADW) technique to solve the problems of speed and storage capacity. We design a nine-layer CNN for HCCR consisting of 3755 classes, and devise an algorithm that can reduce the network's computational cost by nine times and compress the network to 1/18 of the original size of the baseline model, with only a 0.21% drop in accuracy. In tests, the proposed algorithm can still surpass the best single-network performance reported thus far in the literature while requiring only 2.3MB for storage. Furthermore, when integrated with our effective forward implementation, the recognition of an offline character image takes only 9.7 ms on a CPU. Compared with the state-of-the-art CNN model for HCCR, our approach is approximately 30 times faster, yet 10 times more cost efficient. (C) 2017 Elsevier Ltd. All rights reserved.
机译:与计算机视觉中的其他问题一样,脱机手写汉字识别(HCCR)已经使用卷积神经网络(CNN)的方法实现了令人印象深刻的结果。但是,需要更大的网络来提供最先进的结果。这种网络直观地似乎会产生高计算成本,并且需要存储大量参数,这使得它们在便携式设备中部署不可行。为了解决这个问题,我们提出了一个全球监督的低级扩展(GSLRE)方法和自适应滴重(ADW)技术来解决速度和存储容量的问题。我们为HCCR设计了9层CNN,由3755类组成,设计了一种可以将网络的计算成本降低九次的算法,并将网络压缩到基线模型的原始尺寸的1/18,只有0.21%放下准确性。在测试中,所提出的算法仍然超出到目前为止报告的最佳网络性能,同时需要2.3MB以进行存储。此外,当与我们的有效前进实施集成时,识别脱机字符图像在CPU上只需要9.7毫秒。与HCCR的最先进的CNN模型相比,我们的方法速度快大约30倍,但成本效益的10倍。 (c)2017 Elsevier Ltd.保留所有权利。

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