Manchu Word Recognition Based on Convolutional Neural Network with Spatial Pyramid Pooling

Min Li, Rui-rui Zheng, Shuang Xu, Yu Fu, Di Huang
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引用次数: 1

Abstract

Manchu character recognition is important in protecting and researching Manchu culture and history. Previous methods of Manchu character recognition are mainly based on conventional machine learning using shallow artificial selection features, thus recognition results are unsatisfactory. The method with convolutional neural networks achieves high accuracy on optical character recognition as the convolution operators can automatically extract deep structure features. The convolutional neural network needs input images with the fixed size, but as a kind of phonemic language, the Manchu word has an arbitrary length. So it is needed to normalize the size of images if applying conventional convolutional neural network directly on Manchu word recognition. This normalization process will restrain the promotion of Manchu character recognition accuracy. This paper utilizes the spatial pyramid pooling layer instead of the last max-pooling layer in a convolutional neural network, and proposes a classifier for recognizing the arbitrary size Manchu word without segmenting the word. Without need of normalizing image sizes, the proposed model obtains the better recognition accuracy. The experiments indicate that the proposed Manchu word recognition models achieve the highest accuracy of 0.9768, higher than the conventional convolutional neural network. Furthermore there is no normalization on input images with arbitrary sizes in recognizing process. The proposed Manchu word recognition models outperform conventional counterparts in both accuracy and flexibility.
基于空间金字塔池化卷积神经网络的满语词识别
满文字识别在保护和研究满族文化和历史方面具有重要意义。以往的满文字识别方法主要是基于传统的机器学习,使用浅层人工选择特征,识别效果不理想。基于卷积神经网络的光学字符识别方法由于卷积算子能自动提取深层结构特征,具有较高的识别精度。卷积神经网络需要输入大小固定的图像,而满文作为一种音位语言,其长度是任意的。因此,将传统卷积神经网络直接应用于满语词识别,需要对图像的大小进行归一化处理。这种归一化过程会抑制满文字识别准确率的提高。本文利用空间金字塔池化层代替卷积神经网络的最后一个最大池化层,提出了一种不分词识别任意大小满文词的分类器。该模型无需对图像尺寸进行归一化处理,具有较好的识别精度。实验表明,本文提出的满语词识别模型准确率达到0.9768,高于传统卷积神经网络。此外,在识别过程中对任意大小的输入图像不进行归一化处理。本文提出的满语词识别模型在准确性和灵活性上都优于传统的识别模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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