Recognition of OBIC's Variants by Using Deep Neural Networks and Spectral Clustering

Guoying Liu, Wenying Ge, Bingxin Du
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引用次数: 1

Abstract

Oracle bone inscriptions (OBIs) are the origin of Chinese characters and play a pivotal role in the study of Chinese civilization and the world civilization. The automatic recognition of OBI character (OBIC) images is very import to the research and promotion of OBI culture. However, a large amount of these ancient characters have variants with totally different appearance, which brings very serious negative impact on the OBI studies. In this paper, we proposed to recognize variants of OBICs by combining deep convolutional neural networks (DCNNs) with spectral clustering (SC). The former is employed to provide accurate descriptions for OBIC images, and the latter is used to find variants of each OBIC class. More specifically, the pretrained ResNet50 is exploited to obtain image features, and the normalized graph cuts is employed to find variants. Besides, a label propagation algorithm is used to find the label of test OBICs based on the clustering results. The proposed method is tested on an OBIC image set, in which all images are cropped from OBI rubbing images. Experimental results have shown that our method has the ability to recognize OBIC's variants.
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基于深度神经网络和谱聚类的OBIC变体识别
甲骨文是汉字的起源,在研究中国文明和世界文明中起着举足轻重的作用。OBI字符图像的自动识别对于OBI文化的研究和推广具有十分重要的意义。然而,这些古文字中有大量的变体具有完全不同的外观,这给OBI研究带来了非常严重的负面影响。本文提出了将深度卷积神经网络(DCNNs)与谱聚类(SC)相结合来识别obic变体的方法。前者用于对OBIC图像进行准确的描述,后者用于查找各OBIC类的变体。更具体地说,利用预训练的ResNet50来获取图像特征,并使用归一化图切来寻找变体。此外,采用标签传播算法,根据聚类结果找到测试obic的标签。在OBIC图像集上进行了测试,其中所有图像都是从OBI摩擦图像中裁剪出来的。实验结果表明,该方法具有识别OBIC变体的能力。
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