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Chinese calligraphic style representation for recognition

机译:中国书法风格的表现形式

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Chinese calligraphy draws a lot of attention for its beauty and elegance. The various styles of calligraphic characters make calligraphy even more charming. But it is not always easy to recognize the calligraphic style correctly, especially for beginners. In this paper, an automatic character styles representation for recognition method is proposed. Three kinds of features are extracted to represent the calligraphic characters. Two of them are typical hand-designed features: the global feature, GIST and the local feature, scale invariant feature transform. The left one is deep feature which is extracted by a deep convolutional neural network (CNN). The state-of-the-art classifier modified quadratic discriminant function was employed to perform recognition. We evaluated our method on two calligraphic character datasets, the unconstraint real-world calligraphic character dataset (CCD) and SCL (the standard calligraphic character library). And we also compare MQDF with other two classifiers, support vector machine and neural network, to perform recognition. In our experiments, all three kinds of feature are evaluated with all three classifiers, respectively, finding that deep feature is the best feature for calligraphic style recognition. We also fine-tune the deep CNN (alex-net) in Krizhevsky et al. (Advances in Neural Information Processing Systems, pp. 1097-1105, 2012) to perform calligraphic style recognition. It turns out our method achieves about equal accuracy comparing with the fine-tuned alex-net but with much less training time. Furthermore, the algorithm style discrimination evaluation is developed to evaluate the discriminative style quantitatively.
机译:中国书法的优美和典雅吸引了很多关注。各种风格的书法字符使书法更加迷人。但是正确识别书法风格并不总是那么容易,特别是对于初学者而言。本文提出了一种自动字符识别方法。提取三种特征来表示书法字符。其中两个是典型的手工设计特征:全局特征,GIST和局部特征,比例不变特征变换。左边的是深度特征,它是由深度卷积神经网络(CNN)提取的。使用最新的分类器修改的二次判别函数进行识别。我们在两个书法字符数据集(无约束的现实世界书法字符数据集(CCD)和SCL(标准书法字符库))上评估了我们的方法。并且我们还将MQDF与其他两个分类器(支持向量机和神经网络)进行比较,以执行识别。在我们的实验中,分别使用所有三个分类器对这三种特征进行了评估,发现深层特征是书法样式识别的最佳特征。我们还对Krizhevsky等人的深层CNN(alex-net)进行了微调。 (神经信息处理系统的进展,第1097-1105页,2012年)以执行书法样式识别。事实证明,与经过微调的alex-net相比,我们的方法可达到大约相同的精度,但训练时间却少得多。此外,开发了算法风格判别评估以定量评估判别风格。

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