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DeepAD: A Deep Learning Based Approach to Stroke-Level Abnormality Detection in Handwritten Chinese Character Recognition

机译:DeepAD:基于深度学习的手写汉字识别中笔画级别异常检测方法

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Writing abnormality detection is very important in education applications, but has received little attention by the community. Considering that abnormally written strokes (writing error or largely distorted stroke) affect the decision confidence of classifier, we propose an approach named DeepAD to detect stroke-level abnormalities in handwritten Chinese characters by analyzing the decision process of deep neural network (DNN). Firstly, to minimize the effect of stroke width variation of handwritten characters, we propose a skeletonization method based on fully convolutional network (FCN) with cross detection. With a convolutional neural network (CNN) for character classification, we evaluate the role of each skeleton pixel by calculating its impact on the prediction of classifier, and detect abnormal strokes by connecting pixels of negative impact. For quantitative evaluation of performance, we build a template-free dataset named SA-CASIA-HW containing 3696 handwritten Chinese characters with various stroke-level abnormalities, and spanning 3000+ different classes written by 60 individual writers. We validate the usefulness of the proposed DeepAD with comparison to related methods.
机译:书写异常检测在教育应用中非常重要,但很少受到社区的关注。考虑到笔划异常(书写错误或笔划严重变形)会影响分类器的决策可信度,我们提出了一种名为DeepAD的方法,该方法通过分析深度神经网络(DNN)的决策过程来检测手写汉字的笔划级别异常。首先,为了最小化手写字符笔划宽度变化的影响,我们提出了一种基于全卷积网络(FCN)并带有交叉检测的骨架化方法。使用卷积神经网络(CNN)进行字符分类,我们通过计算每个骨架像素对分类器预测的影响来评估每个骨架像素的作用,并通过连接负面影响的像素来检测异常笔画。为了对性能进行定量评估,我们建立了一个名为SA-CASIA-HW的无模板数据集,其中包含3696个具有各种笔画级别异常的手写汉字,并且涵盖了60多个个人作家编写的3000多种不同的类。通过与相关方法进行比较,我们验证了拟议的DeepAD的有用性。

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