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Handwritten Chinese character recognition using fuzzy image alignment

机译:基于模糊图像对齐的手写汉字识别

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摘要

The task of handwritten Chinese character recognition is one of the most challenging areas of human handwriting classification. The main reason for this is related to the writing system itself which encompasses thousands of characters, coupled with high levels of diversity in personal writing styles and attributes. Much of the existing work for both online and off-line handwritten Chinese character recognition has focused on methods which employ feature extraction and segmentation steps. The preprocessed data from these steps form the basis for the subsequent classification and recognition phases. This paper proposes an approach for handwritten Chinese character recognition and classification using only an image alignment technique and does not require the aforementioned steps. Rather than extracting features from the image, which often means building models from very large training data, the proposed method instead uses the mean image transformations as a basis for model building. The use of an image-only model means that no subjective tuning of the feature extraction is required. In addition by employing a fuzzy-entropy-based metric, the work also entails improved ability to model different types of uncertainty. The classifier is a simple distance-based nearest neighbour classification system based on template matching. The approach is applied to a publicly available real-world database of handwritten Chinese characters and demonstrates that it can achieve high classification accuracy and is robust in the presence of noise.
机译:手写汉字识别的任务是人类手写分类最具挑战性的领域之一。造成这种情况的主要原因与书写系统本身有关,该系统包含数千个字符,以及个人书写样式和属性的高度多样性。在线和离线手写汉字识别的许多现有工作都集中在采用特征提取和分割步骤的方法上。这些步骤中的预处理数据构成了后续分类和识别阶段的基础。本文提出了一种仅使用图像对齐技术的手写汉字识别和分类方法,不需要上述步骤。所提出的方法不是从图像中提取特征(通常意味着从非常大的训练数据中构建模型),而是使用均值图像变换作为模型构建的基础。仅图像模型的使用意味着不需要主观调整特征提取。此外,通过采用基于模糊熵的度量,这项工作还需要提高对不同类型的不确定性建模的能力。分类器是基于模板匹配的简单的基于距离的最近邻分类系统。该方法被应用于公开的手写汉字真实世界数据库,并证明该方法可以实现较高的分类精度,并且在存在噪声的情况下具有鲁棒性。

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