基于模糊图像凝结的手写体汉字识别分类系统

Fangyi Li, Q. Shen, Ying Li, Neil MacParthaláin
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摘要

手写体汉字的识别和分类对自动化方法提出了重大挑战。事实上,汉字的数量之多、错综复杂的汉字以及书写风格的变化意味着,即使对人类来说,这项任务也很困难。该领域以前的工作集中在执行某种形式的特征提取和分割的方法上,作为构建执行该任务的系统的基础。本文提出了两种基于模糊熵度量的图像对齐技术的手写体汉字识别和分类方法。该方法没有从图像中提取特征,这通常会导致主观的和较差的拟合模型,而是使用训练阶段的平均图像变换作为构建模型的基础。使用基于模糊熵的度量也意味着提高了对不同类型不确定性建模的能力。然后对图像变换的均值进行整理,并将其作为训练数据对测试字符图像进行分类。然后使用基于欧几里得距离的最近邻分类器对每个测试字符进行分类。将该方法应用于一个公开的真实中文手写体数据库,结果表明该方法能达到较高的分类精度。
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A fuzzy image congealing-based handwritten Chinese character recognition and classification system
The recognition and classification of handwritten Chinese characters poses a significant challenge for automated methods. Indeed the sheer number of characters, intricate complexity of such characters, and variations in writing styles mean that the task can be difficult even for humans. Previous work in this area has focused upon methods which perform a certain form of feature extraction and segmentation as the basis for building systems to perform this task. This paper proposes two approaches for handwritten Chinese character recognition and classification using an image alignment technique based on a fuzzy-entropy metric. Rather than extracting features from the image, which can often result in subjective and poorly-fitting models, the proposed methods instead uses the mean image transformations of the training phase as a basis for building models. The use of a fuzzy-entropy based metric also means improved ability to model different types of uncertainty. The mean image transformations are then collated, and used as training data to classify the images of test characters. A nearest-neighbour classifier based on Euclidean distance is then used to classify each test character. The approaches are applied to a publicly available real-world database of handwritten Chinese characters and demonstrate that they can achieve high classification accuracy.
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