Increasing Offline Handwritten Chinese Character Recognition Using Separated Pre-Training Models: A Computer Vision Approach

Xiaoli He, Bo Zhang, Yuan Long
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Abstract

Offline handwritten Chinese character recognition involves the application of computer vision techniques to recognize individual handwritten Chinese characters. This technology has significantly advanced the research in online handwriting recognition. Despite its widespread application across various fields, offline recognition faces numerous challenges. These challenges include the diversity of glyphs resulting from different writers’ styles and habits, the vast number of Chinese character labels, and the presence of morphological similarities among characters. To address these challenges, an optimization method based on a separated pre-training model was proposed. The method aims to enhance the accuracy and robustness of recognizing similar character images by exploring potential correlations among them. In experiments, the HWDB and Chinese Calligraphy Styles by Calligraphers datasets were employed, utilizing precision, recall, and the Macro-F1 value as evaluation metrics. We employ a convolutional self-encoder model characterized by high recognition accuracy and robust performance. The experimental results demonstrated that the separated pre-training models improved the performance of the convolutional auto-encoder model, particularly in handling error-prone characters, resulting in an approximate 6% increase in precision.
利用分离式预训练模型提高离线手写汉字识别率:计算机视觉方法
离线手写汉字识别包括应用计算机视觉技术识别单个手写汉字。这项技术极大地推动了在线手写识别的研究。尽管离线识别技术在各个领域得到了广泛应用,但它仍面临着诸多挑战。这些挑战包括不同书写者的书写风格和习惯所导致的字形多样性、大量汉字标签以及汉字之间存在的形态相似性。为了应对这些挑战,我们提出了一种基于分离式预训练模型的优化方法。该方法旨在通过探索相似字符图像之间潜在的相关性,提高识别相似字符图像的准确性和鲁棒性。在实验中,我们使用了 HWDB 和书法家的中国书法风格数据集,以精确度、召回率和 Macro-F1 值作为评价指标。我们采用的卷积自编码器模型具有识别精度高、性能稳定的特点。实验结果表明,分离的预训练模型提高了卷积自编码器模型的性能,尤其是在处理容易出错的字符方面,使精确度提高了约 6%。
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