用装饰元素将文本去风格化

Yuting Ma, Fan Tang, Weiming Dong, Changsheng Xu
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引用次数: 0

摘要

带有装饰元素的风格文字具有强烈的视觉感,丰富了我们日常的工作、学习和生活。然而,它给文本检测和识别带来了新的挑战。在本研究中,我们提出了一个文本去风格化框架,该框架可以将带有装饰元素的风格化文本转换为易于通过检测或识别模型区分的类型。我们整理和整合现有的文体文本数据集来训练去文体化的网络。新的非风格化数据集包含英文字母和中文字符。提出的方法使一个框架可以同时处理中文和英文字母,而不需要额外的网络。实验表明,该方法优于目前最先进的风格相关模型。
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Destylization of text with decorative elements
Style text with decorative elements has a strong visual sense, and enriches our daily work, study and life. However, it introduces new challenges to text detection and recognition. In this study, we propose a text destylized framework, that can transform the stylized texts with decorative elements into a type that is easily distinguishable by a detection or recognition model. We arranged and integrate an existing stylistic text data set to train the destylized network. The new destylized data set contains English letters and Chinese characters. The proposed approach enables a framework to handle both Chinese characters and English letters without the need for additional networks. Experiments show that the method is superior to the state-of-the-art style-related models.
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