Real-time Classifier of Multilingual Font Styles based on ResNet, SwordNet, Logistic Regression and Random Forest Algorithms

Yue Wu
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Abstract

Different languages have different characters. At the same time, each character has a lot of font styles. This makes it difficult for humans to recognize different font styles for different characters. However, being able to detect and identify these font styles quickly and accurately has many important application use cases in different fields. At the same time, a large number of Internet users use web pages to query font styles. Therefore, I choose to make this real-time multilingual font style recognition algorithm. In this paper, I propose an algorithm that recognizes the input text and pictures in real time to judge the language and style of the text. It includes ResNet, SwordNet, logistic regression and random forest algorithms. The whole algorithm also calls pytesseract and Google Tesseract to realize text recognition and text positioning. I used Font Datasets used in "Font and Calligraphy Style Recognition Using Complex Wavelet Transform" for training. At the same time, I also built an image text recognition algorithm and generated various font styles as a data source. Based on this data, we adjusted the parameters and finally achieved an accuracy rate higher than 90%.
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基于ResNet、SwordNet、Logistic回归和随机森林算法的多语言字体样式实时分类器
不同的语言有不同的字符。同时,每个字符都有很多字体样式。这使得人们很难识别不同字符的不同字体样式。然而,能够快速准确地检测和识别这些字体样式在不同领域有许多重要的应用用例。同时,大量的互联网用户使用网页查询字体样式。因此,我选择做这个实时多语言字体样式识别算法。在本文中,我提出了一种实时识别输入文本和图片的算法,以判断文本的语言和风格。它包括ResNet, SwordNet,逻辑回归和随机森林算法。整个算法还调用pytesseract和Google Tesseract来实现文本识别和文本定位。我使用了《用复小波变换识别字体和书法风格》中用到的字体数据集进行训练。同时,我还构建了一个图像文本识别算法,并生成了各种字体样式作为数据源。根据这些数据,我们调整了参数,最终达到了90%以上的准确率。
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