HENet: Forcing a Network to Think More for Font Recognition

Jingchao Chen, Shiyi Mu, Shugong Xu, Youdong Ding
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引用次数: 3

Abstract

Although lots of progress were made in Text Recognition /OCR in recent years, the task of font recognition is remaining challenging. The main challenge lies in the subtle difference between these similar fonts, which is hard to distinguish. This paper proposes a novel font recognizer with a pluggable module solving the font recognition task. The pluggable module hides the most discriminative accessible features and forces the network to consider other complicated features to solve the hard examples of similar fonts, called HE Block. Compared with the available public font recognition systems, our proposed method does not require any interactions at the inference stage. Extensive experiments demonstrate that HENet achieves encouraging performance, including on character-level dataset Explor all and word-level dataset AdobeVFR.
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HENet:迫使网络为字体识别思考更多
尽管近年来在文本识别/OCR方面取得了许多进展,但字体识别的任务仍然充满挑战。主要的挑战在于这些相似字体之间的细微差别,很难区分。本文提出了一种具有可插拔模块的新型字体识别器来解决字体识别问题。可插拔模块隐藏了最具鉴别性的可访问特征,并迫使网络考虑其他复杂特征来解决类似字体的困难示例,称为HE Block。与现有的公共字体识别系统相比,我们提出的方法在推理阶段不需要任何交互。大量的实验表明,HENet取得了令人鼓舞的性能,包括字符级数据集exploror all和词级数据集AdobeVFR。
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