Canny文本检测器:快速鲁棒的场景文本定位算法

Hojin Cho, Myung-Chul Sung, Bongjin Jun
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引用次数: 104

摘要

本文提出了一种新的场景文本检测算法——Canny文本检测算法,该算法利用图像边缘和文本之间的相似性进行有效的文本定位,提高了召回率。由于紧密相关的边缘像素构建了对象的结构信息,我们观察到内聚字符组成有意义的单词/句子,无论使用何种语言,它们都具有相似的属性,如空间位置、大小、颜色和笔画宽度。然而,目前流行的场景文本检测方法并没有充分利用这种相似性,而是大多依赖于高置信度分类的字符,导致召回率很低。通过利用相似度,我们的方法可以快速、稳健地定位各种文本。该算法受Canny边缘检测器的启发,利用双阈值和迟滞跟踪来检测低置信度的文本。在公共数据集上的实验结果表明,我们的算法在检测率方面优于目前最先进的场景文本检测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Canny Text Detector: Fast and Robust Scene Text Localization Algorithm
This paper presents a novel scene text detection algorithm, Canny Text Detector, which takes advantage of the similarity between image edge and text for effective text localization with improved recall rate. As closely related edge pixels construct the structural information of an object, we observe that cohesive characters compose a meaningful word/sentence sharing similar properties such as spatial location, size, color, and stroke width regardless of language. However, prevalent scene text detection approaches have not fully utilized such similarity, but mostly rely on the characters classified with high confidence, leading to low recall rate. By exploiting the similarity, our approach can quickly and robustly localize a variety of texts. Inspired by the original Canny edge detector, our algorithm makes use of double threshold and hysteresis tracking to detect texts of low confidence. Experimental results on public datasets demonstrate that our algorithm outperforms the state-of the-art scene text detection methods in terms of detection rate.
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