Natural scene text detection based on SWT, MSER and candidate classification

L. Guan, Jizheng Chu
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引用次数: 15

Abstract

This paper presents a novel scene text detection algorithm based on Stroke Width Transform (SWT), Maximally Extremal Regions (MSER) and candidate classification. Firstly, utilize the SWT and MSER to extract the candidate characters at the same time. Secondly, preliminary filtering the candidate connected components based on heuristic rules. Thirdly, using mutual verification and integration to class all candidate into two categories: strong candidates, weak candidates. If the weak candidate has similar properties with strong candidate, then the weak candidate is changed into strong candidate. Finally, the text area is aggregated into text lines by text line aggregation algorithm. The experiment results on public datasets show that the proposed method can detect text lines effectively.
基于SWT、MSER和候选分类的自然场景文本检测
提出了一种基于笔画宽度变换(SWT)、最大极值区域(MSER)和候选分类的场景文本检测算法。首先,利用SWT和MSER同时提取候选字符;其次,基于启发式规则对候选连接组件进行初步筛选。第三,通过相互验证和整合,将所有候选人分为强候选人和弱候选人两类。如果弱候选者与强候选者具有相似的性质,则将弱候选者变为强候选者。最后,通过文本行聚合算法将文本区域聚合为文本行。在公共数据集上的实验结果表明,该方法可以有效地检测文本行。
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