基于窗口最大稳定极值区域的场景文本检测文本建议

Feng Su, Wenjun Ding, Lan Wang, Susu Shan, Hailiang Xu
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引用次数: 2

摘要

文本建议的生成(即最有可能包含文本成分的局部候选区域)是场景文本检测任务的关键和前提步骤。最大稳定极值区域算法(maximum Stable extremregion, MSER)作为一种流行的文本提议算法,已被许多成功的文本检测方法所利用,但在处理涉及触摸字符和多个不相连部分组成的复杂场景文本(例如汉字和点阵字体文本)时存在困难。本文提出了一种新的文本建议方法,该方法将MSER算法与多尺度滑动窗口框架相结合,有效地提取出有窗的最大稳定极值区域(WMSERs)作为文本建议。为了在文本检测任务中利用基于wmser的提案,我们进一步提出了有效的提案过滤和分组算法。在公共场景文本数据集上的实验证明了该方法在处理复杂场景文本方面的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Text Proposals Based on Windowed Maximally Stable Extremal Region for Scene Text Detection
The generation of text proposals (i.e. local candidate regions most likely containing textual components) is one critical and prerequisite step in scene text detection task. As one popular text proposal algorithm, the Maximally Stable Extremal Region (MSER), has been exploited by many successful text detection methods, while on the other hand has difficulties in handling complicated scene text involving touching characters and characters composed of multiple unconnected parts (e.g. Chinese characters and text in dot matrix fonts). In this paper, we propose a novel text proposal method for localizing text in natural images, which integrates the MSER algorithm with the multi-scale sliding window framework and efficiently extracts Windowed Maximally Stable Extremal Regions (WMSERs) as text proposals. We further present effective proposal filtering and grouping algorithms for exploiting WMSER-based proposals in text detection task. Experiments on public scene text datasets demonstrate the promising aspects of the proposed method in dealing with complicated scene text.
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