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Robust Localization of Texts in Real-World Images

机译:真实图像中文本的稳健本地化

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摘要

Localization of texts in natural images could be an important stage in many applications such as content-based image retrieval, visual impairment assistance systems, automatic robot navigation in urban environments and tourist assistance systems. However due to the variations of font, script, scale, orientations, color, shadow and lighting conditions, robust scene text localization is still a challenging task. In this paper, we propose a novel method to localize not only Farsi/Arabic and Latin texts with different sizes, fonts and orientations but also low luminance contrast and poor quality ones in the natural images taken with uneven illumination conditions. Firstly, fast weighted median filtering as a nonlinear edge-preserving smoothing filter and then color contrast preserving decolorization are exploited to make the text localization system more robust for low luminance contrast and poor quality texts. In order to extract the Farsi/Arabic and Latin scene texts and also filter the nontext ones, a unified framework is proposed incorporating the maximally stable extremal regions and a novel proposed region detector called Stable Width Stroke Regions which is based on closed boundary regions. Phase congruency and Laplacian operators are exploited to extract the closed boundary regions. Finally, to extract the single text lines, the Meanshift clustering and radon transform were used. Experimental results show that the proposed method localize low luminance contrast and low quality scene texts for both Farsi/Arabic and Latin scripts encouragingly.
机译:自然图像中文本的本地化可能是许多应用程序中的重要阶段,例如基于内容的图像检索,视觉障碍辅助系统,城市环境中的自动机器人导航和游客辅助系统。但是,由于字体,脚本,比例,方向,颜色,阴影和照明条件的变化,强大的场景文本本地化仍然是一项艰巨的任务。在本文中,我们提出了一种新颖的方法,该方法不仅可以定位具有不同大小,字体和方向的波斯/阿拉伯和拉丁文本,而且可以在光照条件不均衡的自然图像中定位低亮度对比度和质量较差的文本。首先,利用快速加权中值滤波作为非线性保留边缘的平滑滤波器,然后利用保留彩色对比度的消色差,使文本定位系统对于低亮度对比度和质量较差的文本更加鲁棒。为了提取波斯语/阿拉伯语和拉丁语场景文本并过滤非文本场景文本,提出了一个统一框架,该框架结合了最大稳定的极值区域和一种基于封闭边界区域的新型提议的区域检测器“稳定宽度笔划区域”。利用相位一致和拉普拉斯算子提取封闭边界区域。最后,为了提取单个文本行,使用了Meanshift聚类和radon变换。实验结果表明,对于波斯语/阿拉伯语和拉丁语脚本,该方法可将低亮度对比度和低质量的场景文本本地化。

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