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Text detection and localization in natural scene images using MSER and fast guided filter

机译:使用MSER和快速引导滤波器的自然场景图像中的文本检测和定位

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Textual matter present in a natural scene image provides indispensable information about it. The semantics and information present in the natural scene images can be perceived by extracting the text regions in them. Detection and localization of text from natural scene images is a challenging task for analysis of images due to various font size, font type, and illumination. In this paper, we propose a hybrid approach for text detection and localization based on text confidence score using three attributes namely stroke width dissimilarity, color dissimilarity and occupy rate convex area to discern text and non-text constituents. The aim of this paper is to achieve fast detection and localization of text regions in low resolution and blurred images. To accomplish this, the possible candidate regions are extracted using edge smoothing by fast guided filter followed by MSER. The text confidence score on these constituents is calculated using the Bayesian framework with the help of above mentioned three attributes. Experimental results on benchmark ICDAR 2013 testing dataset shows the efficacy of our method in the form of precision, recall, and f-measure.
机译:在自然场景图像中存在的文本物质提供有关它的必不可少的信息。可以通过提取它们中的文本区域来察觉自然场景图像中的语义和信息。来自自然场景图像的文本的检测和定位是由于各种字体大小,字体类型和照明的图像分析图像的具有挑战性任务。在本文中,我们提出了一种基于文本置信度分数的文本检测和定位的混合方法,即使用三个属性,即行程宽度不相似,颜色不相似性和占用速率凸面辨别文本和非文本成分。本文的目的是在低分辨率和模糊图像中实现文本区域的快速检测和定位。为了实现这一点,可以使用边缘平滑通过快速引导滤波器提取可能的候选区域,然后是MSER。这些成分上的文本置信度得分是使用贝叶斯框架计算的,在上面提到的三个属性的帮助下计算。基准ICDAR 2013测试数据集的实验结果显示了我们以精密,召回和F测量形式的方法的功效。

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