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Multi-oriented text detection from natural scene images based on a CNN and pruning non-adjacent graph edges

机译:基于CNN的自然场景图像和修剪非相邻图形边缘的多面文本检测

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Due to the complex backgrounds, size variations, and changes in perspective and orientation in natural scene images, detecting multi-oriented text is a difficult problem that has recently attracted considerable attention from research communities. In this paper, we present a novel method that effectively and robustly detects multi-oriented text in natural scene images. First, the candidate characters are generated by an exhaustive segmentation-based method that can extract characters in arbitrary orientations. Second, a convolutional neural network (CNN) model is employed to filter out the non-character regions; this model is also robust to arbitrary character orientations. Finally, text-line grouping is treated as a problem of pruning non-adjacent graph edges from a graph in which each vertex represents a character candidate region. To evaluate our algorithm, we compare it with other existing algorithms by performing experiments on three public datasets: ICDAR 2013, the Oriented Scene Text Dataset (OSTD) and USTB-SV1K. The results show that the proposed method handles any arbitrary text orientation well, and it achieves promising results on these three public datasets.
机译:由于复杂的背景,大小变化和自然场景图像中的透视和方向的变化,检测多种文本是最近引起了研究社区的相当关注的难题。在本文中,我们提出了一种有效且强大地检测自然场景图像中的多面文本的新方法。首先,候选字符由基于穷举的基于分段的方法生成,可以提取任意取向的字符。其次,采用卷积神经网络(CNN)模型来滤除非角色区域;该模型对任意字符方向也是强大的。最后,文本线分组被视为从每个顶点代表一个字符候选区域的图中修剪非相邻图形边的问题。为了评估我们的算法,我们通过在三个公共数据集上执行实验:ICDAR 2013,面向的场景文本数据集(OSTD)和USTB-SV1K来将其与其他现有算法进行比较。结果表明,该方法井处理任何任意文本方向,并实现这三个公共数据集的有希望的结果。

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