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A new wavelet-Laplacian method for arbitrarily-oriented character segmentation in video text lines

机译:视频文本行中任意方向的字符分割的小波-拉普拉斯方法

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Character segmentation is an important topic to improve the overall performance of text recognition methods due to low resolution, complex background and lots of visual variations in video. This paper presents a novel idea for segmenting characters from arbitrarily-oriented text lines based on wavelet and Laplacian combination. Firstly, we explore wavelet which decomposes a given input image into sub-levels like a pyramid structure for segmenting words based on the fact that as decomposition level increases, the gap between characters decreases due to the reduction in the size of the input image, which results in a single component for each word. Secondly, for each segmented word, we propose Laplacian wavelet combination in a new way to extract text candidates. Thirdly, we propose horizontal and vertical sampling for character segmentation from words. The proposed method is tested on curved, non-horizontal and horizontal text lines of video and the ICDAR 2005 natural scene dataset to evaluate its performance. A comparative study with an existing method shows that the proposed method outperforms it in terms of precision and f-measure.
机译:由于分辨率低,背景复杂且视频中存在许多视觉变化,因此字符分割是提高文本识别方法整体性能的重要主题。本文提出了一种基于小波和拉普拉斯组合从任意定向文本行中分割字符的新思路。首先,我们探索小波,该小波将一个给定的输入图像分解为像金字塔结构这样的子级别,以分割单词,这是基于以下事实:随着分解级别的增加,字符之间的间隙由于输入图像尺寸的减小而减小,结果是每个单词只有一个组成部分。其次,对于每个分割的词,我们提出了一种新的拉普拉斯小波组合来提取候选文本。第三,我们提出了水平和垂直采样以从单词中进行字符分割。该方法在视频的弯曲,非水平和水平文本行以及ICDAR 2005自然场景数据集上进行了测试,以评估其性能。与现有方法的比较研究表明,该方法在精度和f测度方面优于其方法。

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