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引用次数: 64

摘要

本文提出了一种基于笔画分量和描述性Gabor滤波器的自然场景图像文本区域检测算法。文本字符和字符串由笔画组件作为基本单位构造。Gabor过滤器用于描述和分析文本字符或字符串中的笔画成分。我们定义了适合度度量来分析Gabor滤波器在描述描边分量时的置信度和Gabor滤波器在图像窗口上的适合度。从训练集中,我们计算了一组Gabor过滤器,可以通过它们的参数来描述文本的主要笔画成分。然后采用K均值算法对描述性Gabor滤波器进行聚类。聚类中心被定义为卒中Gabor词(sgw),以提供卒中成分的通用描述。通过对正、负训练样本分别进行适宜性评价,每个SGW生成一对适宜性测度特征分布。在测试的自然场景图像上,首先采用启发式布局分析提取候选图像窗口。然后计算每个图像窗口的基本sgw来描述其主要描边分量。由原理sgw生成的特征分布用于对文本或非文本窗口进行分类。在基准数据集上的实验结果表明,我们的算法可以处理复杂的背景和不同的文本模式(字体、颜色、比例等)。
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Text Detection in Natural Scene Images by Stroke Gabor Words.

In this paper, we propose a novel algorithm, based on stroke components and descriptive Gabor filters, to detect text regions in natural scene images. Text characters and strings are constructed by stroke components as basic units. Gabor filters are used to describe and analyze the stroke components in text characters or strings. We define a suitability measurement to analyze the confidence of Gabor filters in describing stroke component and the suitability of Gabor filters on an image window. From the training set, we compute a set of Gabor filters that can describe principle stroke components of text by their parameters. Then a K -means algorithm is applied to cluster the descriptive Gabor filters. The clustering centers are defined as Stroke Gabor Words (SGWs) to provide a universal description of stroke components. By suitability evaluation on positive and negative training samples respectively, each SGW generates a pair of characteristic distributions of suitability measurements. On a testing natural scene image, heuristic layout analysis is applied first to extract candidate image windows. Then we compute the principle SGWs for each image window to describe its principle stroke components. Characteristic distributions generated by principle SGWs are used to classify text or nontext windows. Experimental results on benchmark datasets demonstrate that our algorithm can handle complex backgrounds and variant text patterns (font, color, scale, etc.).

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