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A learning-based text detection method in camera images

机译:相机图像中基于学习的文本检测方法

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This paper proposed a learning-based text detection method in camera images. First, we find 280 pictures of book covers, CD covers and movie posters shot with cameras on Internet. We manually label and extract text regions in them. Second, based on statistical analysis of the difference between text and non-text samples, we get three sets of features which are used to produce weak classifiers. Third, Ada-boost is utilized to select and combine these weak classifiers into two-stage attentional cascade. At last, this two-stage cascade can detect text area in images by classifying sub-regions of images as text and non-text. Compared with previous works, this method is robust in detecting single characters, skewed and even vertical lines.
机译:提出了一种基于学习的相机图像文本检测方法。首先,我们在互联网上找到280张用相机拍摄的书籍封面,CD封面和电影海报的图片。我们手动标记并提取其中的文本区域。其次,基于对文本样本与非文本样本之间差异的统计分析,我们获得了三组用于生成弱分类器的特征。第三,使用Ada-boost来选择这些弱分类器并将其组合成两阶段注意级联。最后,该两阶段级联可以通过将图像的子区域分类为文本和非文本来检测图像中的文本区域。与以前的工作相比,该方法在检测单个字符,偏斜甚至垂直线方面具有鲁棒性。

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