Con-text: text detection using background connectivity for fine-grained object classification

Sezer Karaoglu, J. V. Gemert, T. Gevers
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引用次数: 20

Abstract

This paper focuses on fine-grained classification by detecting photographed text in images. We introduce a text detection method that does not try to detect all possible foreground text regions but instead aims to reconstruct the scene background to eliminate non-text regions. Object cues such as color, contrast, and objectiveness are used in corporation with a random forest classifier to detect background pixels in the scene. Results on two publicly available datasets ICDAR03 and a fine-grained Building subcategories of ImageNet shows the effectiveness of the proposed method.
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上下文-文本:使用背景连接进行文本检测,用于细粒度对象分类
本文的重点是通过检测图像中的照片文本进行细粒度分类。我们引入了一种文本检测方法,它不是试图检测所有可能的前景文本区域,而是旨在重建场景背景以消除非文本区域。物体线索,如颜色、对比度和客观性,与随机森林分类器一起用于检测场景中的背景像素。在两个公开可用的数据集ICDAR03和ImageNet的细粒度构建子类别上的结果表明了所提出方法的有效性。
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