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Scene Text Detection via Integrated Discrimination of Component Appearance and Consensus

机译:通过对组件外观和共识的综合区分来检测场景文本

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In this paper, we propose an approach to scene text detection that leverages both the appearance and consensus of connected components. A component appearance is modeled with an SVM based dictionary classifier and the component consensus is represented with color and spatial layout features. Responses of the dictionary classifier are integrated with the consensus features into a discriminative model, where the importance of features is determined with a text level training procedure. In text detection, hypotheses are generated on component pairs and an iterative extension procedure is used to aggregate hypotheses into text objects. In the detection procedure, the discriminative model is used to perform classification as well as control the extension. Experiments show that the proposed approach reaches the state of the art in both detection accuracy and computational efficiency, and in particularly, it performs best when dealing with low-resolution text in clutter backgrounds.
机译:在本文中,我们提出了一种场景文本检测方法,该方法利用了连接组件的外观和共识。使用基于SVM的字典分类器对组件外观进行建模,并使用颜色和空间布局特征表示组件共识。字典分类器的响应与共识特征集成到一个判别模型中,在此模型中,特征的重要性由文本级训练过程确定。在文本检测中,在组件对上生成假设,并使用迭代扩展过程将假设聚合到文本对象中。在检测过程中,判别模型用于执行分类以及控制扩展。实验表明,该方法在检测精度和计算效率上均达到了最新水平,特别是在杂乱背景下处理低分辨率文本时效果最佳。

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