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A robust approach for text detection from natural scene images

机译:从自然场景图像中检测文本的可靠方法

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摘要

This paper presents a robust text detection approach based on color-enhanced contrasting extremal region (CER) and neural networks. Given a color natural scene image, six component-trees are built from its grayscale image, hue and saturation channel images in a perception-based illumination invariant color space, and their inverted images respectively. From each component-tree, color-enhanced CERs are extracted as character candidates. By using a "divide-and-conquer" strategy, each candidate image patch is labeled reliably by rules as one of five types, namely, Long, Thin, Fill, Square-large and Square-small, and classified as text or non-text by a corresponding neural network, which is trained by an ambiguity-free learning strategy. After pruning unambiguous non-text components, repeating components in each component-tree are pruned further. Remaining components are then grouped into candidate text-lines and verified by another set of neural networks. Finally, results from six component-trees are combined, and a post-processing step is used to recover lost characters. Our proposed method achieves superior performance on both ICDAR-2011 and ICDAR-2013 "Reading Text in Scene Images" "test sets. (C) 2015 Elsevier Ltd. All rights reserved.
机译:本文提出了一种基于颜色增强的对比度极值区域(CER)和神经网络的鲁棒文本检测方法。给定一个彩色自然场景图像,从其灰度图像,基于感知的照明不变颜色空间中的色相和饱和度通道图像以及它们的倒置图像分别构建六个分量树。从每个组件树中,提取颜色增强的CER作为候选字符。通过使用“分而治之”策略,每个候选图像块均通过规则可靠地标记为五种类型之一,即长,薄,填充,大正方形和小正方形,并分类为文本或非通过相应的神经网络输入文本,并通过无歧义的学习策略进行训练。在修剪了明确的非文本组件之后,将进一步修剪每个组件树中的重复组件。然后将其余组件分组为候选文本行,并通过另一组神经网络进行验证。最后,将来自六个组件树的结果进行组合,并使用后处理步骤来恢复丢失的字符。我们提出的方法在ICDAR-2011和ICDAR-2013“读取场景图像中的文本”测试集上均具有出色的性能。(C)2015 Elsevier Ltd.保留所有权利。

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