自然场景图像中的文本检测与识别

Xiaoming Huang, Tao Shen, R. Wang, Chenqiang Gao
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引用次数: 11

摘要

自然场景图像中的文本检测与识别在图像内容分析中起着重要的作用。本文基于场景文本的特点,提出了一种基于最大稳定极值区域(MSER)和支持向量机(SVM)的鲁棒文本检测与识别方法。与端到端文本识别不同,我们将识别问题分为检测过程和识别过程。首先,在检测阶段,为了尽可能多地提取潜在文本,我们使用MSER和颜色聚类来提取连接成分。然后,对于得到的候选连接分量,我们使用视觉显著性和一些先验信息来过滤非文本区域。最后,通过文本行生成得到文字图像。在识别阶段,我们使用垂直投影对词图像进行分割,然后在基于支持向量机的框架下进行字符识别。在标准数据集上的实验结果表明,与传统的文本检测和识别方法相比,该方法具有较少的先验信息和简单的分割策略,具有更好的性能。
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Text detection and recognition in natural scene images
Text detection and recognition in natural scene images plays an important role in content analysis of images. In this paper, based on the characteristics of scene text, we propose a robust text detection and recognition method using Maximally Stable Extremal Regions (MSER) and Support Vector Machine (SVM). Different from the end to end text recognition, we split the recognition problem into detection and recognition procedure. Firstly, in the detection stage, in order to extract potential text as much as possible, we use MSER and color clustering to extract connected component. Then, for the obtained candidate connected component, we use visual saliency and some prior information to filter non-text regions. Finally, we can obtain word image by text line generation. In the recognition stage, we use vertical projection to segment word images, then recognize character in SVM based framework. The experiment results evaluated on standard dataset show that with a small amount of prior information and simple segment strategy, the proposed method has a better performance compared to conventional text detection and recognition method.
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