一种鲁棒的自然场景图像文本检测与定位系统

Yi-Feng Pan, Xinwen Hou, Cheng-Lin Liu
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引用次数: 98

摘要

在本文中,我们提出了一个鲁棒的系统来准确地检测和定位自然场景图像中的文本。文本检测采用基于区域的多特征级联AdaBoost分类器。在文本定位方面,采用结合文本行竞争分析的窗口分组方法生成文本行。然后在每条文本行内,采用局部二值化方法提取候选连通分量(cc),利用马尔科夫随机场(MRF)模型过滤非文本连通分量,实现文本行精确定位。在公共基准ICDAR 2003鲁棒阅读和文本定位数据集上的实验表明,我们的系统在准确性和速度上与现有的最佳方法相当。
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A Robust System to Detect and Localize Texts in Natural Scene Images
In this paper, we present a robust system to accurately detect and localize texts in natural scene images. For text detection, a region-based method utilizing multiple features and cascade AdaBoost classifier is adopted. For text localization, a window grouping method integrating text line competition analysis is used to generate text lines. Then within each text line, local binarization is used to extract candidate connected components (CCs) and non-text CCs are filtered out by Markov Random Fields (MRF) model, through which text line can be localized accurately. Experiments on the public benchmark ICDAR 2003 Robust Reading and Text Locating Dataset show that our system is comparable to the best existing methods both in accuracy and speed.
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