在场景图像中提取文本的类字符区域验证

Hao Wang, J. Kangas
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引用次数: 18

摘要

为了实现自然彩色场景图像中字符的自动提取和识别,提出了一种类字符区域的识别方法。在基于多组分解方案的连通分量提取之后,使用对齐分析来检查候选块,即每个二值图像层中的类字符区域和最终的合成图像。实现了优先级自适应分割(PAS),以获得每个块中准确的字符前景像素。然后利用统计特征、识别置信度和对齐属性等启发式含义对分割后的字符进行判别。该算法是鲁棒的广泛的字符字体,拍摄条件和颜色背景。我们的实验结果在实际应用中是有希望的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Character-like region verification for extracting text in scene images
This paper proposes a method of identifying character-like regions in order to extract and recognize characters in natural color scene images automatically. After connected component extraction based on a multi-group decomposition scheme, alignment analysis is used to check the block candidates, namely, the character-like regions in each binary image layer and the final composed image. Priority adaptive segmentation (PAS) is implemented to obtain accurate foreground pixels of the character in each block. Then some heuristic meanings such as statistical features, recognition confidence, and alignment properties, are employed to justify the segmented characters. The algorithms are robust for a wide range of character fonts, shooting conditions, and color backgrounds. Results of our experiments are promising for real applications.
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