Are Characters Objects?

Markus Diem, Robert Sablatnig
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引用次数: 10

Abstract

This paper presents a character recognition system that handles degraded manuscript documents like the ones discovered at the St. Catherine’s Monastery. In contrast to state-of-the-art OCR systems, no early decision (image binarization) needs to be performed. Thus, an object recognition methodology is adapted for the recognition of ancient manuscripts. The proposed system is based on local descriptors which are clustered in order to localize characters. Finally, a class probability histogram is assigned to each character present in an image which allows for the character classification. The system achieves an F0.5 score of 0.77 on real world data that contains 13.5% highly degraded characters.
角色是对象吗?
本文提出了一种字符识别系统,用于处理在圣凯瑟琳修道院发现的退化的手稿文件。与最先进的OCR系统相比,不需要执行早期决策(图像二值化)。因此,一种对象识别方法适用于古代手稿的识别。该系统基于局部描述符进行聚类以实现字符的局部化。最后,将类概率直方图分配给图像中存在的每个字符,从而允许字符分类。该系统在包含13.5%高度退化字符的真实世界数据上实现了0.77的F0.5分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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