复杂文字文档的分词研究

K. S. S. Kumar, S. Kumar, C. V. Jawahar
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引用次数: 25

摘要

文档图像分割算法的主要目标是在复杂的布局中分离文本和图形。然而,对于许多非拉丁文字,由于文字的特点,分割成为一个挑战。在本文中,我们通过经验证明,拉丁文字的成功算法可能对印度语和复杂的文字并不十分有效。我们根据文字中符号空间分布的差异来解释这一点。我们认为,用于分割的视觉信息需要与脚本模型等其他信息一起增强,以获得准确的结果。
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On Segmentation of Documents in Complex Scripts
Document image segmentation algorithms primarily aim at separating text and graphics in presence of complex layouts. However, for many non-Latin scripts, segmentation becomes a challenge due to the characteristics of the script. In this paper, we empirically demonstrate that successful algorithms for Latin scripts may not be very effective for Indic and complex scripts. We explain this based on the differences in the spatial distribution of symbols in the scripts. We argue that the visual information used for segmentation needs to be enhanced with other information like script models for accurate results.
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