使用圆形模板从地图中提取倾斜的候选字符

O. Shiku, A. Nakamura, Masanori Anegawa, Hideaki Takahira, H. Kuroda
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引用次数: 1

摘要

本文提出了一种高效、快速地从复杂背景图像中提取斜字符的方法。该方法利用黑色像素密度特征提取斜字符候选者,即两个不同大小的圆形模板与原始图像的匹配率,分别对目标字符进行刻入和围合。为了评估该方法的性能,将该方法应用于41幅地形图(512/spl次/512像素),涉及1032个倾斜字符。结果,每个字符的平均候选字符数减少到约41个候选字符,1032个倾斜字符中的94.3%被正确提取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extraction of slant character candidates from maps using circular templates
The paper proposes a method for extracting slant characters from complicated background figures efficiently and rapidly. In this method, slant character candidates are extracted using the black pixel density features, that is, matching rate of two different sized circular templates, which are inscribing and circumscribing a target character, with an original image. In order to estimate performance of the proposed method, the method was applied to 41 topographic map images (512/spl times/512 pixels) involving 1032 slant characters. As a result, the average number of character candidates per character was reduced to about 41 candidates, and 94.3% of 1032 slant characters were extracted correctly.
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