Base line correction for handwritten word recognition

S. Tsuruoka, N. Watanabe, N. Minamide, F. Kimura, Y. Miyake, M. Shridhar
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引用次数: 5

Abstract

The authors have researched two-letter state name (state name abbreviation) recognition and full state name recognition. According to this research, they think that the accuracy of the character segmentation is essential to recognize the word correctly, and it depends on the normalization of the word image. The normalization includes smoothing, underline removal, spurious blob removal, slant and base line correction etc. They present a new base line correction algorithm for the off-line handwritten words, which include cursive (continuous or running) words and hand-printed words. It uses background region analysis with the lower convex hull which is background area closed for three directions (upper, right, left), and the upper and bottom profiles of the merged convex hull. The authors show that the new method of base line correction is very powerful for most word images for city names of the USPS mail address database. The resulting image is useful for the holistic approach, and it's effective even when the image includes parts under the base line, for example, "f", "g", "j", or a very large character.
手写字识别的基线校正
对双字母州名(州名缩写)识别和全州名识别进行了研究。根据本研究,他们认为字符分割的准确性是正确识别单词的关键,它取决于单词图像的归一化。归一化包括平滑、下划线去除、伪斑点去除、斜线和基线校正等。他们提出了一种新的离线手写字基线校正算法,包括草书(连续或运行)字和手印字。采用背景区域分析的方法,对背景区域在上、右、左三个方向封闭的下凸包,以及合并后凸包的上下轮廓进行背景区域分析。结果表明,该方法对USPS邮件地址数据库中大多数城市名称的单词图像都具有很强的校正能力。生成的图像对于整体方法很有用,即使图像包含基线以下的部分,例如“f”、“g”、“j”或一个非常大的字符,它也是有效的。
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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