手写数学符号的同伦特征识别

Rui Hu, S. Watt
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引用次数: 7

摘要

在手写数学中,通常有不同大小的字符,并且书写不遵循简单的基线。例如,下标和上标看起来比普通文本相对较小,并且写在它的下方或上方。比起使用位置、特征和大小来识别角色,相反的方法可能更有效——使用关于特定角色的知识来确定基线、大小等。在这种方法中,有必要找到由特定点确定的某些预期特征的位置。在早期的工作中,我们提出了一种方法,从每个符号类型的平均模型上的确定点中导出符号新实例的确定点。对于那些与平均实例明显不同的字符,可以在平均实例和目标字符之间使用数值同伦,并在每一步应用确定点算法。本文研究了在执行这种同伦时应考虑的因素。我们研究了同伦的两种可能的起点策略,并研究了距离和所需步数之间的关系。第一个起点策略从相同类型的样本的平均值执行同伦。第二种策略使用具有已知确定点的近邻同伦。我们的实验结果显示了同伦距离和通常需要的步数之间的有用关系,以及改进的策略来找到书写不好的字符的确定点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Features via Homotopy on Handwritten Mathematical Symbols
In handwritten mathematics, it is common to have characters in various sizes and for writing not to follow simple baselines. For example, subscripts and superscripts appear relatively smaller than normal text and are written slightly below or above it. Rather than use the location, features and size to identify the character, it may be more effective to do the reverse --- to use knowledge about specific characters to determine baseline, size, etc. In this approach, it is necessary to find the location of certain expected features that are determined by particular points. In earlier work, we have presented a method to derive the determining points for a new instance of a symbol from those on an average model for each symbol type. For those characters that are significantly different from the average instance, one can use a numerical homotopy between the average instance and the target character, and apply the determining point algorithm at each step. The present article studies the factors to be taken into account in performing such homotopies. We examine two strategies for possible starting points for the homotopy, and we examine the relation between the distance and the number of steps required. The first starting point strategy performs a homotopy from the average of samples of the same type. The second strategy uses a homotopy from the nearest neighbour with known determining points. Our experimental results show a useful relation between the homotopy distance and the number of steps usually required and improved strategies to find determining points for poorly written characters.
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