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Binary segmentation algorithm for English cursive handwriting recognition

机译:英文草书手写识别的二进制分割算法

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摘要

Segmentation in off-line cursive handwriting recognition is a process for extracting individual characters from handwritten words. It is one of the most difficult processes in handwriting recognition because characters are very often connected, slanted and overlapped. Handwritten characters differ in size and shape as well. Hybrid segmentation techniques, especially over-segmentation and validation, are a mainstream to solve the segmentation problem in cursive off-line handwriting recognition. However, the core weakness of the segmentation techniques in the literature is that they impose high risks of chain failure during an ordered validation process. This paper presents a novel Binary Segmentation Algorithm (BSA) that reduces the risks of the chain failure problems during validation and improves the segmentation accuracy. The binary segmentation algorithm is a hybrid segmentation technique and it consists of over-segmentation and validation modules. The main difference between BSA and other techniques in the literature is that BSA adopts an un-ordered segmentation strategy. The proposed algorithm has been evaluated on CEDAR benchmark database and the results of the experiments are very promising.
机译:离线草书手写识别中的分段是从手写单词中提取单个字符的过程。这是手写识别中最困难的过程之一,因为字符经常被连接,倾斜和重叠。手写字符的大小和形状也不同。混合分割技术,尤其是过度分割和验证,是解决草书离线手写识别中分割问题的主流。但是,文献中的分割技术的核心弱点在于,它们在有序的验证过程中会带来链失败的高风险。本文提出了一种新颖的二进制分割算法(BSA),该算法可减少验证期间出现链故障问题的风险并提高分割精度。二进制分割算法是一种混合分割技术,它由过度分割和验证模块组成。 BSA与文献中其他技术之间的主要区别在于,BSA采用无序分割策略。该算法已经在CEDAR基准数据库上进行了评估,实验结果非常有希望。

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