Learning to Group Text Lines and Regions in Freeform Handwritten Notes

Ming Ye, Paul A. Viola, Sashi Raghupathy, H. Sutanto, Chengyang Li
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引用次数: 16

Abstract

This paper proposes a machine learning approach to grouping problems in ink parsing. Starting from an initial segmentation, hypotheses are generated by perturbing local configurations and processed in a high-confidence-first fashion, where the confidence of each hypothesis is produced by a data-driven AdaBoost decision-tree classifier with a set of intuitive features. This framework has successfully applied to grouping text lines and regions in complex freeform digital ink notes from real TabletPC users. It holds great potential in solving many other grouping problems in the ink parsing and document image analysis domains.
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学习在自由形式的手写笔记中分组文本行和区域
本文提出了一种机器学习方法来解决油墨解析中的分组问题。从初始分割开始,通过扰动局部配置生成假设,并以高置信度优先的方式进行处理,其中每个假设的置信度由数据驱动的AdaBoost决策树分类器产生,该分类器具有一组直观的特征。该框架已成功地应用于对来自真实TabletPC用户的复杂自由格式数字墨水笔记中的文本行和区域进行分组。它在解决油墨解析和文档图像分析领域的许多其他分组问题方面具有很大的潜力。
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