基于自适应统计相似度的字符识别

T. Breuel
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引用次数: 22

摘要

手写识别和OCR系统需要处理各种各样的书写风格和字体,其中许多可能在以前的训练中没有遇到过。本文描述了贝叶斯统计相似性的概念,并演示了如何将其应用于快速适应新风格。在高斯情况中说明了跨不同问题实例进行泛化的能力,并且高斯情况的统计相似性的使用表明与自适应度量分类方法有关。讨论了与多任务学习的先前方法的关系,以及变量或自适应度量分类和层次贝叶斯方法。给出了基于NIST3数据库的字符识别实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Character recognition by adaptive statistical similarity
Handwriting recognition and OCR systems need to cope with a wide variety of writing styles and fonts, many of them possibly not previously encountered during training. This paper describes a notion of Bayesian statistical similarity and demonstrates how it can be applied to rapid adaptation to new styles. The ability to generalize across different problem instances is illustrated in the Gaussian case, and the use of statistical similarity Gaussian case is shown to be related to adaptive metric classification methods. The relationship to prior approaches to multitask learning, as well as variable or adaptive metric classification, and hierarchical Bayesian methods, are discussed. Experimental results on character recognition from the NIST3 database are presented.
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