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Directional features in online handwriting recognition

机译:在线手写识别中的方向特征

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The selection of valuable features is crucial in pattern recognition. In this paper we deal with the issue that part of features originate from directional instead of common linear data. Both for directional and linear data a theory for a statistical modeling exists. However, none of these theories gives an integrated solution to problems, where linear and directional variables are to be combined in a single, multivariate probability density function. We describe a general approach for a unified statistical modeling, given the constraint that variances of the circular variables are small. The method is practically evaluated in the context of our online handwriting recognition system frog on hand and the so-called tangent slope angle feature. Recognition results are compared with two alternative modeling approaches. The proposed solution gives significant improvements in recognition accuracy, computational speed and memory requirements. (c) 2005 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:有价值特征的选择对于模式识别至关重要。在本文中,我们处理的问题是部分特征源自方向性数据而不是常见的线性数据。对于方向性数据和线性数据,都存在用于统计建模的理论。但是,这些理论都无法为问题提供整体解决方案,在这些问题中,线性和方向变量将组合在单个多元概率密度函数中。考虑到循环变量方差较小的约束,我们描述了用于统一统计建模的通用方法。该方法实际上是在我们的在线手写识别系统frog和所谓的正切斜角特征的背景下进行评估的。将识别结果与两种替代建模方法进行比较。所提出的解决方案在识别准确度,计算速度和存储要求方面都进行了重大改进。 (c)2005模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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