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The dissimilarity space: Bridging structural and statistical pattern recognition

机译:差异空间:桥接结构和统计模式识别

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摘要

Human experts constitute pattern classes of natural objects based on their observed appearance. Automatic systems for pattern recognition may be designed on a structural description derived from sensor observations. Alternatively, training sets of examples can be used in statistical learning procedures. They are most powerful for vectorial object representations. Unfortunately, structural descriptions do not match well with vectorial representations. Consequently it is difficult to combine the structural and statistical approaches to pattern recognition. Structural descriptions may be used to compare objects. This leads to a set of pairwise dissimilarities from which vectors can be derived for the purpose of statistical learning. The resulting dissimilarity representation bridges thereby the structural and statistical approaches. The dissimilarity space is one of the possible spaces resulting from this representation. It is very general and easy to implement. This paper gives a historical review and discusses the properties of the dissimilarity space approaches illustrated by a set of examples on real world datasets.
机译:人类专家根据观察到的外观来构成自然物体的模式类别。用于模式识别的自动系统可以基于从传感器观察中得出的结构描述来设计。或者,可以在统计学习过程中使用示例训练集。对于矢量对象表示,它们最强大。不幸的是,结构描述与矢量表示不太匹配。因此,很难将结构和统计方法结合起来进行模式识别。结构描述可用于比较对象。这导致成对的成对差异,可以从中导出矢量以进行统计学习。由此产生的差异表示法在结构和统计方法之间架起了桥梁。相异空间是由该表示导致的可能空间之一。这是非常通用且易于实现的。本文进行了历史回顾,并讨论了通过真实世界数据集上的一组示例说明的相异空间方法的性质。

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