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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Efficient temporal pattern recognition by means of dissimilarity space embedding with discriminative prototypes
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Efficient temporal pattern recognition by means of dissimilarity space embedding with discriminative prototypes

机译:通过与鉴别的原型嵌入不相似的空间,有效的时间模式识别

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摘要

Dissimilarity space embedding (DSE) presents a method of representing data as vectors of dissimilarities. This representation is interesting for its ability to use a dissimilarity measure to embed various patterns (e.g. graph patterns with different topology and temporal patterns with different lengths) into a vector space. The method proposed in this paper uses a dynamic tithe warping (DTW) based DSE for the purpose of the classification of massive sets of temporal patterns. However, using large data sets introduces the problem of requiring a high computational cost. To address this, we consider a prototype selection approach. A vector space created by DSE offers us the ability to treat its independent dimensions as features allowing for the use of feature selection. The proposed method exploits this and reduces the number of prototypes required for accurate classification. To validate the proposed method we use two-class classification on a data set of handwritten on-line numerical digits. We show that by using DSE with ensemble classification, high accuracy classification is possible with very few prototypes.
机译:差异空间嵌入(DSE)提出了一种将数据表示为差异向量的方法。这种表示法很有趣,因为它能够使用相异性度量将各种模式(例如,具有不同拓扑结构的图形模式和具有不同长度的时间模式)嵌入到向量空间中。本文提出的方法使用基于动态标题扭曲(DTW)的DSE对大量时间模式集进行分类。然而,使用大型数据集会带来需要高计算成本的问题。为了解决这个问题,我们考虑一个原型选择方法。DSE创建的向量空间为我们提供了将其独立维度视为允许使用特征选择的特征的能力。提出的方法利用了这一点,减少了准确分类所需的原型数量。为了验证所提出的方法,我们在手写在线数字数据集上使用了两类分类。我们表明,通过将DSE与集成分类结合使用,可以用很少的原型实现高精度分类。

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