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首页> 外文期刊>International journal of applied mathematics and computer science >Statistical Testing Of Segment Homogeneity In Classification Of Piecewise–Regular Objects
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Statistical Testing Of Segment Homogeneity In Classification Of Piecewise–Regular Objects

机译:分段规则对象分类中分段同质性的统计检验

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摘要

The paper is focused on the problem of multi-class classification of composite (piecewise-regular) objects (e.g., speech signals, complex images, etc.). We propose a mathematical model of composite object representation as a sequence of independent segments. Each segment is represented as a random sample of independent identically distributed feature vectors. Based on this model and a statistical approach, we reduce the task to a problem of composite hypothesis testing of segment homogeneity. Several nearest-neighbor criteria are implemented, and for some of them the well-known special cases (e.g., the Kullback–Leibler minimum information discrimination principle, the probabilistic neural network) are highlighted. It is experimentally shown that the proposed approach improves the accuracy when compared with contemporary classifiers.
机译:本文着重于对复合(分段规则)对象(例如语音信号,复杂图像等)进行多类分类的问题。我们提出了一个复合对象表示的数学模型,将其表示为一系列独立的段。每个片段表示为独立的相同分布的特征向量的随机样本。基于此模型和统计方法,我们将任务简化为分段同质性的复合假设检验问题。实施了几个最邻近的准则,其中一些准则是众所周知的特殊情况(例如,Kullback-Leibler最小信息判别原理,概率神经网络)。实验表明,与现代分类器相比,该方法提高了准确性。

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