分类过程中基于熵的多传感器融合指标评价方案

Yubao Chen, E. Orady
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引用次数: 5

摘要

传感器融合旨在从多个传感器的数据中识别有用的信息,以促进决策。通过特征提取,通常将来自每个传感器的信号处理成不同的指标,从而更好地表示知识。然而,当使用多个指标时,在决策时应注意,因为每个指标可能包含不同的信息或过程/系统编号研究知识的不同方面。为此,提出了一种实用的基于熵和信息增益的指标评价方案。在为复杂系统或过程设计分类器时,需要对分类器进行索引排序时,此过程非常有用。在一组训练数据的基础上引入了区域熵和类熵。以攻丝过程的数据集为例说明了该方案的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Entropy-Based Index Evaluation Scheme for Multiple Sensor Fusion in Classification Process
Sensor fusion aims to identify useful information to facilitate decision-making using data from multiple sensors. Signals from each sensor are usually processed, through feature extraction, into different indices by which knowledge can be better represented. However, cautions should be placed in decision-making when multiple indices are used, since each index may carry different information or different aspects of the knowledge for the process/system umber study. To this end, a practical scheme for index evaluation based on entropy and information gain is presented. This procedure is useful when index ranking is needed in designing a classifier for a complex system or process. Both regional entropy and class entropy are introduced based a set of training data. Application of this scheme is illustrated by using a data set for a tapping process.
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