基于支持向量机的分布式数据融合

Subhash Challa, M. Palaniswami, A. Shilton
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引用次数: 28

摘要

贝叶斯数据融合方法中需要估计的基本量是条件概率密度函数(CPDF)。计算效率高的粒子滤波方法在估计这些cpdf方面变得越来越重要。在这种方法中,IID样本被用来表示条件概率密度。然而,由于信息以大样本的形式存储,它们在数据融合中的应用受到严重限制。在所有通信带宽有限的实际数据融合系统中,将这些概率信息作为一组样本广播到融合中心是不切实际的。支持向量机,通过统计学习理论,提供了一种通过生成最优的基于核的表示来压缩信息的方法。本文利用支持向量机对IID样本中可用的概率信息进行压缩,并应用于贝叶斯数据融合问题。我们在一个多传感器跟踪示例中演示了该技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed data fusion using support vector machines
The basic quantity to be estimated in the Bayesian approach to data fusion is the conditional probability density function (CPDF). Computationally efficient particle filtering approaches are becoming more important in estimating these CPDFs. In this approach, IID samples are used to represent the conditional probability densities. However, their application in data fusion is severely limited due to the fact that the information is stored in the form of a large set of samples. In all practical data fusion systems that have limited communication bandwidth, broadcasting this probabilistic information, available as a set of samples, to the fusion center is impractical. Support vector machines, through statistical learning theory, provide a way of compressing information by generating optimal kernal based representations. In this paper we use SVM to compress the probabilistic information available in the form of IID samples and apply it to solve the Bayesian data fusion problem. We demonstrate this technique on a multi-sensor tracking example.
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