传感器网络中分布式分类的数据与决策融合

A. D'Costa, A. Sayeed
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引用次数: 23

摘要

传感器网络通过密集分布的无线节点提供物理世界的虚拟快照,这些节点可以以不同的方式感知。对在传感器场中移动的物体进行分类是一项重要的应用,需要节点间的协同信号处理(CSP)。在节点资源有限的情况下,一个关键的约束是在节点之间交换最少的信息,以达到期望的性能。CSP有两种主要形式。相关节点之间需要进行低维特征向量的数据融合交换。独立节点间局部似然值的决策融合交换是足够的。决策融合通常更可取,因为它的通信负担较低。我们研究了基于高斯模型的传感器测量CSP分类算法,该算法提供了节点相关性的简单抽象,并产生了最优最大似然分类器的简单表征。还考虑了两个极端次优分类器:将所有测量视为相关的数据平均分类器和将所有测量视为独立的决策融合分类器。给出了基于实际数据的分析和数值结果,比较了三种CSP分类器的性能。研究结果表明,从决策理论的角度来看,次优决策融合分类器是传感器网络中最具吸引力的一种鲁棒选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data versus decision fusion for distributed classification in sensor networks
Sensor networks provide virtual snapshots of the physical world via densely distributed wireless nodes that can sense in different modalities. Classification of objects moving through the sensor field is an important application that requires collaborative signal processing (CSP) between nodes. Given the limited resources of nodes, a key constraint is to exchange the least amount of information between them to achieve desired performance. Two main forms of CSP are possible. Data fusion-exchange of low-dimensional feature vectors - is needed between correlated nodes. Decision fusion exchange of local likelihood values - is sufficient between independent nodes. Decision fusion is generally preferable due to its lower communication burden. We study CSP classification algorithms based on a Gaussian model for sensor measurements that provides a simple abstraction of node correlation and yields a simple characterization of the optimal maximum likelihood classifier. Two extreme sub-optimal classifiers are also considered: a data-averaging classifier that treats all measurements as correlated, and a decision-fusion classifier that treats them all as independent. Analytical and numerical results based on real data are provided to compare the performance of the three CSP classifiers. Our results indicate that the sub-optimal decision fusion classifier, that is most attractive in the context of sensor networks, is also a robust choice from a decision theoretic viewpoint.
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