Parallel Decision Fusion with Local Constraints

Weiqiang Dong, Moshe Kam
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Abstract

Motivated by an example by Tenney and Sandell (1981), we discuss the trade-off between performance of local detectors (LDs) and the combined LD/Data Fusion Center system in parallel decision fusion architectures. In these architectures the LDs make observations, translate these observations to local decisions, and send these local decisions forward to a Data Fusion Center (DFC). The DFC uses the local decisions to synthesize a global decision (in our context both local and global decisions are binary and pertain to binary hypothesis testing based on the LD observations; in other words, both LDs and DFC decide whether to accept or reject a hypothesis). The original example demonstrated how the minimization of a global performance index by the combined system may yield an alignment of the local detectors that avoids a high value of the performance index, but otherwise have no value at the LD level (the LDs are directed to make constant decisions that are almost independent of the observations, in order to avoid a local-decision combination that would incur a high penalty). If we require that the global performance index be minimized while the LDs are also allowed to minimize a local performance index (or have constraints on their error probabilities), a trade-off emerges between the local and global performances. In this paper we provide an example similar in nature to the Tenney-Sandell example, and proceed to analyze the impact of performance constraints on the LDs on the design and performance of the parallel decision fusion architecture. If we provide reasonable constraints on the performance of the LDs, a compromise can be established between the global performance index and the local LD performances.
局部约束下的并行决策融合
在Tenney和Sandell(1981)的一个例子的激励下,我们讨论了并行决策融合架构中局部检测器(LD)和组合LD/数据融合中心系统性能之间的权衡。在这些体系结构中,ld进行观察,将这些观察转化为本地决策,并将这些本地决策转发给数据融合中心(Data Fusion Center, DFC)。DFC使用局部决策来综合全局决策(在我们的上下文中,局部决策和全局决策都是二元的,并且属于基于LD观察的二元假设检验;换句话说,ld和DFC都决定是否接受或拒绝假设)。最初的示例演示了组合系统对全局性能指数的最小化如何产生局部检测器的对齐,从而避免了性能指数的高值,但在LD级别上没有值(LD被指示做出几乎独立于观察的恒定决策,以避免可能导致高惩罚的局部决策组合)。如果我们要求最小化全局性能指数,同时允许ld最小化局部性能指数(或者对它们的错误概率有限制),那么在局部和全局性能之间就会出现权衡。在本文中,我们提供了一个类似于Tenney-Sandell示例的示例,并进一步分析了性能约束对并行决策融合架构的设计和性能的影响。如果我们对LD的性能提供合理的约束,就可以在全局性能指标和局部LD性能之间建立一个折衷。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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