一种简单的自适应决策融合算法

Qiang Zhu, Xiaoxun Zhu, M. Kam
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引用次数: 2

摘要

并行二元决策融合系统的设计通常假设决策积分器(数据融合中心,DFC)具有完备的局部检测器(LD)统计知识。在大多数研究中,也假设其他统计参数已知,即假设的先验概率和DFC-LD通道的转移概率。在这种情况下,DFC的充分统计是地方决策的加权总和。当这些统计数据未知时,作者建议在正确的例子或过去的经验的指导下在线调整权重。作者开发了一种监督训练方案,该方案使用正确的输入输出示例来训练DFC。然后,该方案通过用DFC基于自己过去的决策的自我评估来取代示例,从而成为一种无监督学习技术。在这两种情况下,DFC将其判别函数的实际值和期望值之间的平方误差最小化。当被监督时,DFC从监督者那里获得期望的值。在没有监督的情况下,DFC从最后的决策中估计出理想值。这种估计包括拒绝被认为不可靠的数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A simple algorithm for adaptive decision fusion
Design of parallel binary decision fusion systems is often performed under the assumption that the decision integrator (the data fusion center, DFC) possesses perfect knowledge of the local-detector (LD) statistics. In most studies, other statistical parameters are also assumed to be known, namely the a priori probabilities of the hypotheses, and the transition probabilities of DFC-LD channels. Under these circumstances, the DFC's sufficient statistic is a weighted sum of the local decisions. When these statistics are unknown, the authors propose to tune the weights on-line, guided by correct examples or by past experience. The authors develop a supervised training scheme that employs correct input-output examples to train the DFC. This scheme is then made into an unsupervised learning technique by replacing the examples with a self-assessment of the DFC, based on its own past decisions. In both cases the DFC minimizes the squared error between the actual and the desired values of its discriminant function. When supervised, the DFC obtains the desirable value from the supervisor. When unsupervised, the DFC estimates the desirable value from its last decision. This estimation includes rejection of data that is deemed unreliable.
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