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A Framework for Classifier Fusion: Is It Still Needed?

机译:分类器融合的框架:是否仍然需要?

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摘要

We consider the problem and issues of classifier fusion and discuss how they should be reflected in the fusion system architecture. We adopt the Bayesian viewpoint and show how this leads to classifier output moderation to compensate for sampling problems. We then discuss how the moderated outputs should be combined to reflect the prior distribution of models underlying the classifier designs. We then elaborate how the final stage of fusion should combine the complementary measurement information that might be available to different experts. This process is embodied in an overall architecture which shows why the fusion of raw expert outputs is a nonlinear function of the expert outputs and how this function can be realised as a sequence of relatively simple processes.
机译:我们考虑分类器融合的问题,并讨论如何在融合系统体系结构中体现它们。我们采用贝叶斯观点,并说明这如何导致分类器输出节制以补偿采样问题。然后,我们讨论如何组合调节后的输出以反映分类器设计基础模型的先前分布。然后,我们详细说明融合的最后阶段应如何结合可能适用于不同专家的补充测量信息。此过程体现在总体体系结构中,该体系结构说明了为什么原始专家输出的融合是专家输出的非线性函数,以及如何将该函数实现为一系列相对简单的过程。

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