固定和训练组合器用于不平衡模式分类器的融合

F. Roli, G. Fumera, Josef Kittler
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引用次数: 34

摘要

在过去的十年中,已经提出了几种模式分类器输出的融合规则。尽管在许多实际应用中(例如,用于个人身份验证的多模态生物识别)使用了不平衡分类器,即表现出非常不同精度的分类器,但是在给定规则显著优于另一个规则的分类器不平衡的条件并不完全清楚。在本文中,我们实验比较了各种固定规则和训练规则用于不平衡分类器的融合。实验以作者先前的理论分析结果为指导。通过在遥感图像数据和X2M2VTS多模态生物识别数据库上的实验,对线性、阶数统计和训练组合进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fixed and trained combiners for fusion of imbalanced pattern classifiers
In the past decade, several rules for fusion of pattern classifiers' outputs have been proposed. Although imbalanced classifiers, that is, classifiers exhibiting very different accuracy, are used in many practical applications (e.g., multimodal biometrics for personal identity verification), the conditions of classifiers' imbalance under which a given rule can significantly outperform another one are not completely clear. In this paper, we experimentally compare various fixed and trained rules for fusion of imbalanced classifiers. The experiments are guided by the results of a previous theoretical analysis of the authors. Linear, order statistics-based, and trained combiners are compared by experiments on remote-sensing image data and on the X2M2VTS multimodal biometrics data base.
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