Linear dependency modeling for feature fusion

A. J. Ma, P. Yuen
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引用次数: 15

Abstract

This paper addresses the independent assumption issue in fusion process. In the last decade, dependency modeling techniques were developed under a specific distribution of classifiers. This paper proposes a new framework to model the dependency between features without any assumption on feature/classifier distribution. In this paper, we prove that feature dependency can be modeled by a linear combination of the posterior probabilities under some mild assumptions. Based on the linear combination property, two methods, namely Linear Classifier Dependency Modeling (LCDM) and Linear Feature Dependency Modeling (LFDM), are derived and developed for dependency modeling in classifier level and feature level, respectively. The optimal models for LCDM and LFDM are learned by maximizing the margin between the genuine and imposter posterior probabilities. Both synthetic data and real datasets are used for experiments. Experimental results show that LFDM outperforms all existing combination methods.
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特征融合的线性依赖建模
本文解决了核聚变过程中的独立假设问题。在过去十年中,依赖关系建模技术是在分类器的特定分布下开发的。本文提出了一个新的框架来建模特征之间的依赖关系,而不需要假设特征/分类器的分布。在本文中,我们证明了在一些温和的假设下,特征依赖可以用后验概率的线性组合来建模。基于线性组合特性,分别推导和发展了分类器级和特征级依赖建模的线性分类器依赖建模(LCDM)和线性特征依赖建模(LFDM)方法。LCDM和LFDM的最优模型是通过最大化真实和冒牌后验概率之间的余量来学习的。实验采用了合成数据和真实数据集。实验结果表明,LFDM优于现有的组合方法。
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