首页> 外文会议>Proceedings of the 2007 International Conference on Machine Learning and Cybernetics >THE RELATIONSHIP BETWEEN KERNEL AND CLASSIFIER FUSION IN KERNEL-BASED MULTI-MODAL PATTERN RECOGNITION: AN EXPERIMENTAL STUDY
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THE RELATIONSHIP BETWEEN KERNEL AND CLASSIFIER FUSION IN KERNEL-BASED MULTI-MODAL PATTERN RECOGNITION: AN EXPERIMENTAL STUDY

机译:基于核的多模态模式识别中核与分类器融合的关系:实验研究

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摘要

Two distinct principles of multi-modal kernel-based pattern recognition, kernel and classifier fusion, are demonstrated to share common underlying characteristics via the use of a novel kernel-based technique for combining modalities under fully general conditions, namely, the neutral-point method.This method presents a conservative kernel-based strategy for dealing with missing and disjoint training data in independent measurement modalities that can be theoretically shown to default to the Sum Rule classification scheme.Results of comparative experiments indicate that the neutral-point technique loses relatively little classification information with respect to coincident training data, and is in fact preferable for independent kernels produced by different physical modalities due to its better error-cancellation properties.
机译:通过使用新颖的基于核的技术在完全通用的条件下组合模态,即基于中性点的方法,证明了基于核的多模式核识别和核和分类器融合的两种截然不同的原理具有共同的基本特征。该方法提出了一种基于核的保守策略,以独立的测量方式处理丢失和不连续的训练数据,理论上可以证明该方法默认为Sum Rule分类方案。比较实验结果表明,中性点技术的损失相对较小相对于重合训练数据的分类信息,并且由于其更好的错误消除性能,因此实际上对于由不同物理模态生成的独立内核是更可取的。

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