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The Labeled Multiple Canonical Correlation Analysis for Information Fusion

机译:信息融合的标记多典范相关分析

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The objective of multimodal information fusion is to mathematically analyze information carried in different sources and create a new representation that will be more effectively utilized in pattern recognition and other multimedia information processing tasks. In this paper, we introduce a new method for multimodal information fusion and representation based on the Labeled Multiple Canonical Correlation Analysis (LMCCA). By incorporating class label information of the training samples, the proposed LMCCA ensures that the fused features carry discriminative characteristics of the multimodal information representations and are capable of providing superior recognition performance. We implement a prototype of LMCCA to demonstrate its effectiveness on handwritten digit recognition, face recognition, and object recognition utilizing multiple features, bimodal human emotion recognition involving information from both audio and visual domains. The generic nature of LMCCA allows it to take as input features extracted by any means, including those by deep learning (DL) methods. Experimental results show that the proposed method enhanced the performance of both statistical machine learning methods, and methods based on DL.
机译:多峰信息融合的目的是数学分析不同来源中携带的信息,并创建一个新的表示形式,该表示形式将更有效地用于模式识别和其他多媒体信息处理任务。在本文中,我们介绍了一种基于标记多重规范相关分析(LMCCA)的多峰信息融合和表示方法。通过合并训练样本的类别标签信息,建议的LMCCA确保融合的特征具有多模式信息表示形式的识别特征,并能够提供出色的识别性能。我们实现了LMCCA的原型,以展示其在手写数字识别,面部识别和利用多种功能的对象识别,涉及来自视听领域信息的双峰人类情感识别中的有效性。 LMCCA的通用性质允许它采用通过任何方式(包括深度学习(DL)方法)提取的特征作为输入特征。实验结果表明,该方法提高了统计机器学习方法和基于DL的方法的性能。

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