基于核熵分量分析的音频情感识别多模态信息融合

Zhibing Xie, L. Guan
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引用次数: 40

摘要

本文重点研究了新型信息理论工具在信息融合领域的应用。特征变换和融合是信息融合性能的关键,但现有的大部分工作依赖于二阶统计量,而二阶统计量仅对类高斯分布最优。本文将信息融合技术与核熵分量分析相结合,提供了一种新的信息理论工具。利用信息熵描述符实现特征融合,并通过熵估计进行优化。提出了一种基于核熵分量分析的音频情感识别多模态信息融合策略。通过在两个视听情感数据库上的实验,对该方法的有效性进行了评价。实验结果表明,该方法优于现有方法,特别是在特征空间维数大幅降低的情况下。该方法提供了一般性的理论分析,为我们将信息论应用于多媒体研究提供了一条途径。
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Multimodal Information Fusion of Audio Emotion Recognition Based on Kernel Entropy Component Analysis
This paper focuses on the application of novel information theoretic tools in the area of information fusion. Feature transformation and fusion is critical for the performance of information fusion, however the majority of the existing works depend on the second order statistics, which is only optimal for Gaussian-like distribution. In this paper, the integration of information fusion techniques and kernel entropy component analysis provides a new information theoretic tool. The fusion of features is realized using descriptor of information entropy and optimized by entropy estimation. A novel multimodal information fusion strategy of audio emotion recognition based on kernel entropy component analysis (KECA) has been presented. The effectiveness of the proposed solution is evaluated though experimentation on two audiovisual emotion databases. Experimental results show that the proposed solution outperforms the existing methods, especially when the dimension of feature space is substantially reduced. The proposed method offers general theoretical analysis which gives us an approach to implement information theory into multimedia research.
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