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A Novel Discriminative Framework Integrating Kernel Entropy Component Analysis and Discriminative Multiple Canonical Correlation for Information Fusion

机译:集成核熵分量分析和判别式多规范相关性的信息融合新判别框架

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The effective interpretation and integration of multiple information content are important for the efficacious utilisation of multimedia in a wide variety of application context. The major challenge in information fusion lies in the difficulty of identifying the complementary and discriminatory representations from individual channels or data sources. In this paper, we propose a novel framework integrating kernel entropy-estimation and discriminative multiple canonical correlation (DMCC) to address this challenge. Not only the distribution and complementary representations of input data are revealed by entropy estimation, but also the discriminative representations are considered by DMCC, achieving improved recognition accuracy. The effectiveness of the proposed method is demonstrated on two audio emotion databases. Experimental results show that it outperforms the existing methods based on similar principles.
机译:多种信息内容的有效解释和集成对于在各种应用环境中有效利用多媒体非常重要。信息融合的主要挑战在于难以从各个渠道或数据源中识别出互补的和歧视性的表现形式。在本文中,我们提出了一种新颖的框架,将内核熵估计和判别式多规范相关性(DMCC)集成在一起,以解决这一挑战。不仅可以通过熵估计来揭示输入数据的分布和互补表示,而且可以通过DMCC来考虑区分性表示,从而提高了识别精度。在两个音频情感数据库上证明了该方法的有效性。实验结果表明,该方法优于基于相似原理的现有方法。

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