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Multimodal weighted dictionary learning

机译:多式化加权字典学习

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Classical dictionary learning algorithms that rely on a single source of information have been successfully used for the discriminative tasks. However, exploiting multiple sources has demonstrated its effectiveness in solving challenging real-world situations. We propose a new framework for feature fusion to achieve better classification performance as compared to the case where individual sources are utilized. In the context of multimodal data analysis, the modality configuration induces a strong group/coupling structure. The proposed method models the coupling between different modalities in space of sparse codes while at the same time within each modality a discriminative dictionary is learned in an all-vs-all scheme whose class-specific sub-parts are non-correlated. The proposed dictionary learning scheme is referred to as the multimodal weighted dictionary learning (MWDL). We demonstrate that MWDL outperforms state-of-the-art dictionary learning approaches in various experiments.
机译:依赖于单一信息源的经典文学译立算法已成功用于歧视性任务。然而,利用多种来源已经证明了解决具有挑战性的现实世界情况的有效性。我们提出了一个新的框架,可以融合来实现更好的分类性能,相比利用各个来源的情况。在多模式数据分析的背景下,模态配置引起强大的组/耦合结构。所提出的方法模拟了稀疏代码空间中不同模式之间的耦合,而在每个模式内同时在识别的字典中以判别的所有方案中学到,其类特定的子部分是非相关的。所提出的字典学习方案被称为多模式加权字典学习(MWDL)。我们证明MWDL优于各种实验中的最先进的字典学习方法。

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