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首页> 外文期刊>IEEE transactions on multimedia >Locally Confined Modality Fusion Network With a Global Perspective for Multimodal Human Affective Computing
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Locally Confined Modality Fusion Network With a Global Perspective for Multimodal Human Affective Computing

机译:具有全球视角的多模态人类情感计算的局部受限模态融合网络

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In this paper, we propose a novel multimodal fusion framework, called the locally confined modality fusion network (LMFN), that contains a bidirectional multiconnected LSTM (BM-LSTM) to address the multimodal human affective computing problem. In the LMFN, we introduce a generic fusion structure that explores both local and global fusion to obtain an integral comprehension of information. Specifically, we partition the feature vector corresponding to each modality into multiple segments and learn every local interaction through a tensor fusion procedure. Global interaction is then modeled by learning the dependence between local tensors via an originally designed BM-LSTM architecture, establishing a direct connection of cells and states of local tensors that are several time steps apart. With the LMFN, we achieve advantages over other methods in the following aspects: 1) local interactions are successfully modeled using a feasible vector segmentation procedure that can explore cross-modal dynamics in a more specialized manner; 2) global interactions are modeled to obtain an integral view of multimodal information using BM-LSTM, which guarantees an adequate flow of information; and 3) our general fusion structure is highly extendable by applying other local and global fusion methods. Experiments show that the LMFN yields state-of-the-art results. Moreover, the LMFN achieves higher efficiency compared to other models by applying the outer product as the fusion method.
机译:在本文中,我们提出了一种新颖的多模式融合框架,称为局部受限模式融合网络(LMFN),该框架包含双向多连接LSTM(BM-LSTM),以解决多模式人类情感计算问题。在LMFN中,我们引入了一种通用的融合结构,该结构探索了局部融合和全局融合,以获得对信息的整体理解。具体来说,我们将与每个模态相对应的特征向量划分为多个段,并通过张量融合过程学习每个局部相互作用。然后,通过最初设计的BM-LSTM体系结构,通过学习局部张量之间的依赖性,对全局相互作用进行建模,从而建立单元和局部张量状态的直接连接,相隔数个时间步。借助LMFN,我们在以下方面取得了优于其他方法的优势:1)使用可行的矢量分割程序成功地对局部相互作用进行建模,该程序可以以更专业的方式探索交叉模式动力学; 2)使用BM-LSTM对全局交互进行建模以获取多模态信息的完整视图,从而保证信息的充分流动; 3)通过应用其他局部和全局融合方法,我们的通用融合结构可以高度扩展。实验表明,LMFN产生了最新的结果。此外,通过将外部产品用作融合方法,LMFN与其他模型相比实现了更高的效率。

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