A joint hierarchical cross-attention graph convolutional network for multi-modal facial expression recognition

IF 1.8 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Computational Intelligence Pub Date : 2023-10-25 DOI:10.1111/coin.12607
Chujie Xu, Yong Du, Jingzi Wang, Wenjie Zheng, Tiejun Li, Zhansheng Yuan
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Abstract

Emotional recognition in conversations (ERC) is increasingly being applied in various IoT devices. Deep learning-based multimodal ERC has achieved great success by leveraging diverse and complementary modalities. Although most existing methods try to adopt attention mechanisms to fuse different information, these methods ignore the complementarity between modalities. To this end, the joint cross-attention model is introduced to alleviate this issue. However, multi-scale feature information on different modalities is not utilized. Moreover, the context relationship plays an important role in feature extraction in the expression recognition task. In this paper, we propose a novel joint hierarchical graph convolution network (JHGCN) which exploits different layer features and context relationships for facial expression recognition based on audio-visual (A-V) information. Specifically, we adopt different deep networks to extract features from different modalities individually. For V modality, we construct V graph data based on patch embeddings which are extracted from the transformer encoder. Moreover, we embed the graph convolution which can leverage the intra-modality relationships with the transformer encoder. Then, the deep feature from different layers is fed to the hierarchical fusion module to enhance feature representation. At last, we use the joint cross-attention mechanism to exploit the complementary inter-modality relationships. To validate the proposed model, we have conducted various experiments on the AffWild2 and CMU-MOSI datasets. All results confirm that our proposed model achieves highly promising performance compared to the joint cross-attention model and other methods.

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用于多模态面部表情识别的联合分层交叉注意力图卷积网络
对话中的情感识别(ERC)正越来越多地应用于各种物联网设备。基于深度学习的多模态情感识别(ERC)利用多种互补模态取得了巨大成功。虽然现有的大多数方法都尝试采用注意力机制来融合不同的信息,但这些方法忽略了模态之间的互补性。为此,我们引入了联合交叉注意模型来缓解这一问题。然而,不同模态的多尺度特征信息并没有得到利用。此外,在表情识别任务中,上下文关系对特征提取起着重要作用。在本文中,我们提出了一种新颖的联合分层图卷积网络(JHGCN),它能利用不同层的特征和上下文关系来进行基于视听(A-V)信息的面部表情识别。具体来说,我们采用不同的深度网络分别提取不同模态的特征。对于 V 模态,我们基于从变换器编码器中提取的补丁嵌入构建 V 图数据。此外,我们还嵌入了图卷积,它可以利用变换器编码器的模态内关系。然后,将来自不同层的深度特征输入分层融合模块,以增强特征表示。最后,我们使用联合交叉关注机制来利用互补的跨模态关系。为了验证所提出的模型,我们在 AffWild2 和 CMU-MOSI 数据集上进行了各种实验。所有结果都证实,与联合交叉注意模型和其他方法相比,我们提出的模型取得了非常可喜的性能。
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来源期刊
Computational Intelligence
Computational Intelligence 工程技术-计算机:人工智能
CiteScore
6.90
自引率
3.60%
发文量
65
审稿时长
>12 weeks
期刊介绍: This leading international journal promotes and stimulates research in the field of artificial intelligence (AI). Covering a wide range of issues - from the tools and languages of AI to its philosophical implications - Computational Intelligence provides a vigorous forum for the publication of both experimental and theoretical research, as well as surveys and impact studies. The journal is designed to meet the needs of a wide range of AI workers in academic and industrial research.
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