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Skeleton-Based Emotion Recognition Based on Two-Stream Self-Attention Enhanced Spatial-Temporal Graph Convolutional Network

机译:基于骨骼的情感识别基于双流自我关注增强空间颞图卷积网络

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摘要

Emotion recognition has drawn consistent attention from researchers recently. Although gesture modality plays an important role in expressing emotion, it is seldom considered in the field of emotion recognition. A key reason is the scarcity of labeled data containing 3D skeleton data. Some studies in action recognition have applied graph-based neural networks to explicitly model the spatial connection between joints. However, this method has not been considered in the field of gesture-based emotion recognition, so far. In this work, we applied a pose estimation based method to extract 3D skeleton coordinates for IEMOCAP database. We propose a self-attention enhanced spatial temporal graph convolutional network for skeleton-based emotion recognition, in which the spatial convolutional part models the skeletal structure of the body as a static graph, and the self-attention part dynamically constructs more connections between the joints and provides supplementary information. Our experiment demonstrates that the proposed model significantly outperforms other models and that the features of the extracted skeleton data improve the performance of multimodal emotion recognition.
机译:情感认可最近从研究人员中汲取了一致的关注。虽然姿态模态在表达情感方面发挥着重要作用,但很少考虑在情感认可领域。一个关键原因是包含3D骨架数据的标记数据的稀缺性。在行动识别中的一些研究已经应用基于图形的神经网络,以显式模拟关节之间的空间连接。然而,到目前为止,这种方法尚未考虑在基于手势的情感识别领域。在这项工作中,我们应用了基于姿势估计的方法来提取IEMocap数据库的3D骨架坐标。我们提出了一种自我关注的增强的空间时间图卷积网络,用于基于骨架的情感识别,其中空间卷积部分模拟了身体的骨架结构作为静态图,自我关注部分动态地构造了关节之间的更多连接并提供补充信息。我们的实验表明,所提出的模型显着优于其他模型,并且提取的骨架数据的特征提高了多式联情绪识别的性能。

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