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Similarity Graph Convolutional Construction Network for Interactive Action Recognition

机译:交互式动作识别的相似图卷积构造网络

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Interaction action recognition is a challenging problem in the research of computer vision. Skeleton-based action recognition shows great performance in recent years, but the non-Euclidean distance structure of the skeleton brings a huge challenge to the design of deep learning neural network. When meeting interaction action recognition, research in the previous study is based on a fixed skeleton graph, capturing only information about local body movements in a single action and do not deal with the relationship between two or more people. In this article, we present a similarity graph convolutional network that contains two-person interaction information. This model can represent the relationship between two people. Simultaneously, for different body parts (such as head and hand), the relationship can be handled. The model has two construction modes, a skeleton graph and a similarity graph, and the features from the two composition modes is better fused by the hyper-graph. Similarity graph is obtained from a two-step construction. First, an encoder is designed, which is aimed to map different characteristics of one joint to a same vector space. Second, we calculate the similarity between different joints to construct the similarity graph. Follow the steps above, similarity graph can indicate the relationship between two people in details. We perform experiments on the NTU RGB+D dataset and verify the effectiveness of our model. The result shows that our approach outperforms the state-of-the-art methods and similarity graph can solve the relationship modeling problem in interactive action recognition.
机译:交互动作识别是计算机视觉研究中一个具有挑战性的问题。基于骨架的动作识别在近几年表现出优异的性能,但是骨架的非欧氏距离结构给深度学习神经网络的设计带来了巨大的挑战。当满足交互动作识别时,以前的研究基于固定的骨架图,仅捕获有关单个动作中局部身体运动的信息,而不涉及两个或多个人之间的关系。在本文中,我们提出了一个包含两人交互信息的相似度图卷积网络。该模型可以表示两个人之间的关系。同时,对于不同的身体部位(例如头和手),可以处理这种关系。该模型具有两种构造模式:骨架图和相似图,并且通过超图可以更好地融合两种合成模式的特征。相似性图是通过两步构造获得的。首先,设计一种编码器,该编码器旨在将一个关节的不同特性映射到相同的向量空间。其次,我们计算不同关节之间的相似度以构建相似度图。按照上述步骤,相似度图可以详细指示两个人之间的关系。我们在NTU RGB + D数据集上进行实验,并验证了模型的有效性。结果表明,我们的方法优于最新方法,相似度图可以解决交互式动作识别中的关系建模问题。

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