Skeleton-based action recognition methods are limited by the semantic extraction of spatio-temporal skeletal maps. However, current methods have difficulty in effectively combining features from both temporal and spatial graph dimensions and tend to be thick on one side and thin on the other. In this paper, we propose a Temporal-Channel Aggregation Graph Convolutional Networks (TCA-GCN) to learn spatial and temporal topologies dynamically and efficiently aggregate topological features in different temporal and channel dimensions for skeleton-based action recognition. We use the Temporal Aggregation module to learn temporal dimensional features and the Channel Aggregation module to efficiently combine spatial dynamic channel-wise topological features with temporal dynamic topological features. In addition, we extract multi-scale skeletal features on temporal modeling and fuse them with an attention mechanism. Extensive experiments show that our model results outperform state-of-the-art methods on the NTU RGB+D, NTU RGB+D 120, and NW-UCLA datasets.
翻译:在本文中,我们建议采用时空气聚合图变异网络(TTCA-GCN),以动态和高效地学习不同时间和频道层面的时空表层特征,以便进行骨质行动识别。我们使用时空聚合模块学习时空特征和频道聚合模块,以便有效地将空间动态频道的表层特征与时间动态表层特征结合起来。此外,我们还在时间模型中提取多尺度骨骼特征,并将这些特征与关注机制结合起来。广泛的实验表明,我们的模型结果超越了NTU RGB+D、NTU RGB+D 120和NW-UCLA数据集的时空阵形状态方法。