论文标题
用于强大骨架的动作识别的丰富激活的图形卷积网络
Richly Activated Graph Convolutional Network for Robust Skeleton-based Action Recognition
论文作者
论文摘要
基于骨架的人类动作识别的当前方法通常与完整的骨架一起使用。但是,在实际情况下,不可避免地捕获不完整或嘈杂的骨骼,当某些信息的关节被遮挡或干扰时,这可能会大大恶化当前方法的性能。为了提高动作识别模型的鲁棒性,提出了多流图卷积网络(GCN)来探索在所有骨架关节上扩散的足够判别特征,以便分布式冗余表示会降低动作模型对非标准骨骼的敏感性。具体而言,主链GCN通过一系列有序的流进行扩展,这些流是从关节中学习判别特征的原因,而从较少的流中激活的关节。在这里,每个GCN流的骨骼关节的激活程度是通过类激活图(CAM)测量的,只有来自未激活关节的信息才会传递到下一个流,通过该流,可以通过该流获得所有活性接头上的丰富特征。因此,所提出的方法称为丰富活化的GCN(RA-GCN)。与最先进的方法(SOTA)方法相比,RA-GCN在标准NTU RGB+D 60和120个数据集上实现了可比的性能。更重要的是,在合成的阻塞和抖动的数据集上,可以通过使用拟议的RA-GCN来大大减轻由于闭塞和干扰的关节而引起的性能恶化。
Current methods for skeleton-based human action recognition usually work with complete skeletons. However, in real scenarios, it is inevitable to capture incomplete or noisy skeletons, which could significantly deteriorate the performance of current methods when some informative joints are occluded or disturbed. To improve the robustness of action recognition models, a multi-stream graph convolutional network (GCN) is proposed to explore sufficient discriminative features spreading over all skeleton joints, so that the distributed redundant representation reduces the sensitivity of the action models to non-standard skeletons. Concretely, the backbone GCN is extended by a series of ordered streams which is responsible for learning discriminative features from the joints less activated by preceding streams. Here, the activation degrees of skeleton joints of each GCN stream are measured by the class activation maps (CAM), and only the information from the unactivated joints will be passed to the next stream, by which rich features over all active joints are obtained. Thus, the proposed method is termed richly activated GCN (RA-GCN). Compared to the state-of-the-art (SOTA) methods, the RA-GCN achieves comparable performance on the standard NTU RGB+D 60 and 120 datasets. More crucially, on the synthetic occlusion and jittering datasets, the performance deterioration due to the occluded and disturbed joints can be significantly alleviated by utilizing the proposed RA-GCN.