Skeleton-based person re-identification (Re-ID) is an emerging open topic providing great value for safety-critical applications. Existing methods typically extract hand-crafted features or model skeleton dynamics from the trajectory of body joints, while they rarely explore valuable relation information contained in body structure or motion. To fully explore body relations, we construct graphs to model human skeletons from different levels, and for the first time propose a Multi-level Graph encoding approach with Structural-Collaborative Relation learning (MG-SCR) to encode discriminative graph features for person Re-ID. Specifically, considering that structurally-connected body components are highly correlated in a skeleton, we first propose a multi-head structural relation layer to learn different relations of neighbor body-component nodes in graphs, which helps aggregate key correlative features for effective node representations. Second, inspired by the fact that body-component collaboration in walking usually carries recognizable patterns, we propose a cross-level collaborative relation layer to infer collaboration between different level components, so as to capture more discriminative skeleton graph features. Finally, to enhance graph dynamics encoding, we propose a novel self-supervised sparse sequential prediction task for model pre-training, which facilitates encoding high-level graph semantics for person Re-ID. MG-SCR outperforms state-of-the-art skeleton-based methods, and it achieves superior performance to many multi-modal methods that utilize extra RGB or depth features. Our codes are available at https://github.com/Kali-Hac/MG-SCR.
翻译:以Skeleton为基础的人重新身份识别(Re-ID)是一个新出现的开放话题,为安全关键应用提供了巨大的价值。现有方法通常从身体连接轨迹中提取手工制作的特征或模型骨架动态,而它们很少探索机体结构或运动中包含的宝贵关系信息。为了充分探索身体关系,我们用不同层次的人体骨骼模型构建图表,并首次提议采用结构-协作关系学习(MG-SCR)的多层次图形编码方法来为人进行歧视性图表特征的编码,Re-ID。具体地说,考虑到结构相连的身体组成部分在骨架中具有高度关联性,我们首先提议一个多头结构关系结构关系层,以学习相邻身体组成节点或运动运动中包含的宝贵关系信息。第二,由于机构-组成部分合作通常带有可识别的模式,我们提议了一个跨层次的协作关系层,以推断不同层次组成部分之间的协作,从而捕捉到更具有歧视性的骨质图形特征。最后,我们提议了一个多头结构关系层结构关系层结构关系层结构结构结构,以新的自我强化的自我智能智能智能智能智能智能系统模型为基础,用来进行自我智能分析。