Recent advances in skeleton-based person re-identification (re-ID) obtain impressive performance via either hand-crafted skeleton descriptors or skeleton representation learning with deep learning paradigms. However, they typically require skeletal pre-modeling and label information for training, which leads to limited applicability of these methods. In this paper, we focus on unsupervised skeleton-based person re-ID, and present a generic Simple Masked Contrastive learning (SimMC) framework to learn effective representations from unlabeled 3D skeletons for person re-ID. Specifically, to fully exploit skeleton features within each skeleton sequence, we first devise a masked prototype contrastive learning (MPC) scheme to cluster the most typical skeleton features (skeleton prototypes) from different subsequences randomly masked from raw sequences, and contrast the inherent similarity between skeleton features and different prototypes to learn discriminative skeleton representations without using any label. Then, considering that different subsequences within the same sequence usually enjoy strong correlations due to the nature of motion continuity, we propose the masked intra-sequence contrastive learning (MIC) to capture intra-sequence pattern consistency between subsequences, so as to encourage learning more effective skeleton representations for person re-ID. Extensive experiments validate that the proposed SimMC outperforms most state-of-the-art skeleton-based methods. We further show its scalability and efficiency in enhancing the performance of existing models. Our codes are available at https://github.com/Kali-Hac/SimMC.
翻译:在基于骨骼的人的重新定位(re-ID)方面最近的进展,通过手工制作的骨架描述仪或以深层学习模式进行骨架代表学习,取得了令人印象深刻的成绩。然而,这些进展通常要求为培训提供骨骼预建和标签信息,这导致这些方法的可适用性有限。在本文中,我们侧重于未经监督的骨骼人重新定位(re-ID)的最近进展,并展示一个通用的简单隐蔽的隐性隐蔽对比学习(SimMC)框架,以学习从未经标记的3D骨架中为人重新识别的有效表现。具体地说,为了充分利用每个骨骼序列中的骨架特征,我们首先设计一个掩码的对比学习(MPC)原型(MPC)计划,将不同次序列中最典型的骨架特征(skeleton原型)归为组合起来,随机遮掩体,将骨架特征与不同的原型对比,不使用任何标签。然后,考虑到同一序列中不同的子序列通常具有很强的关联性关系,因为运动的连续性性质,我们提议在内部对比后部内部学习模式中进行隐含的原型对比学习,因此,在内部学习中,S-MICMIC-MI-MI-MI-ILILL校校校校校校校校校校校校校校校校外校外演算中建议,这是我们的校校外演制,我们的校外演算法,以。