CMD: Self-supervised 3D Action Representation Learning with Cross-modal Mutual Distillation

Yunyao Mao, Wen-gang Zhou, Zhenbo Lu, Jiajun Deng, Houqiang Li
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引用次数: 11

Abstract

In 3D action recognition, there exists rich complementary information between skeleton modalities. Nevertheless, how to model and utilize this information remains a challenging problem for self-supervised 3D action representation learning. In this work, we formulate the cross-modal interaction as a bidirectional knowledge distillation problem. Different from classic distillation solutions that transfer the knowledge of a fixed and pre-trained teacher to the student, in this work, the knowledge is continuously updated and bidirectionally distilled between modalities. To this end, we propose a new Cross-modal Mutual Distillation (CMD) framework with the following designs. On the one hand, the neighboring similarity distribution is introduced to model the knowledge learned in each modality, where the relational information is naturally suitable for the contrastive frameworks. On the other hand, asymmetrical configurations are used for teacher and student to stabilize the distillation process and to transfer high-confidence information between modalities. By derivation, we find that the cross-modal positive mining in previous works can be regarded as a degenerated version of our CMD. We perform extensive experiments on NTU RGB+D 60, NTU RGB+D 120, and PKU-MMD II datasets. Our approach outperforms existing self-supervised methods and sets a series of new records. The code is available at: https://github.com/maoyunyao/CMD
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CMD:基于跨模态相互蒸馏的自监督3D动作表示学习
在三维动作识别中,骨骼形态之间存在着丰富的互补信息。然而,如何建模和利用这些信息仍然是自监督三维动作表示学习的一个具有挑战性的问题。在这项工作中,我们将跨模态交互描述为一个双向知识蒸馏问题。与经典的蒸馏解决方案不同,将固定和预先训练的教师的知识转移给学生,在这项工作中,知识不断更新,并在模式之间双向蒸馏。为此,我们提出了一个新的跨模态相互蒸馏(CMD)框架,其设计如下:一方面,引入相邻相似度分布对各模态学习到的知识进行建模,其中的关系信息自然适合于对比框架;另一方面,教师和学生使用不对称配置来稳定蒸馏过程,并在模态之间传递高置信度信息。通过推导,我们发现以前工作中的跨模态正挖掘可以看作是我们的CMD的退化版本。我们在NTU RGB+ d60、NTU RGB+ d120和PKU-MMD II数据集上进行了广泛的实验。我们的方法优于现有的自我监督方法,并创造了一系列新的记录。代码可从https://github.com/maoyunyao/CMD获得
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