This paper presents Probabilistic Video Contrastive Learning, a self-supervised representation learning method that bridges contrastive learning with probabilistic representation. We hypothesize that the clips composing the video have different distributions in short-term duration, but can represent the complicated and sophisticated video distribution through combination in a common embedding space. Thus, the proposed method represents video clips as normal distributions and combines them into a Mixture of Gaussians to model the whole video distribution. By sampling embeddings from the whole video distribution, we can circumvent the careful sampling strategy or transformations to generate augmented views of the clips, unlike previous deterministic methods that have mainly focused on such sample generation strategies for contrastive learning. We further propose a stochastic contrastive loss to learn proper video distributions and handle the inherent uncertainty from the nature of the raw video. Experimental results verify that our probabilistic embedding stands as a state-of-the-art video representation learning for action recognition and video retrieval on the most popular benchmarks, including UCF101 and HMDB51.
翻译:本文展示了概率性视频对比学习,这是一种自我监督的代表性学习方法,将对比性学习与概率代表性联系起来。我们假设,录相片的剪辑在短期内分布不同,但可以通过共同嵌入空间的组合来代表复杂而复杂的视频传播。因此,拟议方法将视频剪辑作为正常的分发方式,并结合成高斯人的混合体,以模拟整个视频传播。通过取样从整个视频分发中嵌入,我们可以绕过仔细的取样战略或变换,以产生更多剪辑的观点,而不同于以往主要侧重于这种样本生成战略以便对比性学习的确定性方法。我们进一步提议了一种分辨式对比性损失,以学习适当的视频分发方式,并处理原始视频性质固有的不确定性。实验结果证实,我们作为最受欢迎的基准(包括UCF101和HMDB51)上的行动识别和视频检索的状态、最先进的视频体现学习。