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Contextualized Spatio-Temporal Contrastive Learning with Self-Supervision

Liangzhe Yuan, Rui Qian, Yin Cui, Boqing Gong, Florian Schroff, Ming–Hsuan Yang, Hartwig Adam, Ting Liu

20222022 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)24 citationsDOI

Abstract

Modern self-supervised learning algorithms typically enforce persistency of instance representations across views. While being very effective on learning holistic image and video representations, such an objective becomes suboptimal for learning spatio-temporally fine-grained features in videos, where scenes and instances evolve through space and time. In this paper, we present Contextualized Spatio-Temporal Contrastive Learning (ConST-CL) to effectively learn spatio-temporally fine-grained video representations via self-supervision. We first design a region-based pretext task which requires the model to transform instance representations from one view to another, guided by context features. Further, we introduce a simple network design that successfully reconciles the simultaneous learning process of both holistic and local representations. We evaluate our learned representations on a variety of downstream tasks and show that ConST-CL achieves competitive results on 6 datasets, including Kinetics, UCF, HMDB, AVA-Kinetics, AVA and OTB. Our code and models will be available at https://github.com/tensorflow/models/tree/master/official/projects/const_cl.

Topics & Concepts

Computer scienceContext (archaeology)Artificial intelligenceVariety (cybernetics)Code (set theory)Process (computing)PretextFeature learningTask (project management)Tree (set theory)Machine learningNatural language processingMathematicsSet (abstract data type)ManagementPoliticsOperating systemBiologyEconomicsPolitical sciencePaleontologyMathematical analysisLawProgramming languageHuman Pose and Action RecognitionMultimodal Machine Learning ApplicationsDomain Adaptation and Few-Shot Learning