Litcius/Paper detail

Contrastive Transformation for Self-supervised Correspondence Learning

Ning Wang, Wengang Zhou, Houqiang Li

2021Proceedings of the AAAI Conference on Artificial Intelligence27 citationsDOIOpen Access PDF

Abstract

In this paper, we focus on the self-supervised learning of visual correspondence using unlabeled videos in the wild. Our method simultaneously considers intra- and inter-video representation associations for reliable correspondence estimation. The intra-video learning transforms the image contents across frames within a single video via the frame pair-wise affinity. To obtain the discriminative representation for instance-level separation, we go beyond the intra-video analysis and construct the inter-video affinity to facilitate the contrastive transformation across different videos. By forcing the transformation consistency between intra- and inter-video levels, the fine-grained correspondence associations are well preserved and the instance-level feature discrimination is effectively reinforced. Our simple framework outperforms the recent self-supervised correspondence methods on a range of visual tasks including video object tracking (VOT), video object segmentation (VOS), pose keypoint tracking, etc. It is worth mentioning that our method also surpasses the fully-supervised affinity representation (e.g., ResNet) and performs competitively against the recent fully-supervised algorithms designed for the specific tasks (e.g., VOT and VOS).

Topics & Concepts

Artificial intelligenceDiscriminative modelComputer sciencePattern recognition (psychology)Representation (politics)Transformation (genetics)Feature (linguistics)Video trackingFeature learningConstruct (python library)SegmentationFocus (optics)Consistency (knowledge bases)Object (grammar)Computer visionFrame (networking)PoliticsPolitical sciencePhilosophyOpticsTelecommunicationsPhysicsProgramming languageLinguisticsLawBiochemistryGeneChemistryVideo Surveillance and Tracking MethodsAdvanced Image and Video Retrieval TechniquesDomain Adaptation and Few-Shot Learning