Litcius/Paper detail

CONQUER: Contextual Query-aware Ranking for Video Corpus Moment Retrieval

Zhijian Hou, Chong-Wah Ngo, W. K. Chan

202137 citationsDOIOpen Access PDF

Abstract

This paper tackles a recently proposed Video Corpus Moment Retrieval task. This task is essential because advanced video retrieval applications should enable users to retrieve a precise moment from a large video corpus. We propose a novel CONtextual QUery-awarE Ranking~(CONQUER) model for effective moment localization and ranking. CONQUER explores query context for multi-modal fusion and representation learning in two different steps. The first step derives fusion weights for the adaptive combination of multi-modal video content. The second step performs bi-directional attention to tightly couple video and query as a single joint representation for moment localization. As query context is fully engaged in video representation learning, from feature fusion to transformation, the resulting feature is user-centered and has a larger capacity in capturing multi-modal signals specific to query. We conduct studies on two datasets, TVR for closed-world TV episodes and DiDeMo for open-world user-generated videos, to investigate the potential advantages of fusing video and query online as a joint representation for moment retrieval.

Topics & Concepts

Computer scienceRepresentation (politics)Context (archaeology)Artificial intelligenceMoment (physics)Ranking (information retrieval)Feature (linguistics)Task (project management)Information retrievalVideo retrievalJoint (building)Feature learningENCODEQuery expansionFeature extractionPattern recognition (psychology)Context modelFusionNatural language processingMultimodal Machine Learning ApplicationsHuman Pose and Action RecognitionVideo Analysis and Summarization
CONQUER: Contextual Query-aware Ranking for Video Corpus Moment Retrieval | Litcius