Litcius/Paper detail

Semantic Relevance Learning for Video-Query Based Video Moment Retrieval

Shuwei Huo, Yuan Zhou, Ruolin Wang, Wei Xiang, Sun‐Yuan Kung

2023IEEE Transactions on Multimedia10 citationsDOI

Abstract

The task of video-query based video moment retrieval (VQ-VMR) aims to localize the segment in the reference video, which matches semantically with a short query video. This is a challenging task due to the rapid expansion and massive growth of online video services. With accurate retrieval of the target moment, we propose a new metric to effectively assess the semantic relevance between the query video and segments in the reference video. We also develop a new VQ-VMR framework to discover the intrinsic semantic relevance between a pair of input videos. It comprises two key components: a Fine-grained Feature Interaction (FFI) module and a Semantic Relevance Measurement (SRM) module. Together they can effectively deal with both the spatial and temporal dimensions of videos. First, the FFI module computes the semantic similarity between videos at a local frame level, mainly considering the spatial information in the videos. Subsequently, the SRM module learns the similarity between videos from a global perspective, taking into account the temporal information. We have conducted extensive experiments on two key datasets which demonstrate noticeable improvements of the proposed approach over the state-of-the-art methods.

Topics & Concepts

Computer scienceInformation retrievalRelevance (law)Task (project management)Similarity (geometry)Metric (unit)Query expansionSemantic similarityArtificial intelligenceMoment (physics)Key (lock)Frame (networking)Feature (linguistics)Image (mathematics)ManagementTelecommunicationsComputer securityLawOperations managementPhysicsClassical mechanicsPhilosophyEconomicsPolitical scienceLinguisticsMultimodal Machine Learning ApplicationsAdvanced Image and Video Retrieval TechniquesHuman Pose and Action Recognition