Litcius/Paper detail

Coarse-to-Fine Semantic Alignment for Cross-Modal Moment Localization

Yupeng Hu, Liqiang Nie, Meng Liu, Kun Wang, Yinglong Wang, Xian‐Sheng Hua

2021IEEE Transactions on Image Processing65 citationsDOI

Abstract

Video moment localization, as an important branch of video content analysis, has attracted extensive attention in recent years. However, it is still in its infancy due to the following challenges: cross-modal semantic alignment and localization efficiency. To address these impediments, we present a cross-modal semantic alignment network. To be specific, we first design a video encoder to generate moment candidates, learn their representations, as well as model their semantic relevance. Meanwhile, we design a query encoder for diverse query intention understanding. Thereafter, we introduce a multi-granularity interaction module to deeply explore the semantic correlation between multi-modalities. Thereby, we can effectively complete target moment localization via sufficient cross-modal semantic understanding. Moreover, we introduce a semantic pruning strategy to reduce cross-modal retrieval overhead, improving localization efficiency. Experimental results on two benchmark datasets have justified the superiority of our model over several state-of-the-art competitors.

Topics & Concepts

Computer scienceBenchmark (surveying)EncoderModalMoment (physics)Artificial intelligenceGranularitySemantics (computer science)Overhead (engineering)PruningInformation retrievalPhysicsBiologyPolymer chemistryAgronomyProgramming languageClassical mechanicsGeographyOperating systemChemistryGeodesyMultimodal Machine Learning ApplicationsAdvanced Image and Video Retrieval TechniquesHuman Pose and Action Recognition