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Universal Weighting Metric Learning for Cross-Modal Matching

Jiwei Wei, Xing Xu, Yang Yang, Yanli Ji, Zheng Wang, Heng Tao Shen

2020107 citationsDOI

Abstract

Cross-modal matching has been a highlighted research topic in both vision and language areas. Learning appropriate mining strategy to sample and weight informative pairs is crucial for the cross-modal matching performance. However, most existing metric learning methods are developed for unimodal matching, which is unsuitable for cross-modal matching on multimodal data with heterogeneous features. To address this problem, we propose a simple and interpretable universal weighting framework for cross-modal matching, which provides a tool to analyze the interpretability of various loss functions. Furthermore, we introduce a new polynomial loss under the universal weighting framework, which defines a weight function for the positive and negative informative pairs respectively. Experimental results on two image-text matching benchmarks and two video-text matching benchmarks validate the efficacy of the proposed method.

Topics & Concepts

InterpretabilityWeightingMatching (statistics)ModalMetric (unit)Computer scienceArtificial intelligenceMachine learningFunction (biology)Pattern recognition (psychology)Ranking (information retrieval)Simple (philosophy)A-weightingData miningMathematicsStatisticsEngineeringEvolutionary biologyOperations managementPhilosophyMedicineRadiologyChemistryBiologyEpistemologyPolymer chemistryMultimodal Machine Learning ApplicationsAdvanced Image and Video Retrieval TechniquesHuman Pose and Action Recognition