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Mining on Heterogeneous Manifolds for Zero-Shot Cross-Modal Image Retrieval

Fan Yang, Zheng Wang, Jing Xiao, Shin’ichi Satoh

2020Proceedings of the AAAI Conference on Artificial Intelligence35 citationsDOIOpen Access PDF

Abstract

Most recent approaches for the zero-shot cross-modal image retrieval map images from different modalities into a uniform feature space to exploit their relevance by using a pre-trained model. Based on the observation that manifolds of zero-shot images are usually deformed and incomplete, we argue that the manifolds of unseen classes are inevitably distorted during the training of a two-stream model that simply maps images from different modalities into a uniform space. This issue directly leads to poor cross-modal retrieval performance. We propose a bi-directional random walk scheme to mining more reliable relationships between images by traversing heterogeneous manifolds in the feature space of each modality. Our proposed method benefits from intra-modal distributions to alleviate the interference caused by noisy similarities in the cross-modal feature space. As a result, we achieved great improvement in the performance of the thermal v.s. visible image retrieval task. The code of this paper: https://github.com/fyang93/cross-modal-retrieval

Topics & Concepts

ModalComputer scienceFeature (linguistics)Relevance (law)Artificial intelligenceImage (mathematics)Space (punctuation)Modality (human–computer interaction)Feature vectorTraverseModalitiesImage retrievalPattern recognition (psychology)Computer visionGeographyOperating systemPolymer chemistryLinguisticsSocial sciencePolitical scienceLawPhilosophyGeodesyChemistrySociologyAdvanced Image and Video Retrieval TechniquesDomain Adaptation and Few-Shot LearningMultimodal Machine Learning Applications
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