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Graph-based High-Order Relation Discovery for Fine-grained Recognition

Yifan Zhao, Ke Yan, Feiyue Huang, Jia Li

2021107 citationsDOI

Abstract

Fine-grained object recognition aims to learn effective features that can identify the subtle differences between visually similar objects. Most of the existing works tend to amplify discriminative part regions with attention mechanisms. Besides its unstable performance under complex backgrounds, the intrinsic interrelationship between different semantic features is less explored. Toward this end, we propose an effective graph-based relation discovery approach to build a contextual understanding of high-order relationships. In our approach, a high-dimensional feature bank is first formed and jointly regularized with semantic- and positional-aware high-order constraints, endowing rich attributes to feature representations. Second, to overcome the high-dimension curse, we propose a graph-based semantic grouping strategy to embed this high-order tensor bank into a low-dimensional space. Meanwhile, a group-wise learning strategy is proposed to regularize the features focusing on the cluster embedding center. With the collaborative learning of three modules, our module is able to grasp the stronger contextual details of fine-grained objects. Experimental evidence demonstrates our approach achieves new state-of-the-art on 4 widely-used fine-grained object recognition benchmarks.

Topics & Concepts

Computer scienceDiscriminative modelEmbeddingFeature learningGRASPGraphArtificial intelligenceRelation (database)Scene graphFeature (linguistics)Curse of dimensionalityDimension (graph theory)Theoretical computer sciencePattern recognition (psychology)Data miningRendering (computer graphics)MathematicsPhilosophyLinguisticsPure mathematicsProgramming languageAdvanced Neural Network ApplicationsAdvanced Image and Video Retrieval TechniquesDomain Adaptation and Few-Shot Learning
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