Litcius/Paper detail

Deep Incremental Hashing for Semantic Image Retrieval With Concept Drift

Xing Tian, Wing W. Y. Ng, Huihui Xu

2023IEEE Transactions on Big Data17 citationsDOI

Abstract

Hashing methods are widely used for content-based image retrieval due to their attractive time and space efficiencies. Several dynamic hashing methods have been proposed for image retrieval tasks in non-stationary environments. However, concept drift problems in non-stationary environment are seldomly considered which lead to significant deterioration of performance. Therefore, we propose Deep Incremental Hashing (DIH). For the learning part, similarity-preserving object codes of each newly arriving data chunk are computed using the product of its label matrix and a random Gaussian matrix generated offline. A point-wise loss function is then devised to guide the learning of a deep hash neural network. To retain the learned knowledge of former chunks, a weighting-based method is utilized to combine different hash tables trained at different time steps to form a multi-table hashing system. Experimental results on 13 simulated concept drift environments show that DIH adapts to non-stationary data environments well and yields better retrieval performance than existing dynamic hashing methods.

Topics & Concepts

Computer scienceHash functionDynamic perfect hashingImage retrievalHash tableLinear hashingArtificial intelligencePattern recognition (psychology)Data miningWeightingTheoretical computer scienceDouble hashingImage (mathematics)Computer securityRadiologyMedicineAdvanced Image and Video Retrieval TechniquesCaching and Content DeliveryVideo Surveillance and Tracking Methods