Learning Binary Codes For High-dimensional Data Using Bilinear Projections | Awesome Learning to Hash Add your paper to Learning2Hash

Learning Binary Codes For High-dimensional Data Using Bilinear Projections

Gong Y., Kumar, Rowley, Lazebnik. Arxiv 2024

[Paper]    
ARXIV Independent Quantisation

Recent advances in visual recognition indicate that to achieve good retrieval and classification accuracy on largescale datasets like ImageNet, extremely high-dimensional visual descriptors, e.g., Fisher Vectors, are needed. We present a novel method for converting such descriptors to compact similarity-preserving binary codes that exploits their natural matrix structure to reduce their dimensionality using compact bilinear projections instead of a single large projection matrix. This method achieves comparable retrieval and classification accuracy to the original descriptors and to the state-of-the-art Product Quantization approach while having orders of magnitude faster code generation time and smaller memory footprint.

Similar Work