Abstract

Existing unsupervised deep product quantization methods primarily aim for the increased similarity between different views of the identical image, whereas the delicate multi-level semantic similarities preserved between images are overlooked. Moreover, these methods predominantly focus on the Euclidean space for computational convenience, compromising their ability to map the multi-level semantic relationships between images effectively. To mitigate these shortcomings, we propose a novel unsupervised product quantization method dubbed \textbf\{Hi\}erarchical \textbf\{H\}yperbolic \textbf\{P\}roduct \textbf\{Q\}uantization (HiHPQ), which learns quantized representations by incorporating hierarchical semantic similarity within hyperbolic geometry. Specifically, we propose a hyperbolic product quantizer, where the hyperbolic codebook attention mechanism and the quantized contrastive learning on the hyperbolic product manifold are introduced to expedite quantization. Furthermore, we propos

Authors

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Tags

  • Product Quantization
  • Image Retrieval
  • Unsupervised Hashing
  • Supervised Hashing

Stats

  • citations7
  • S2 citationsβ€”
  • github stars0
  • HF likes0
  • heat score6.77
  • arxiv keyqiu2024hihpq

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