Hihpq: Hierarchical Hyperbolic Product Quantization For Unsupervised Image Retrieval
2024 Β· Zexuan Qiu, Jiahong Liu, Yankai Chen, et al.
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
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