Leveraging High-resolution Features For Improved Deep Hashing-based Image Retrieval
2024 Β· Aymene Berriche, Mehdi Adjal Zakaria, Riyadh Baghdadi
Abstract
Deep hashing techniques have emerged as the predominant approach for efficient image retrieval. Traditionally, these methods utilize pre-trained convolutional neural networks (CNNs) such as AlexNet and VGG-16 as feature extractors. However, the increasing complexity of datasets poses challenges for these backbone architectures in capturing meaningful features essential for effective image retrieval. In this study, we explore the efficacy of employing high-resolution features learned through state-of-the-art techniques for image retrieval tasks. Specifically, we propose a novel methodology that utilizes High-Resolution Networks (HRNets) as the backbone for the deep hashing task, termed High-Resolution Hashing Network (HHNet). Our approach demonstrates superior performance compared to existing methods across all tested benchmark datasets, including CIFAR-10, NUS-WIDE, MS COCO, and ImageNet. This performance improvement is more pronounced for complex datasets, which highlights the need to
Authors
(none)
Tags
Stats
Related papers
- Hybridhash: Hybrid Convolutional And Self-attention Deep Hashing For Image Retrieval (2024)12.56
- Deep Residual Hashing (2016)0.00
- Feature Pyramid Hashing (2019)10.61
- Unsupervised Semantic Deep Hashing (2018)10.48
- SSDH: Semi-supervised Deep Hashing For Large Scale Image Retrieval (2016)15.40
- Query-adaptive Image Retrieval By Deep Weighted Hashing (2016)12.68
- Unsupervised Triplet Hashing For Fast Image Retrieval (2017)12.10
- Deep Self-adaptive Hashing For Image Retrieval (2021)8.35