Adaptive Confidence Multi-view Hashing For Multimedia Retrieval
2023 Β· Jian Zhu, Yu Cui, Zhangmin Huang, et al.
Abstract
The multi-view hash method converts heterogeneous data from multiple views into binary hash codes, which is one of the critical technologies in multimedia retrieval. However, the current methods mainly explore the complementarity among multiple views while lacking confidence learning and fusion. Moreover, in practical application scenarios, the single-view data contain redundant noise. To conduct the confidence learning and eliminate unnecessary noise, we propose a novel Adaptive Confidence Multi-View Hashing (ACMVH) method. First, a confidence network is developed to extract useful information from various single-view features and remove noise information. Furthermore, an adaptive confidence multi-view network is employed to measure the confidence of each view and then fuse multi-view features through a weighted summation. Lastly, a dilation network is designed to further enhance the feature representation of the fused features. To the best of our knowledge, we pioneer the application
Authors
(none)
Tags
Stats
Related papers
- CLIP Multi-modal Hashing For Multimedia Retrieval (2024)3.58
- Discriminative Cross-view Binary Representation Learning (2018)4.52
- Learning Discriminative Hashing Codes For Cross-modal Retrieval Based On Multi-view Features (2018)3.58
- Transitive Hashing Network For Heterogeneous Multimedia Retrieval (2016)8.35
- Adaptive Asymmetric Label-guided Hashing For Multimedia Search (2022)0.00
- CLIP Multi-modal Hashing: A New Baseline CLIPMH (2023)0.00
- Discrete Multi-modal Hashing With Canonical Views For Robust Mobile Landmark Search (2017)15.59
- MOON: Multi-hash Codes Joint Learning For Cross-media Retrieval (2021)8.60