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Hierarchical mutual distillation for multi-view fusion: Learning from all possible view combinationsopen access

Authors
Yang, JiwoongChung, HaejunJang, Ikbeom
Issue Date
Oct-2026
Publisher
Elsevier Ltd
Keywords
Flexible multi-view inference; Hierarchical mutual distillation; Image classification; Multi-view learning; Uncertainty-aware fusion
Citation
Pattern Recognition, v.178, pp 1 - 12
Pages
12
Indexed
SCIE
SCOPUS
Journal Title
Pattern Recognition
Volume
178
Start Page
1
End Page
12
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/211836
DOI
10.1016/j.patcog.2026.113432
ISSN
0031-3203
1873-5142
Abstract
Multi-view learning often struggles to effectively leverage images captured from diverse angles and locations. Learning methods for unstructured multi-view images remain largely underexplored. We propose a novel Hierarchical Mutual Distillation for Multi-View Fusion (HMDMV) method, which can handle both structured and unstructured multi-view scenarios. It makes predictions utilizing all possible view combinations: single view, partial multi-view, and full multi-view. The method generates predictions for each view combination and then applies hierarchical mutual distillation to enhance inter-view consistency. An uncertainty-based weighting mechanism further refines the fusion process by adjusting the influence of each view combination according to its prediction confidence, reducing the impact of low-confidence views. Extensive experiments on large-scale structured and unstructured datasets demonstrate that HMDMV consistently achieves state-of-the-art classification accuracy. Another unique advantage of HMDMV is that it provides improved flexibility in inference, allowing for more or fewer view counts in inference than those used in training without additional processing. We also provide a light version with reduced training cost by designing an efficient strategy that randomly samples subsets of view combinations during each training iteration. These results highlight HMDMV's robustness in real-world settings where view availability is variable or incomplete. The code is available at https://github.com/labhai/HMDMV.
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