Robust Hashing for Multi-View Data: Jointly Learning Low-Rank Kernelized Similarity Consensus and Hash Functions
Lin Wu, Yang Wang

TL;DR
This paper introduces a robust, efficient multi-view hashing method that jointly learns low-rank kernelized similarities and hash functions, effectively handling noise and reducing computational complexity.
Contribution
It proposes a novel joint learning framework using low-rank kernelized similarities with landmark graphs for robustness and efficiency in multi-view data hashing.
Findings
Outperforms existing methods on real-world datasets.
Effectively handles noisy multi-view data.
Reduces training complexity using landmark graphs.
Abstract
Learning hash functions/codes for similarity search over multi-view data is attracting increasing attention, where similar hash codes are assigned to the data objects characterizing consistently neighborhood relationship across views. Traditional methods in this category inherently suffer three limitations: 1) they commonly adopt a two-stage scheme where similarity matrix is first constructed, followed by a subsequent hash function learning; 2) these methods are commonly developed on the assumption that data samples with multiple representations are noise-free,which is not practical in real-life applications; 3) they often incur cumbersome training model caused by the neighborhood graph construction using all points in the database (). In this paper, we motivate the problem of jointly and efficiently training the robust hash functions over data objects with multi-feature…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Domain Adaptation and Few-Shot Learning · Remote-Sensing Image Classification
