Unsupervised hashing based on the recovery of subspace structures
作者:
Highlights:
• Our method adapts the LRR model into a new variant, based on which the learned correlation matrix could be designed into a space-and-time saving formula for data semantics.
• To tackle the discrete graph hashing, we presents a new learning method, i.e., transforms the original optimization problem into three subproblems by means of surrogate variables, and most importantly each subproblem is addressed with a closed-form solution, which makes the whole hashing learning converge within dozens of iterations.
• Experiments on four datasets demonstrate the advantages of our method over several state-of- the-art unsupervised hashing models including two recently proposed unsupervised deep hashing methods.
摘要
•Our method adapts the LRR model into a new variant, based on which the learned correlation matrix could be designed into a space-and-time saving formula for data semantics.•To tackle the discrete graph hashing, we presents a new learning method, i.e., transforms the original optimization problem into three subproblems by means of surrogate variables, and most importantly each subproblem is addressed with a closed-form solution, which makes the whole hashing learning converge within dozens of iterations.•Experiments on four datasets demonstrate the advantages of our method over several state-of- the-art unsupervised hashing models including two recently proposed unsupervised deep hashing methods.
论文关键词:Semantic hashing,Subspace learning,Low-rank representation,Discrete optimization
论文评审过程:Received 22 April 2019, Revised 9 January 2020, Accepted 5 February 2020, Available online 6 February 2020, Version of Record 14 February 2020.
论文官网地址:https://doi.org/10.1016/j.patcog.2020.107261