Fast Class-wise Updating for Online Hashing

12/01/2020
by   Mingbao Lin, et al.
0

Online image hashing has received increasing research attention recently, which processes large-scale data in a streaming fashion to update the hash functions on-the-fly. To this end, most existing works exploit this problem under a supervised setting, i.e., using class labels to boost the hashing performance, which suffers from the defects in both adaptivity and efficiency: First, large amounts of training batches are required to learn up-to-date hash functions, which leads to poor online adaptivity. Second, the training is time-consuming, which contradicts with the core need of online learning. In this paper, a novel supervised online hashing scheme, termed Fast Class-wise Updating for Online Hashing (FCOH), is proposed to address the above two challenges by introducing a novel and efficient inner product operation. To achieve fast online adaptivity, a class-wise updating method is developed to decompose the binary code learning and alternatively renew the hash functions in a class-wise fashion, which well addresses the burden on large amounts of training batches. Quantitatively, such a decomposition further leads to at least 75 semi-relaxation optimization, which accelerates the online training by treating different binary constraints independently. Without additional constraints and variables, the time complexity is significantly reduced. Such a scheme is also quantitatively shown to well preserve past information during updating hashing functions. We have quantitatively demonstrated that the collective effort of class-wise updating and semi-relaxation optimization provides a superior performance comparing to various state-of-the-art methods, which is verified through extensive experiments on three widely-used datasets.

READ FULL TEXT
research
05/11/2019

Hadamard Matrix Guided Online Hashing

Online image hashing has received increasing research attention recently...
research
11/25/2019

Online Hashing with Efficient Updating of Binary Codes

Online hashing methods are efficient in learning the hash functions from...
research
01/29/2019

Towards Optimal Discrete Online Hashing with Balanced Similarity

When facing large-scale image datasets, online hashing serves as a promi...
research
03/27/2017

MIHash: Online Hashing with Mutual Information

Learning-based hashing methods are widely used for nearest neighbor retr...
research
11/10/2015

Online Supervised Hashing for Ever-Growing Datasets

Supervised hashing methods are widely-used for nearest neighbor search i...
research
04/07/2019

Fast Supervised Discrete Hashing

Learning-based hashing algorithms are "hot topics" because they can grea...
research
04/05/2023

Unfolded Self-Reconstruction LSH: Towards Machine Unlearning in Approximate Nearest Neighbour Search

Approximate nearest neighbour (ANN) search is an essential component of ...

Please sign up or login with your details

Forgot password? Click here to reset