Julia Port of Projective Dictionary Pair Learning

Introduction

Discriminative dictionary learning (DL) has been widely studied in various pattern classification problems. Most of the existing DL methods aim to learn a synthesis dictionary to represent the input signal while enforcing the representation coef- ficients and/or representation residual to be discriminative. However, the l_0 or l_1-norm sparsity constraint on the representation coefficients adopted in most DL methods makes the training and testing phases time consuming. We propose a new discriminative DL framework, namely projective dictionary pair learning (DPL), which learns a synthesis dictionary and an analysis dictionary jointly to achieve the goal of signal representation and discrimination. Compared with conventional DL methods, the proposed DPL method can not only greatly reduce the time complexity in the training and testing phases, but also lead to very competitive accuracies in a variety of visual classification tasks.

Project Details

Date: May 18, 2015

Author: QU Xiaofeng

Categories: project

Tagged: Flat, UI, Development

Client: Volunteer

Website: https://github.com/quxiaofeng/ProjectiveDictionaryPairLearning.jl

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Julia Port of Projective Dictionary Pair Learning

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PQ702, Department of Computing, The Hong Kong Polytechnic University,
11 Yuk Choi Road, Hung Hom, Kowloon,
Hong Kong SAR, China