ICANet: a simple cascade linear convolution network for face recognition

Abstract Recently, deep convolutional networks have demonstrated their capability of improving the discriminative power compared with other machine learning method, but its feature learning mechanism is not very clear. In this paper, we present a cascaded linear convolutional network, based on indep...

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Main Authors: Yongqing Zhang, Tianyu Geng, Xi Wu, Jiliu Zhou, Dongrui Gao
Format: Article
Language:English
Published: SpringerOpen 2018-06-01
Series:EURASIP Journal on Image and Video Processing
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13640-018-0288-4
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spelling doaj-0f80a57f68bf46188930b298a5c2a8552020-11-24T20:53:31ZengSpringerOpenEURASIP Journal on Image and Video Processing1687-52812018-06-01201811710.1186/s13640-018-0288-4ICANet: a simple cascade linear convolution network for face recognitionYongqing Zhang0Tianyu Geng1Xi Wu2Jiliu Zhou3Dongrui Gao4School of Computer Science, Chengdu University of Information TechnologySchool of Computer Science, Sichuan UniversitySchool of Computer Science, Chengdu University of Information TechnologySchool of Computer Science, Chengdu University of Information TechnologySchool of Computer Science, Chengdu University of Information TechnologyAbstract Recently, deep convolutional networks have demonstrated their capability of improving the discriminative power compared with other machine learning method, but its feature learning mechanism is not very clear. In this paper, we present a cascaded linear convolutional network, based on independent component analysis (ICA) filters, named ICANet. ICANet consists of three parts: a convolutional layer, a binary hash, and a block histogram. It has the following advantages over other methods: (1) the network structure is simple and computationally efficient, (2) the ICA filter is trained with an unsupervised algorithm using unlabeled samples, which is practical, and (3) compared to deep learning models, each layer parameter in ICANet can be easily trained. Thus, ICANet can be used as a benchmark for the application of a deep learning framework for large-scale image classification. Finally, we test two public databases, AR and FERET, showing that ICANet performs well in facial recognition tasks.http://link.springer.com/article/10.1186/s13640-018-0288-4Face recognitionICANetConvolution network
collection DOAJ
language English
format Article
sources DOAJ
author Yongqing Zhang
Tianyu Geng
Xi Wu
Jiliu Zhou
Dongrui Gao
spellingShingle Yongqing Zhang
Tianyu Geng
Xi Wu
Jiliu Zhou
Dongrui Gao
ICANet: a simple cascade linear convolution network for face recognition
EURASIP Journal on Image and Video Processing
Face recognition
ICANet
Convolution network
author_facet Yongqing Zhang
Tianyu Geng
Xi Wu
Jiliu Zhou
Dongrui Gao
author_sort Yongqing Zhang
title ICANet: a simple cascade linear convolution network for face recognition
title_short ICANet: a simple cascade linear convolution network for face recognition
title_full ICANet: a simple cascade linear convolution network for face recognition
title_fullStr ICANet: a simple cascade linear convolution network for face recognition
title_full_unstemmed ICANet: a simple cascade linear convolution network for face recognition
title_sort icanet: a simple cascade linear convolution network for face recognition
publisher SpringerOpen
series EURASIP Journal on Image and Video Processing
issn 1687-5281
publishDate 2018-06-01
description Abstract Recently, deep convolutional networks have demonstrated their capability of improving the discriminative power compared with other machine learning method, but its feature learning mechanism is not very clear. In this paper, we present a cascaded linear convolutional network, based on independent component analysis (ICA) filters, named ICANet. ICANet consists of three parts: a convolutional layer, a binary hash, and a block histogram. It has the following advantages over other methods: (1) the network structure is simple and computationally efficient, (2) the ICA filter is trained with an unsupervised algorithm using unlabeled samples, which is practical, and (3) compared to deep learning models, each layer parameter in ICANet can be easily trained. Thus, ICANet can be used as a benchmark for the application of a deep learning framework for large-scale image classification. Finally, we test two public databases, AR and FERET, showing that ICANet performs well in facial recognition tasks.
topic Face recognition
ICANet
Convolution network
url http://link.springer.com/article/10.1186/s13640-018-0288-4
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