Multiple Feature Reweight DenseNet for Image Classification

Recent network research has demonstrated that the performance of convolutional neural networks can be improved by introducing a learning block that captures spatial correlations. In this paper, we propose a novel multiple feature reweight DenseNet (MFR-DenseNet) architecture. The MFR-DenseNet improv...

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Main Authors: Ke Zhang, Yurong Guo, Xinsheng Wang, Jinsha Yuan, Qiaolin Ding
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8611344/
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spelling doaj-07f2022dd4fb435b8f9897115d33c6122021-03-29T22:45:16ZengIEEEIEEE Access2169-35362019-01-0179872988010.1109/ACCESS.2018.28901278611344Multiple Feature Reweight DenseNet for Image ClassificationKe Zhang0https://orcid.org/0000-0003-3271-3585Yurong Guo1Xinsheng Wang2Jinsha Yuan3Qiaolin Ding4Department of Electronic and Communication Engineering, North China Electric Power University, Baoding, ChinaDepartment of Electronic and Communication Engineering, North China Electric Power University, Baoding, ChinaDepartment of Electronic and Communication Engineering, North China Electric Power University, Baoding, ChinaDepartment of Electronic and Communication Engineering, North China Electric Power University, Baoding, ChinaDepartment of Electronic and Communication Engineering, North China Electric Power University, Baoding, ChinaRecent network research has demonstrated that the performance of convolutional neural networks can be improved by introducing a learning block that captures spatial correlations. In this paper, we propose a novel multiple feature reweight DenseNet (MFR-DenseNet) architecture. The MFR-DenseNet improves the representation power of the DenseNet by adaptively recalibrating the channel-wise feature responses and explicitly modeling the interdependencies between the features of different convolutional layers. First, in order to perform dynamic channel-wise feature recalibration, we construct the channel feature reweight DenseNet (CFR-DenseNet) by introducing the squeeze-and-excitation module (SEM) to DenseNet. Then, to model the interdependencies between the features of different convolutional layers, we propose the double squeeze-and-excitation module (DSEM) and construct the inter-layer feature reweight DenseNet (ILFR-DenseNet). In the last step, we designed the MFR-DenseNet by combining the CFR-DenseNet and the ILFR-DenseNet with an ensemble learning approach. Our experiments demonstrate the effectiveness of CFR-DenseNet, ILFR-DenseNet, and MFR-DenseNet. More importantly, the MFR-DenseNet drops the error rate on CIFAR-10 and CIFAR-100 by a large margin with significantly fewer parameters. Our 100-layer MFR-DenseNet (with 7.1M parameters) model achieves competitive results on CIFAR-10 and CIFAR-100 data sets, with test errors of 3.57% and 18.27% respectively, achieving a 4.5% relative improvement on CIFAR-10 and a 5.09% relative improvement on CIFAR-100 over the best result of DenseNet (with 27.2M parameters).https://ieeexplore.ieee.org/document/8611344/CFR-DenseNetDenseNetDSEMimage classificationILFR-DenseNetMFR-DenseNet
collection DOAJ
language English
format Article
sources DOAJ
author Ke Zhang
Yurong Guo
Xinsheng Wang
Jinsha Yuan
Qiaolin Ding
spellingShingle Ke Zhang
Yurong Guo
Xinsheng Wang
Jinsha Yuan
Qiaolin Ding
Multiple Feature Reweight DenseNet for Image Classification
IEEE Access
CFR-DenseNet
DenseNet
DSEM
image classification
ILFR-DenseNet
MFR-DenseNet
author_facet Ke Zhang
Yurong Guo
Xinsheng Wang
Jinsha Yuan
Qiaolin Ding
author_sort Ke Zhang
title Multiple Feature Reweight DenseNet for Image Classification
title_short Multiple Feature Reweight DenseNet for Image Classification
title_full Multiple Feature Reweight DenseNet for Image Classification
title_fullStr Multiple Feature Reweight DenseNet for Image Classification
title_full_unstemmed Multiple Feature Reweight DenseNet for Image Classification
title_sort multiple feature reweight densenet for image classification
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description Recent network research has demonstrated that the performance of convolutional neural networks can be improved by introducing a learning block that captures spatial correlations. In this paper, we propose a novel multiple feature reweight DenseNet (MFR-DenseNet) architecture. The MFR-DenseNet improves the representation power of the DenseNet by adaptively recalibrating the channel-wise feature responses and explicitly modeling the interdependencies between the features of different convolutional layers. First, in order to perform dynamic channel-wise feature recalibration, we construct the channel feature reweight DenseNet (CFR-DenseNet) by introducing the squeeze-and-excitation module (SEM) to DenseNet. Then, to model the interdependencies between the features of different convolutional layers, we propose the double squeeze-and-excitation module (DSEM) and construct the inter-layer feature reweight DenseNet (ILFR-DenseNet). In the last step, we designed the MFR-DenseNet by combining the CFR-DenseNet and the ILFR-DenseNet with an ensemble learning approach. Our experiments demonstrate the effectiveness of CFR-DenseNet, ILFR-DenseNet, and MFR-DenseNet. More importantly, the MFR-DenseNet drops the error rate on CIFAR-10 and CIFAR-100 by a large margin with significantly fewer parameters. Our 100-layer MFR-DenseNet (with 7.1M parameters) model achieves competitive results on CIFAR-10 and CIFAR-100 data sets, with test errors of 3.57% and 18.27% respectively, achieving a 4.5% relative improvement on CIFAR-10 and a 5.09% relative improvement on CIFAR-100 over the best result of DenseNet (with 27.2M parameters).
topic CFR-DenseNet
DenseNet
DSEM
image classification
ILFR-DenseNet
MFR-DenseNet
url https://ieeexplore.ieee.org/document/8611344/
work_keys_str_mv AT kezhang multiplefeaturereweightdensenetforimageclassification
AT yurongguo multiplefeaturereweightdensenetforimageclassification
AT xinshengwang multiplefeaturereweightdensenetforimageclassification
AT jinshayuan multiplefeaturereweightdensenetforimageclassification
AT qiaolinding multiplefeaturereweightdensenetforimageclassification
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