Detection and Classification of Early Decay on Blueberry Based on Improved Deep Residual 3D Convolutional Neural Network in Hyperspectral Images

Recently, the automatic detection of decayed blueberries is still a challenge in food industry. Early decay of blueberries happens on surface peel, which may adopt the feasibility of hyperspectral imaging mode to detect decayed region of blueberries. An improved deep residual 3D convolutional neural...

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Main Authors: Shicheng Qiao, Qinghu Wang, Jun Zhang, Zhili Pei
Format: Article
Language:English
Published: Hindawi Limited 2020-01-01
Series:Scientific Programming
Online Access:http://dx.doi.org/10.1155/2020/8895875
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spelling doaj-909346b87957422e8016dd2a1741eb182021-07-02T12:43:43ZengHindawi LimitedScientific Programming1058-92441875-919X2020-01-01202010.1155/2020/88958758895875Detection and Classification of Early Decay on Blueberry Based on Improved Deep Residual 3D Convolutional Neural Network in Hyperspectral ImagesShicheng Qiao0Qinghu Wang1Jun Zhang2Zhili Pei3Inner Mongolia University for Nationalities, College of Computer Science and Technology, Tongliao 028043, ChinaInner Mongolia University for Nationalities, College of Computer Science and Technology, Tongliao 028043, ChinaInner Mongolia University for Nationalities, College of Computer Science and Technology, Tongliao 028043, ChinaInner Mongolia University for Nationalities, College of Computer Science and Technology, Tongliao 028043, ChinaRecently, the automatic detection of decayed blueberries is still a challenge in food industry. Early decay of blueberries happens on surface peel, which may adopt the feasibility of hyperspectral imaging mode to detect decayed region of blueberries. An improved deep residual 3D convolutional neural network (3D-CNN) framework is proposed for hyperspectral images classification so as to realize fast training, classification, and parameter optimization. Rich spectral and spatial features can be rapidly extracted from samples of complete hyperspectral images using our proposed network. This combines the tree structured Parzen estimator (TPE) adaptively and selects the super parameters to optimize the network performance. In addition, aiming at the problem of few samples, this paper proposes a novel strategy to enhance the hyperspectral image sample data, which can improve the training effect. Experimental results on the standard hyperspectral blueberry datasets show that the proposed framework improves the classification accuracy compared with AlexNet and GoogleNet. In addition, our proposed network reduces the number of parameters by half and the training time by about 10%.http://dx.doi.org/10.1155/2020/8895875
collection DOAJ
language English
format Article
sources DOAJ
author Shicheng Qiao
Qinghu Wang
Jun Zhang
Zhili Pei
spellingShingle Shicheng Qiao
Qinghu Wang
Jun Zhang
Zhili Pei
Detection and Classification of Early Decay on Blueberry Based on Improved Deep Residual 3D Convolutional Neural Network in Hyperspectral Images
Scientific Programming
author_facet Shicheng Qiao
Qinghu Wang
Jun Zhang
Zhili Pei
author_sort Shicheng Qiao
title Detection and Classification of Early Decay on Blueberry Based on Improved Deep Residual 3D Convolutional Neural Network in Hyperspectral Images
title_short Detection and Classification of Early Decay on Blueberry Based on Improved Deep Residual 3D Convolutional Neural Network in Hyperspectral Images
title_full Detection and Classification of Early Decay on Blueberry Based on Improved Deep Residual 3D Convolutional Neural Network in Hyperspectral Images
title_fullStr Detection and Classification of Early Decay on Blueberry Based on Improved Deep Residual 3D Convolutional Neural Network in Hyperspectral Images
title_full_unstemmed Detection and Classification of Early Decay on Blueberry Based on Improved Deep Residual 3D Convolutional Neural Network in Hyperspectral Images
title_sort detection and classification of early decay on blueberry based on improved deep residual 3d convolutional neural network in hyperspectral images
publisher Hindawi Limited
series Scientific Programming
issn 1058-9244
1875-919X
publishDate 2020-01-01
description Recently, the automatic detection of decayed blueberries is still a challenge in food industry. Early decay of blueberries happens on surface peel, which may adopt the feasibility of hyperspectral imaging mode to detect decayed region of blueberries. An improved deep residual 3D convolutional neural network (3D-CNN) framework is proposed for hyperspectral images classification so as to realize fast training, classification, and parameter optimization. Rich spectral and spatial features can be rapidly extracted from samples of complete hyperspectral images using our proposed network. This combines the tree structured Parzen estimator (TPE) adaptively and selects the super parameters to optimize the network performance. In addition, aiming at the problem of few samples, this paper proposes a novel strategy to enhance the hyperspectral image sample data, which can improve the training effect. Experimental results on the standard hyperspectral blueberry datasets show that the proposed framework improves the classification accuracy compared with AlexNet and GoogleNet. In addition, our proposed network reduces the number of parameters by half and the training time by about 10%.
url http://dx.doi.org/10.1155/2020/8895875
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AT qinghuwang detectionandclassificationofearlydecayonblueberrybasedonimproveddeepresidual3dconvolutionalneuralnetworkinhyperspectralimages
AT junzhang detectionandclassificationofearlydecayonblueberrybasedonimproveddeepresidual3dconvolutionalneuralnetworkinhyperspectralimages
AT zhilipei detectionandclassificationofearlydecayonblueberrybasedonimproveddeepresidual3dconvolutionalneuralnetworkinhyperspectralimages
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