Citrus Pests and Diseases Recognition Model Using Weakly Dense Connected Convolution Network

Pests and diseases can cause severe damage to citrus fruits. Farmers used to rely on experienced experts to recognize them, which is a time consuming and costly process. With the popularity of image sensors and the development of computer vision technology, using convolutional neural network (CNN) m...

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Main Authors: Shuli Xing, Marely Lee, Keun-kwang Lee
Format: Article
Language:English
Published: MDPI AG 2019-07-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/19/14/3195
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spelling doaj-2f43fc12f47e4cc185b460f2dca50cba2020-11-24T21:30:45ZengMDPI AGSensors1424-82202019-07-011914319510.3390/s19143195s19143195Citrus Pests and Diseases Recognition Model Using Weakly Dense Connected Convolution NetworkShuli Xing0Marely Lee1Keun-kwang Lee2Center for Advanced Image and Information Technology, School of Electronics & Information Engineering, Chon Buk National University, Jeonju, Chon Buk 54896, KoreaCenter for Advanced Image and Information Technology, School of Electronics & Information Engineering, Chon Buk National University, Jeonju, Chon Buk 54896, KoreaDepartment of Beauty Arts, Koguryeo College, Naju 520-930, KoreaPests and diseases can cause severe damage to citrus fruits. Farmers used to rely on experienced experts to recognize them, which is a time consuming and costly process. With the popularity of image sensors and the development of computer vision technology, using convolutional neural network (CNN) models to identify pests and diseases has become a recent trend in the field of agriculture. However, many researchers refer to pre-trained models of ImageNet to execute different recognition tasks without considering their own dataset scale, resulting in a waste of computational resources. In this paper, a simple but effective CNN model was developed based on our image dataset. The proposed network was designed from the aspect of parameter efficiency. To achieve this goal, the complexity of cross-channel operation was increased and the frequency of feature reuse was adapted to network depth. Experiment results showed that Weakly DenseNet-16 got the highest classification accuracy with fewer parameters. Because this network is lightweight, it can be used in mobile devices.https://www.mdpi.com/1424-8220/19/14/3195citruspests and diseases identificationconvolutional neural networkparameter efficiency
collection DOAJ
language English
format Article
sources DOAJ
author Shuli Xing
Marely Lee
Keun-kwang Lee
spellingShingle Shuli Xing
Marely Lee
Keun-kwang Lee
Citrus Pests and Diseases Recognition Model Using Weakly Dense Connected Convolution Network
Sensors
citrus
pests and diseases identification
convolutional neural network
parameter efficiency
author_facet Shuli Xing
Marely Lee
Keun-kwang Lee
author_sort Shuli Xing
title Citrus Pests and Diseases Recognition Model Using Weakly Dense Connected Convolution Network
title_short Citrus Pests and Diseases Recognition Model Using Weakly Dense Connected Convolution Network
title_full Citrus Pests and Diseases Recognition Model Using Weakly Dense Connected Convolution Network
title_fullStr Citrus Pests and Diseases Recognition Model Using Weakly Dense Connected Convolution Network
title_full_unstemmed Citrus Pests and Diseases Recognition Model Using Weakly Dense Connected Convolution Network
title_sort citrus pests and diseases recognition model using weakly dense connected convolution network
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2019-07-01
description Pests and diseases can cause severe damage to citrus fruits. Farmers used to rely on experienced experts to recognize them, which is a time consuming and costly process. With the popularity of image sensors and the development of computer vision technology, using convolutional neural network (CNN) models to identify pests and diseases has become a recent trend in the field of agriculture. However, many researchers refer to pre-trained models of ImageNet to execute different recognition tasks without considering their own dataset scale, resulting in a waste of computational resources. In this paper, a simple but effective CNN model was developed based on our image dataset. The proposed network was designed from the aspect of parameter efficiency. To achieve this goal, the complexity of cross-channel operation was increased and the frequency of feature reuse was adapted to network depth. Experiment results showed that Weakly DenseNet-16 got the highest classification accuracy with fewer parameters. Because this network is lightweight, it can be used in mobile devices.
topic citrus
pests and diseases identification
convolutional neural network
parameter efficiency
url https://www.mdpi.com/1424-8220/19/14/3195
work_keys_str_mv AT shulixing citruspestsanddiseasesrecognitionmodelusingweaklydenseconnectedconvolutionnetwork
AT marelylee citruspestsanddiseasesrecognitionmodelusingweaklydenseconnectedconvolutionnetwork
AT keunkwanglee citruspestsanddiseasesrecognitionmodelusingweaklydenseconnectedconvolutionnetwork
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