Diseases Classification for Tea Plant Using Concatenated Convolution Neural Network
Plant diseases can cause a significant decrease in tea crop production. Early disease detection can help to minimize the loss. For tea plants, experts can identify the diseases by visual inspection on the leaves. However, providing experts to deal with disease identification may be very costly. The...
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Bina Nusantara University
2019-10-01
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doaj-7fbc2207f9ea4acebce725dde9402af12020-11-25T04:09:55ZengBina Nusantara UniversityCommIT Journal1979-24842019-10-0113267─7767─7710.21512/commit.v13i2.58865092Diseases Classification for Tea Plant Using Concatenated Convolution Neural NetworkDikdik Krisnandi0Hilman F. Pardede1R. Sandra Yuwana2Vicky Zilvan3Ana Heryana4Fani Fauziah5Vitria Puspitasari Rahadi6Research Center for Informatics (P2I) - Indonesia Institute of Sciences (LIPI)Research Center for Informatics (P2I) - Indonesia Institute of Sciences (LIPI)Research Center for Informatics (P2I) - Indonesia Institute of Sciences (LIPI)Research Center for Informatics (P2I) - Indonesia Institute of Sciences (LIPI)Research Center for Informatics (P2I) - Indonesia Institute of Sciences (LIPI)Research Institute for Tea and Cinchona - Indonesian Agency for Agricultural Research and DevelopmentResearch Institute for Tea and Cinchona - Indonesian Agency for Agricultural Research and DevelopmentPlant diseases can cause a significant decrease in tea crop production. Early disease detection can help to minimize the loss. For tea plants, experts can identify the diseases by visual inspection on the leaves. However, providing experts to deal with disease identification may be very costly. The machine learning technology can be implemented to provide automatic plant disease detection. Currently, deep learning is state-of-the-art for object identification in computer vision. In this study, the researchers propose the Convolutional Neural Network (CNN) for tea disease detections. The researchers focus on the implementation of concatenated CNN, namely GoogleNet, Xception, and Inception-ResNet-v2, for this task. About 4727 images of tea leaves are collected, comprising of three types of diseases that commonly occur in Indonesia and a healthy class. The experimental results confirm the effectiveness of concatenated CNN for tea disease detections. The accuracy of 89.64% is achieved.https://journal.binus.ac.id/index.php/commit/article/view/5886concatenated convolution neural networkclassificationgooglenetxceptioninception- resnet-v2 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Dikdik Krisnandi Hilman F. Pardede R. Sandra Yuwana Vicky Zilvan Ana Heryana Fani Fauziah Vitria Puspitasari Rahadi |
spellingShingle |
Dikdik Krisnandi Hilman F. Pardede R. Sandra Yuwana Vicky Zilvan Ana Heryana Fani Fauziah Vitria Puspitasari Rahadi Diseases Classification for Tea Plant Using Concatenated Convolution Neural Network CommIT Journal concatenated convolution neural network classification googlenet xception inception- resnet-v2 |
author_facet |
Dikdik Krisnandi Hilman F. Pardede R. Sandra Yuwana Vicky Zilvan Ana Heryana Fani Fauziah Vitria Puspitasari Rahadi |
author_sort |
Dikdik Krisnandi |
title |
Diseases Classification for Tea Plant Using Concatenated Convolution Neural Network |
title_short |
Diseases Classification for Tea Plant Using Concatenated Convolution Neural Network |
title_full |
Diseases Classification for Tea Plant Using Concatenated Convolution Neural Network |
title_fullStr |
Diseases Classification for Tea Plant Using Concatenated Convolution Neural Network |
title_full_unstemmed |
Diseases Classification for Tea Plant Using Concatenated Convolution Neural Network |
title_sort |
diseases classification for tea plant using concatenated convolution neural network |
publisher |
Bina Nusantara University |
series |
CommIT Journal |
issn |
1979-2484 |
publishDate |
2019-10-01 |
description |
Plant diseases can cause a significant decrease in tea crop production. Early disease detection can help to minimize the loss. For tea plants, experts can identify the diseases by visual inspection on the leaves. However, providing experts to deal with disease identification may be very costly. The machine learning technology can be implemented to provide automatic plant disease detection. Currently, deep learning is state-of-the-art for object identification in computer vision. In this study, the researchers propose the Convolutional Neural Network (CNN) for tea disease detections. The researchers focus on the implementation of concatenated CNN, namely GoogleNet, Xception, and Inception-ResNet-v2, for this task. About 4727 images of tea leaves are collected, comprising of three types of diseases that commonly occur in Indonesia and a healthy class. The experimental results confirm the effectiveness of concatenated CNN for tea disease detections. The accuracy of 89.64% is achieved. |
topic |
concatenated convolution neural network classification googlenet xception inception- resnet-v2 |
url |
https://journal.binus.ac.id/index.php/commit/article/view/5886 |
work_keys_str_mv |
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1724421298531074048 |