IMPLEMENTATION OF PLANT DISEASE CLASSIFICATION MODEL USING TRANSFER LEARNING AND DCGAN DATA AUGMENTATION IN ANDROID BASED APPLICATION (CASE STUDY ON TOMATO LEAVES)

Early detection of plant diseases is crucial for preventing further spread and damage. With advancements in computer vision technology, the deep learning approach has emerged as an effective method for disease detection in plants. However, to make these models accessible to a wider audience, it i...

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Main Author: Justine William, Christopher
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/73915
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:73915
spelling id-itb.:739152023-06-25T08:46:13ZIMPLEMENTATION OF PLANT DISEASE CLASSIFICATION MODEL USING TRANSFER LEARNING AND DCGAN DATA AUGMENTATION IN ANDROID BASED APPLICATION (CASE STUDY ON TOMATO LEAVES) Justine William, Christopher Indonesia Final Project plant disease classification, transfer learning, DCGAN augmentation, android application. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/73915 Early detection of plant diseases is crucial for preventing further spread and damage. With advancements in computer vision technology, the deep learning approach has emerged as an effective method for disease detection in plants. However, to make these models accessible to a wider audience, it is important to develop models that can run easily on simpler devices like mobile gadgets. The objective of this Final Project is to develop a plant disease classifier model using the transfer learning method and the DCGAN data augmentation technique in an android-based application. For this Final Project, a case study focusing on tomato leaf disease from the PlantVillage dataset is utilized. The transfer learning approach, which leverages pre-trained models, is chosen over developing models from scratch due to its ability to accelerate the training process by utilizing existing knowledge. Furthermore, the DCGAN data augmentation technique helps address data limitations by generating additional data, thereby enhancing dataset balance and variation. Based on the test and evaluation results, the model achieved the highest accuracy of 97.83% when trained and tested on the PlantVillage dataset. This model with the highest accuracy is then implemented in an android application for classifying diseases in tomato plant leaves. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Early detection of plant diseases is crucial for preventing further spread and damage. With advancements in computer vision technology, the deep learning approach has emerged as an effective method for disease detection in plants. However, to make these models accessible to a wider audience, it is important to develop models that can run easily on simpler devices like mobile gadgets. The objective of this Final Project is to develop a plant disease classifier model using the transfer learning method and the DCGAN data augmentation technique in an android-based application. For this Final Project, a case study focusing on tomato leaf disease from the PlantVillage dataset is utilized. The transfer learning approach, which leverages pre-trained models, is chosen over developing models from scratch due to its ability to accelerate the training process by utilizing existing knowledge. Furthermore, the DCGAN data augmentation technique helps address data limitations by generating additional data, thereby enhancing dataset balance and variation. Based on the test and evaluation results, the model achieved the highest accuracy of 97.83% when trained and tested on the PlantVillage dataset. This model with the highest accuracy is then implemented in an android application for classifying diseases in tomato plant leaves.
format Final Project
author Justine William, Christopher
spellingShingle Justine William, Christopher
IMPLEMENTATION OF PLANT DISEASE CLASSIFICATION MODEL USING TRANSFER LEARNING AND DCGAN DATA AUGMENTATION IN ANDROID BASED APPLICATION (CASE STUDY ON TOMATO LEAVES)
author_facet Justine William, Christopher
author_sort Justine William, Christopher
title IMPLEMENTATION OF PLANT DISEASE CLASSIFICATION MODEL USING TRANSFER LEARNING AND DCGAN DATA AUGMENTATION IN ANDROID BASED APPLICATION (CASE STUDY ON TOMATO LEAVES)
title_short IMPLEMENTATION OF PLANT DISEASE CLASSIFICATION MODEL USING TRANSFER LEARNING AND DCGAN DATA AUGMENTATION IN ANDROID BASED APPLICATION (CASE STUDY ON TOMATO LEAVES)
title_full IMPLEMENTATION OF PLANT DISEASE CLASSIFICATION MODEL USING TRANSFER LEARNING AND DCGAN DATA AUGMENTATION IN ANDROID BASED APPLICATION (CASE STUDY ON TOMATO LEAVES)
title_fullStr IMPLEMENTATION OF PLANT DISEASE CLASSIFICATION MODEL USING TRANSFER LEARNING AND DCGAN DATA AUGMENTATION IN ANDROID BASED APPLICATION (CASE STUDY ON TOMATO LEAVES)
title_full_unstemmed IMPLEMENTATION OF PLANT DISEASE CLASSIFICATION MODEL USING TRANSFER LEARNING AND DCGAN DATA AUGMENTATION IN ANDROID BASED APPLICATION (CASE STUDY ON TOMATO LEAVES)
title_sort implementation of plant disease classification model using transfer learning and dcgan data augmentation in android based application (case study on tomato leaves)
url https://digilib.itb.ac.id/gdl/view/73915
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