HYBRID FEATURE EXTRACTION FOR DETECTION OF PLANT DISEASES
With current technological advances, various ways have been developed to detect plant diseases. Diagnosing plant diseases manually requires a lot of money and time. Therefore, various approaches have been developed, one of which is to use machine learning methods. This method utilizes feature ext...
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id-itb.:511652020-09-27T17:58:11ZHYBRID FEATURE EXTRACTION FOR DETECTION OF PLANT DISEASES Naufal, Muhammad Indonesia Final Project Machine learning; Hybrid Feature Extraction; HOG; ORB; SURF; SVM; Decision Tree; accuracy; F1-Score; AUROC INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/51165 With current technological advances, various ways have been developed to detect plant diseases. Diagnosing plant diseases manually requires a lot of money and time. Therefore, various approaches have been developed, one of which is to use machine learning methods. This method utilizes feature extraction to detect diseases from plant images. There are several feature extraction that will be compared, namely HOG (Histogram of Oriented Gradients), ORB (Oriented FAST and Rotated BRIEF), and SURF (Speeded-Up Robust Features). In addition, an experiment will be conducted to combine and compare the feature extraction (hybrid feature extraction). The main objective of this experiment is to find the best hybrid function, based on the accuracy metric, F1-Score, and Area Under ROC. The dataset used comes from PlantVillage. The data type in this dataset is an image in JPEG format. This dataset consists of three different classes, namely potato early blight, potato late blight, and healthy. The classifiers to be used are SVM (Support Vector Machine) and Decision Tree. The test is evaluated with the metrics for accuracy, F1-Score, and Area Under ROC (AUROC). Based on the tests that have been done, it was found that the hybrid feature extraction method of ORB and SURF (ORB + SURF) and the SVM classifier produced predictions with an accuracy of 89.87% and an F1-Score of 89.77%. The hybrid feature extraction ORB + SURF and the SVM classifier also have the best Area Under ROC value, which is 0.93. text |
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With current technological advances, various ways have been developed to
detect plant diseases. Diagnosing plant diseases manually requires a lot of money
and time. Therefore, various approaches have been developed, one of which is to
use machine learning methods. This method utilizes feature extraction to detect
diseases from plant images. There are several feature extraction that will be
compared, namely HOG (Histogram of Oriented Gradients), ORB (Oriented
FAST and Rotated BRIEF), and SURF (Speeded-Up Robust Features). In
addition, an experiment will be conducted to combine and compare the feature
extraction (hybrid feature extraction). The main objective of this experiment is to
find the best hybrid function, based on the accuracy metric, F1-Score, and Area
Under ROC. The dataset used comes from PlantVillage. The data type in this
dataset is an image in JPEG format. This dataset consists of three different
classes, namely potato early blight, potato late blight, and healthy. The classifiers
to be used are SVM (Support Vector Machine) and Decision Tree. The test is
evaluated with the metrics for accuracy, F1-Score, and Area Under ROC
(AUROC). Based on the tests that have been done, it was found that the hybrid
feature extraction method of ORB and SURF (ORB + SURF) and the SVM
classifier produced predictions with an accuracy of 89.87% and an F1-Score of
89.77%. The hybrid feature extraction ORB + SURF and the SVM classifier also
have the best Area Under ROC value, which is 0.93. |
format |
Final Project |
author |
Naufal, Muhammad |
spellingShingle |
Naufal, Muhammad HYBRID FEATURE EXTRACTION FOR DETECTION OF PLANT DISEASES |
author_facet |
Naufal, Muhammad |
author_sort |
Naufal, Muhammad |
title |
HYBRID FEATURE EXTRACTION FOR DETECTION OF PLANT DISEASES |
title_short |
HYBRID FEATURE EXTRACTION FOR DETECTION OF PLANT DISEASES |
title_full |
HYBRID FEATURE EXTRACTION FOR DETECTION OF PLANT DISEASES |
title_fullStr |
HYBRID FEATURE EXTRACTION FOR DETECTION OF PLANT DISEASES |
title_full_unstemmed |
HYBRID FEATURE EXTRACTION FOR DETECTION OF PLANT DISEASES |
title_sort |
hybrid feature extraction for detection of plant diseases |
url |
https://digilib.itb.ac.id/gdl/view/51165 |
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