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 Detection And Classification Of Apple Diseases

 الحربي، أسماء بنت غازي


//uquui/handle/20.500.12248/116144
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Detection And Classification Of Apple Diseases

Alternative : كشف و تصنيف أمراض التفاح
Call Number : 23667
Publisher :جامعة أم القرى
Pub Place : مكة المكرمة
Issue Date : 2020 - 1441 H
Description : 105 ورقة .
Format : ماجستير
Language : انجليزي
Is format of : مكتبة الملك عبدالله بن عبدالعزيز الجامعية

In agricultural products, fruit diseases could lead to economic loss. In this thesis, we focus on an important fruit—apples. Disease classification could be done by a human expert, which is the old way, costs a lot of money, and is also time-consuming. Computer vision (CV) and deep learning techniques show promising results with good accuracy and less time. In this thesis, we have considered apple diseases like apple scab, apple blotch, and apple rot; these are fungal diseases. The dataset of the apples were collected from the local market; from that sample, we picked the apples which were already infected. Different models based on convolutional neural network are used for the classification. All the models showed good classification accuracy on more than 93% on testing images. The best accuracy was achieved by model-5; it gave 99.38%.

Title: Detection And Classification Of Apple Diseases
Other Titles: كشف و تصنيف أمراض التفاح
Authors: عريف، محمد
الحربي، أسماء بنت غازي
Subjects :: Plants
Plant Injuries, Diseases, Pests
Issue Date :: 2020
Publisher :: جامعة أم القرى
Abstract: In agricultural products, fruit diseases could lead to economic loss. In this thesis, we focus on an important fruit—apples. Disease classification could be done by a human expert, which is the old way, costs a lot of money, and is also time-consuming. Computer vision (CV) and deep learning techniques show promising results with good accuracy and less time. In this thesis, we have considered apple diseases like apple scab, apple blotch, and apple rot; these are fungal diseases. The dataset of the apples were collected from the local market; from that sample, we picked the apples which were already infected. Different models based on convolutional neural network are used for the classification. All the models showed good classification accuracy on more than 93% on testing images. The best accuracy was achieved by model-5; it gave 99.38%.
Description :: 105 ورقة .
URI: https://dorar.uqu.edu.sa/uquui/handle/20.500.12248/116144
Appears in Collections :الرسائل العلمية المحدثة

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