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    •   BracU IR
    • School of Data and Sciences (SDS)
    • Department of Computer Science and Engineering (CSE)
    • Thesis & Report, BSc (Computer Science and Engineering)
    • View Item
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    Cassava leaf disease classification using deep learning and convolutional neural network ensemble

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    20301476, 16301078, 16301053, 16201032, 17301148_CSE.pdf (2.182Mb)
    Date
    2022-01
    Publisher
    Brac University
    Author
    Shahriar, Hasan
    Shuvo, Protick Sarker
    Fahim, Md. Saidul Haque
    Sordar, Md Sobuj
    Haque, Md Esadul
    Metadata
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    URI
    http://hdl.handle.net/10361/16633
    Abstract
    Cassava is a high-protein and nutrient-dense plant, notably inside the leaves. Cassava is often used as a rice alternative. Pests, viruses, bacteria, and fungus may cause a variety of illnesses on cassava leaves. This study consists of four main diseases that commonly affect cassava leaves: Cassava Bacterial Blight (CBB), Cassava Brown Streak Disease (CBSD), Cassava Green Mite (CGM), and Cassava Mosaic Disease (CMD) and we took these four diseases as labels in our research. Furthermore, we took 22000 infected images from Kaggle and we have transformed our dataset into four different image transformation to ensure the accuracy of our model. These four different augmentations are Random Crop Augmentation, Random Flip Augmentation, Random Rotation Augmentation and Random Contrast Augmentation. Finally, we used six algorithms to detect the diseases of cassava leaves. These six algorithms are Xception, EfficientNetB0 Resnet50, VGG16 Densenet121, InceptionV3. While we operated these algorithms on our trained dataset, it gave diverse precision. For the Xception, it gave 91.3% accuracy, EfficientNetB0:91.1%, ResNet50: 85.0 %, VGG16: 68.0 %, DenseNet121: 87.0 % and for the InceptionV3, it gave 86.4 % precision respectively. Here, not every one of the algorithms performed well. Xception and EfficientNetB0 have the most noteworthy accuracy among these.
    Keywords
    Deep learning; Cassava leaf; Prediction; Decision tree; Xception; Neural networks; EfficientNet B0; Resnet 50; VGG16; Inception V3; DenseNet 121
     
    LC Subject Headings
    Machine learning; Cognitive learning theory (Deep learning); Neural networks (Computer science)
     
    Description
    This thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science and Engineering, 2022.
     
    Cataloged from PDF version of thesis.
     
    Includes bibliographical references (pages 32-35).
    Department
    Department of Computer Science and Engineering, Brac University
    Collections
    • Thesis & Report, BSc (Computer Science and Engineering)

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