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IMAGE BASED SORGHUM LEAF DISEASE CLASSIFICATION USING DEEP LEARNING APPROACH

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dc.contributor.author DAGIM , FIRIDE YIMENU
dc.date.accessioned 2021-09-23T12:17:39Z
dc.date.available 2021-09-23T12:17:39Z
dc.date.issued 2021-04-03
dc.identifier.uri http://etd.dbu.edu.et:80/handle/123456789/738
dc.description.abstract Sorghum is a grain crop that is used for human and animal consumption. In areas that are too hot, sorghum is grown and a minimum average temperature of 25 ° C is required to ensure maximum grain production. There are many factors in sorghum production and productivity enhancement, among them crop diseases are the major ones. The early detection of sorghum diseases is one of the main reasons that can reduce the yield production loss, and this requires a huge amount of effort, money, and time. To address these problems, the researcher proposed a deep learning approach for the classification of sorghum diseases based on their leaves. To do so, the design science research methodology was followed. To conduct this study, a total of 4000 images were collected from shewarobit werda kobo villages, North Shewa zone, and prepared. After collecting the necessary images, the researcher applies image preprocessing techniques such as image resizing, normalizing images, and noise removing were performed. And also, data augmentation techniques were performed. In feature extraction, the researcher applies Gabor filter on the raw image for texture feature extraction. It is used for detecting and selecting important features that account for the symptom of the disease. This research work focuses on classifying three types of sorghum leaf diseases: Anthracnose, leaf blight, and rust. Based on this, two Convolutional Neural Network frameworks were proposed namely: train the deep neural network model from the scratch and transfer learning a pre-trained network model. Finally, the developed classifier model has been through accuracy, precision, recall, and F measure. Experimental result shows that the accuracy obtained from transfer learning model VGG19 and VGG16 achieves an accuracy of 91.5%, and 87.75% respectively. Conversely, the proposed model achieves an accuracy of 94.91%, while after applying Gabor filter the proposed model achieves an accuracy of 96.75%. As a result, training from the scratch model with Gabor was selected for developing an effective and robust model for classifying sorghum leaf disease. en_US
dc.language.iso en en_US
dc.subject Sorghum crop, Deep-learning, Convolutional Neural Network, Transfer learning, training from the scratch, Gabor filter en_US
dc.title IMAGE BASED SORGHUM LEAF DISEASE CLASSIFICATION USING DEEP LEARNING APPROACH en_US
dc.type Thesis en_US


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