Please use this identifier to cite or link to this item: https://elibrary.tucl.edu.np/handle/123456789/6923
Title: AN APPROACH TO IDENTIFY EARLY BLIGHT, LATE BLIGHT AND SEPTORIA DISEASE PRESENT IN LEAF OF TOMATO PLANT BY APPLYING CONVOLUTION NEURAL NETWORK AND RECURRENT NEURAL NETWORK
Authors: THAPA, HIMAL CHAND
Keywords: Recurrent neural network;Late blight;Convolution neural network;Early blight
Issue Date: Nov-2018
Publisher: Pulchowk Campus
Institute Name: Institute of Engineering
Level: Masters
Abstract: Tomato plant is one of the most cultivated plants in Nepal. Large losses due to several diseases threaten the cultivation of tomato plant. Most of the diseases of tomato plant detected at initial stages as they affects leaves first. In this thesis work, a deep learning based approach (combination of convolution neural network and recurrent neural network) is used to find disease named early blight, late blight and septoria present in leaf of tomato. The dataset contains 4000 images of tomato leaves infected by three diseases. Convolution neural network in combination of recurrent neural network are introduced and that leads to the direct use of image which avoids conventional image processing techniques. The obtained results are applicable; they can be used as a practical tool for farmers to protect against disease. Accuracy of these architectures has been calculated by feeding the networks with the test data. Lastly, results are compared and analyzed to find out best architecture. Small filter size of having filter size 3X3 best accuracy. Thus, this study gives a way to design efficient architecture to predict disease present in leaf of tomato plant.
Description: Tomato plant is one of the most cultivated plants in Nepal. Large losses due to several diseases threaten the cultivation of tomato plant.
URI: https://elibrary.tucl.edu.np/handle/123456789/6923
Appears in Collections:Electronics and Computer Engineering

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