Automated deep feature fusion based approach for the classification of multiclass rice diseases | Iran Journal of Computer Science
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Automated deep feature fusion based approach for the classification of multiclass rice diseases

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Abstract

Rice is a widely used grain product all over the world, and obtaining high-quality rice products is crucial. However, the quantity and quality of rice products can be reduced due to rice diseases. Detecting these diseases is challenging, as rice is cultivated in large, wet areas. Therefore, computer-aided systems for identifying rice diseases are of great significance. In this study, we propose a novel approach for detecting diseases in rice plants. Our approach employs three different convolutional neural networks (CNNs), namely Efficientb0, Shufflenet, and Resnet101. We extract feature maps from these networks, combine them, and then classify them using support vector machine (SVM). Additionally, seven different CNN architectures are employed to compare results. Our proposed approach achieves the highest accuracy value of 98%, demonstrating its potential for accurately classifying diseases in rice plants.

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Availability of data and materials

Thanks to the dataset owners for sharing the dataset used in this study [15].

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Correspondence to Muhammed Yildirim.

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Yucel, N., Yildirim, M. Automated deep feature fusion based approach for the classification of multiclass rice diseases. Iran J Comput Sci 7, 131–138 (2024). https://doi.org/10.1007/s42044-023-00152-x

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  • DOI: https://doi.org/10.1007/s42044-023-00152-x

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