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An Efficient Disease Detection Technique of Rice Leaf Using AlexNet 被引量:1

An Efficient Disease Detection Technique of Rice Leaf Using AlexNet
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摘要 As nearly half of the people in the world live on rice, so the rice leaf disease detection is very important for our agricultural sector. Many researchers worked on this problem and they achieved different results according to their applied techniques. In this paper, we applied AlexNet technique to detect the three prevalence rice leaf diseases termed as bacterial blight, brown spot as well as leaf smut and got a remarkable outcome rather than the previous works. AlexNet is a special type of classification technique of deep learning. This paper shows more than 99% accuracy due to adjusting an efficient technique and image augmentation. As nearly half of the people in the world live on rice, so the rice leaf disease detection is very important for our agricultural sector. Many researchers worked on this problem and they achieved different results according to their applied techniques. In this paper, we applied AlexNet technique to detect the three prevalence rice leaf diseases termed as bacterial blight, brown spot as well as leaf smut and got a remarkable outcome rather than the previous works. AlexNet is a special type of classification technique of deep learning. This paper shows more than 99% accuracy due to adjusting an efficient technique and image augmentation.
作者 Md. Mafiul Hasan Matin Amina Khatun Md. Golam Moazzam Mohammad Shorif Uddin Md. Mafiul Hasan Matin;Amina Khatun;Md. Golam Moazzam;Mohammad Shorif Uddin(Department of Computer Science and Engineering, Jahanginagar University, Dhaka, Bangladesh)
出处 《Journal of Computer and Communications》 2020年第12期49-57,共9页 电脑和通信(英文)
关键词 AlexNet Leaf Diseases Disease Prediction Rice Leaf Disease Dataset Disease Classification AlexNet Leaf Diseases Disease Prediction Rice Leaf Disease Dataset Disease Classification
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