PLANTS LEAF DISEASES DETECTION USING DEEP LEARNING
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PLANTS LEAF DISEASES DETECTION USING DEEP LEARNING
Bikkili Alekya Himabindu1,Pathan Aaisha2, Shaik Athiya3, Shaik Yasmin4
1Assistant Professor, Electronics and Communication Engineering & Santhiram engineering College
2Student, Electronics and Communication Engineering &Santhiram engineering College
3Student, Electronics and Communication Engineering &Santhiram engineering College
4Student, Electronics and Communication Engineering &Santhiram engineering College
Abstract: Agriculture field has a high impact on our life. Agriculture is the most important sector of our Economy. Proper management leads to a profit in agricultural products. Farmers do not expertise in leaf disease, so they produce less production. Plant leaf diseases detection is the important because profit and loss are depending on production. CNN is the solution for leaf disease detection and classification. Main aim of this research is to detect the apple, grape, corn, potato and tomato plants leaf diseases. Plant leaf diseases are monitoring of large fields of crops disease detection, and thus automatically detected some feature of diseases as per that provide medical treatment. Proposed Deep CNN model has been compared with popular transfer learning approach such as VGG16. Plant leaf disease detection has wide range of applications available in various fields such as Biological Research and in Agriculture Institute. Plant leaf disease detection is the one of the required research topics as it may prove benefits in monitoring large fields of crops, and thus automatically detect the symptoms of diseases as soon as they appear on plant leaves.
Key Words: Diseases, CNN, Deep Learning
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