Potato Leaf Disease Classification using Transfer Learning based Modified Xception Model
Rajasekaran Thangaraj,Pandiyan P,Vishnu Kumar Kaliappan,S. Anandamurugan,Indupriya P +4 more
- 30 Dec 2020
- pp 438-442
TL;DR: This work presents the convolution neural network-based model to predict and analysis the potato plant disease using plant village datasets with deep learning algorithms and transfer learning with feature extraction model is employed to detect the Potato plant disease.
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Abstract: Plant diseases are the essential thing which decreases the quantity as well quality in agricultural field. As a result, the identification and analysis of the diseases are important. The proper classification with least data in deep learning is the most challenging task. In addition, it is tough to label the data manually depending upon the selection criterion. Transfer learning algorithm helps in resolving this kind of problem by means of learning the previous task and then applying capabilities and knowledge to the new task. This work presents the convolution neural network-based model to predict and analysis the potato plant disease using plant village datasets with deep learning algorithms. Transfer learning with feature extraction model is employed to detect the potato plant disease. The results show that improved performance with an accuracy of 98.16%, precision of 98.18%, the recall value of 98.17% and the F1 score value of 98.169 %.
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