Machine Learning in Agriculture Application: Algorithms and Techniques

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Abstract

Machine learning techniques with high performance computing technologies can create various new opportunities in the agriculture domain. This paper does comprehensivereview of various papers which are concentrating on machine learning (ML) and deep learning application in agriculture. This paper is categorized into three sections a) Yield prediction using machine learning technique b) Price prediction c) Leaf disease detection using neural networks. In this paper we study the comparison of neural network models with existing models. The findings of this survey paper indicate Deep learning models give high accuracy and outperform traditional image processing technique and ML techniques outperforms various traditional techniques in prediction.

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Meeradevi*, N, S., & Mundada, M. R. (2020). Machine Learning in Agriculture Application: Algorithms and Techniques. International Journal of Innovative Technology and Exploring Engineering, 9(6), 1140–1146. https://doi.org/10.35940/ijitee.f3713.049620

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