Advanced Machine Learning Framework for Efficient Plant Disease Prediction
- URL: http://arxiv.org/abs/2409.05174v1
- Date: Sun, 8 Sep 2024 18:14:34 GMT
- Title: Advanced Machine Learning Framework for Efficient Plant Disease Prediction
- Authors: Aswath Muthuselvam, S. Sowdeshwar, M. Saravanan, Satheesh K. Perepu,
- Abstract summary: In this paper, we explore the new combination of advanced Machine Learning methods for creating a smart agriculture platform.
The proposed system utilizes deep learning techniques for identifying the disease of the plant from the affected image.
Natural Language Processing techniques are employed for ranking the solutions posted by the user community.
- Score: 0.8249694498830561
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recently, Machine Learning (ML) methods are built-in as an important component in many smart agriculture platforms. In this paper, we explore the new combination of advanced ML methods for creating a smart agriculture platform where farmers could reach out for assistance from the public, or a closed circle of experts. Specifically, we focus on an easy way to assist the farmers in understanding plant diseases where the farmers can get help to solve the issues from the members of the community. The proposed system utilizes deep learning techniques for identifying the disease of the plant from the affected image, which acts as an initial identifier. Further, Natural Language Processing techniques are employed for ranking the solutions posted by the user community. In this paper, a message channel is built on top of Twitter, a popular social media platform to establish proper communication among farmers. Since the effect of the solutions can differ based on various other parameters, we extend the use of the concept drift approach and come up with a good solution and propose it to the farmer. We tested the proposed framework on the benchmark dataset, and it produces accurate and reliable results.
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