Plant Disease Detection using Deep Convolution Network
DOI:
https://doi.org/10.5281/zenodo.11192732Abstract
The global rise in population has led to a shortage of raw materials and food supplies. The agricultural sector has become the primary and most vital source to overcome this particular constraint. However, the industry itself is facing the challenge of pests and various crop diseases. Battling this has been the significant focus of the sector for decades. Still, due to the technology gap that existed earlier, there existed a constraint on identifying the diseased crops on a massive scale. Nevertheless, today, with the improvement of technologies such as drones, IoT devices, and higher processing speeds combined with data analysis and machine learning, the problem of identification can be resolved quickly. This paper aims to provide a brief description of existing solutions that have been published and focuses on the more efficient machine learning model based on conventional neural networks (CNN) that we have developed. This machine
learning model can be deployed on IoT devices, mobile phones, and drones and cameras that farmers can utilize to identify the diseased crops on a massive scale and take the necessary precautions not to let the disease spread and affect the supply produced.
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Copyright (c) 2024 Dr. Raviprakash ML, Chandana N, Akshatha MS, Anusha k, Anjum Afsana T.A
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.