Analysing Machine Learning based Approaches for Detecting Late Blight Disease in Potato Crop

Shikha Choudhary, Bhawna Saxena
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Abstract

Agriculture is a significant contributor in the world economy. With the drastic change in the geographical conditions, the occurrence of extreme events like floods, droughts, heat waves, etc. are increasing, thereby harming crop yield. Additionally, crop yield is adversely impacted by crop diseases causing significant losses towards food production. Protecting against losses incurred by crop diseases can aid in improving food security as well as strengthening the economy. Traditional methods of crop disease detection are time and labor-intensive, whereas the use of machine learning (ML) based methods fastens up the process,thereby helping implement corrective actions at an early stage. Multiple ML algorithms find application in the field of crop disease detection. Nevertheless, there exists a need to investigate the accuracies of different ML algorithm with regardto disease detection for a specific crop and disease combination. The performance of three ML algorithms, namely Random Forest, Linear Discriminant Analysis, and k-Nearest Neighbors with respect to late blight disease in potatoeswas investigated in this work.
基于机器学习的马铃薯晚疫病检测方法分析
农业是世界经济的重要贡献者。随着地理条件的急剧变化,洪水、干旱、热浪等极端事件的发生越来越多,从而损害了作物产量。此外,作物病害对作物产量产生不利影响,对粮食生产造成重大损失。防止作物病害造成的损失有助于改善粮食安全并加强经济。传统的作物病害检测方法耗时耗力,而使用基于机器学习(ML)的方法加快了这一过程,从而有助于在早期阶段实施纠正措施。多种机器学习算法在作物病害检测领域得到了应用。然而,有必要研究不同ML算法在特定作物和疾病组合的疾病检测方面的准确性。本文研究了随机森林、线性判别分析和k近邻三种机器学习算法在马铃薯晚疫病方面的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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