Detection of Diseases in Blackgram (Vigna mungo L.) Using Machine Learning Models: A Case Study

Venketesa Palanichamy N, Kalpana M, Karthiba L
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Abstract

Black gram (Vigna mungo L.) is widely used in Indian cuisine and one of the most significant pulses cultivated in India. Identification of plant diseases at their earlier stages is essential to take necessary plant protection measures to reduce yield loss to the farmers. Anthracnose and Powdery Mildew are the major diseases in black gram which causes significant yield losses to the farmers. In this research study, advanced disease detection machine learning models such as Multinomial Logistic Regression, Random Forest Classifier were employed to assist the farmers in detection of plant leaf diseases in blackgram at their early stages of growth. For this present study, Image data sets were collected from Thanjavur block, Thanjavur district, Tamil Nadu. Results of the study showed that accuracy of Random Forest Classifier was higher with train accuracy 99.17% and test accuracy 97.00% when compared to the other machine learning methods for detection of plant leaf diseases in black gram, which aids in promotion of smart agriculture.
利用机器学习模型检测黑木耳(Vigna mungo L.)的病害:案例研究
黑糯米(Vigna mungo L.)被广泛用于印度菜肴,是印度种植的最重要的豆类之一。在早期阶段识别植物病害对于采取必要的植物保护措施以减少农民的产量损失至关重要。炭疽病和白粉病是黑糯米的主要病害,会给农民造成巨大的产量损失。在这项研究中,采用了先进的病害检测机器学习模型,如多叉逻辑回归、随机森林分类器,以帮助农民在黑禾苗生长初期检测植物叶片病害。本研究从泰米尔纳德邦 Thanjavur 地区的 Thanjavur 区收集了图像数据集。研究结果表明,与其他机器学习方法相比,随机森林分类器检测黑禾苗植物叶片病害的准确率更高,训练准确率为 99.17%,测试准确率为 97.00%,有助于推广智能农业。
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