PLANT DISEASES CLASSIFICATION USING FEATURE REDUCTION, BPNN AND PSO

Moumita Chanda, M. Biswas
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引用次数: 2

Abstract

Agriculture is the culture of land and rearing of the plants to supply food to nourish and enhance life. In India, it is one of the main economic sources and different types of plants are farmed every year which hinders normal growth of the plants. That’s the reason from long ago researchers are searching for new methods of classification of plant diseases. Although there are different neural networks already used for plant disease classification, but only using these methods do not make the best tradeoff between time and accuracy. So to remove this constraint, we proposed method for plant disease classification based on BPNN and PSO. Now we have added some more data to our dataset and applied Principal component analysis to reduce the number of total features and on these features we have applied BPNN with PSO. We have used images of leaves affected by different bacterial and fungal diseases: Alternaria alternata, Anthracnose, Bacterial blight, Bacterial leaf scorch, Cercospora leaf spot, and Downy mildew in our experiment and our proposed method achieves approximately 96.42% accuracy.
基于特征约简、bp神经网络和粒子群算法的植物病害分类
农业是土地的文化和植物的饲养,以提供食物来滋养和提高生命。在印度,它是主要的经济来源之一,每年种植不同类型的植物,这阻碍了植物的正常生长。这就是为什么很久以前研究人员一直在寻找植物疾病分类的新方法。虽然已经有不同的神经网络用于植物病害分类,但仅使用这些方法并不能在时间和准确性之间做出最好的权衡。为了消除这一约束,我们提出了基于bp神经网络和粒子群算法的植物病害分类方法。现在我们在数据集中添加了更多的数据,并应用主成分分析来减少总特征的数量,在这些特征上我们应用了带有PSO的BPNN。我们在实验中使用了不同细菌和真菌病害的叶片图像:互交霉病、炭疽病、细菌性枯萎病、细菌性叶枯病、Cercospora叶斑病和霜霉病,我们提出的方法的准确率约为96.42%。
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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