Basil plant leaf disease detection using amalgam based deep learning models

Deepak Mane, Mahendra Deore, Rashmi Ashtagi, Sandip Shinde, Yogesh Gurav
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Abstract

Medicinal plants have been found and utilized in traditional medical practices from ancient times. Many medicinal plants play a vital role in curating many life threatening diseases. Very few of the medicinal herbs are commercially cultivated. Many plant diseases are there which destroys these medicinal plants. Early detection of plant diseases can prevent the huge loss of these medicinal plants. Here, we presented a hybrid model that makes use of SVM along with the traditional convolutional neural network (CNN) for predicting Basil plants leaves diseases. We transformed the conventional CNN model by adding a classification layer Support Vector Machine (SVM) and K-Nearest Neighbor (KNN) after feature extraction and this approach tends to perform better than traditional CNN as we make the dataset balanced by data augmentation and SVN and KNN tend to perform better in case of balanced samples. CNN is used for training, SVM/KNN is used for classification. The advantages of CNN and SVM are used in proposed the CNN and SVM and KNN model. It is assumed that such a combined model would incorporate the benefits of CNN and SVM. Here, we identified the four types of diseases that affect basil plant leaves as Leaf spot, Downy mildew, Fusarium wilt, Fungal, and Healthy. Since there isn’t a standard dataset for basil leaves, we created our own 803 picture data set and used various machine learning techniques to train and evaluate the model. However, over other existing algorithms, our hybrid model i.e., CNN+SVM has produced more accurate results. For five classes of basil plant leaves, the proposed model produced 95.02% accuracy of for leaf diseases.
利用基于汞齐的深度学习模型检测罗勒植物叶片病害
自古以来,人们就在传统医疗实践中发现并利用药用植物。许多药用植物在治疗许多威胁生命的疾病方面发挥着重要作用。商业化种植的药草很少。许多植物病害破坏了这些药用植物。及早发现植物病害可以避免这些药用植物的巨大损失。在这里,我们提出了一个混合模型,利用 SVM 和传统的卷积神经网络(CNN)来预测 Basil 植物叶片的病害。在特征提取后,我们通过添加分类层支持向量机(SVM)和 K-最近邻(KNN)对传统 CNN 模型进行了改造,这种方法往往比传统 CNN 性能更好,因为我们通过数据增强使数据集平衡,而 SVN 和 KNN 在样本平衡的情况下往往表现更好。CNN 用于训练,SVM/KNN 用于分类。CNN 和 SVM 的优势被用于提出 CNN、SVM 和 KNN 模型。我们假定这种组合模型将结合 CNN 和 SVM 的优点。在这里,我们确定了影响罗勒植物叶片的四种病害,分别是叶斑病、霜霉病、镰刀菌枯萎病、真菌病和健康病。由于没有罗勒叶片的标准数据集,我们创建了自己的 803 张图片数据集,并使用各种机器学习技术来训练和评估模型。然而,与其他现有算法相比,我们的混合模型(即 CNN+SVM)产生了更准确的结果。对于罗勒植物叶片的五个类别,所提出的模型对叶片疾病的准确率达到 95.02%。
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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