首页> 外文会议>2021 IEEE 9th Region 10 Humanitarian Technology Conference: R10-HTC 2021, Bangalore, India, 30 September - 2 October 2021 >Severity Assessment of Potato Leaf Disease Induced by Alternaria solani Fungus Using Hybrid Decision Tree and Support Vector Machine Regression
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Severity Assessment of Potato Leaf Disease Induced by Alternaria solani Fungus Using Hybrid Decision Tree and Support Vector Machine Regression

机译:使用混合决策树和支持向量机回归评估茄链孢菌诱导的马铃薯叶病的严重程度

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Alternaria solani is a destructive fungus affecting potato crops that promotes early and late blight diseases. Early detection of its manifestation is an imperative step to prevent its spread. However, manual inspection of leaves is vulnerable to inefficient and inconsistent monitoring. As a solution, the application of computational intelligence and computer vision in identifying healthy and damaged leaves and detecting the percentage of damaged area (PDA) by Alternaria solani is presented in this paper. A total of 552 image sets (200 late blight, 200 early blight, and 152 healthy leaves) were utilized. Vegetation segmentation was employed via lazy snapping and CIELab color space for the healthy regions and PDA. Spectral (RGB, HSV, L*a*b*, YCbCr), Haralick textural (entropy, correlation, contrast, homogeneity, energy), and phenotypic (leaf canopy area) were extracted from the lettuce leaf canopies. With the use of the decision tree (DT), this 18-feature vector was narrowed down to the 10 most significant features (R, G, S, a*, Cb, Cr, contrast, energy, entropy, leaf canopy area). Support vector machine (SVM) has the best performance (which has 100% accuracy) in classifying the potato leaf health status, however, exhibited the longest time of processing. Optimized K-nearest neighbors (KNN) have a considerable accuracy (93.21%) and inference time (32.63 s). For PDA prediction, hybrid decision tree and support vector machine regression (HDT-RSVM) defeated other feature-based machine learning models. Ultimately, the formulated DT:SVM:RSVM model offers accurate disease identification and quantification on the potato leaf surface by using a consumer-grade camera that is translatable to low-income agricultural units.
机译:Alternaria solani 是一种影响马铃薯作物的破坏性真菌,可促进早衰病和晚疫病。及早发现其表现是防止其传播的必要步骤。然而,人工检查叶子容易受到低效和不一致监测的影响。作为一种解决方案,本文介绍了计算智能和计算机视觉在识别健康和受损叶片以及检测茄属受损面积 (PDA) 百分比方面的应用。共使用了 552 个图像集 (200 个晚疫病、200 个早疫病和 152 个健康叶)。通过惰性捕捉和 CIELab 色彩空间对健康区域和 PDA 进行植被分割。从生菜叶冠中提取光谱 (RGB、HSV、L*a*b*、YCbCr)、Haralick 纹理 (熵、相关性、对比度、均匀性、能量) 和表型 (叶冠面积)。通过使用决策树 (DT),这个 18 个特征向量被缩小到 10 个最重要的特征 (R、G、S、a*、Cb、Cr、对比度、能量、熵、叶冠面积)。支持向量机 (SVM) 在对马铃薯叶片健康状况进行分类方面具有最佳性能(具有 100% 的准确率),但表现出最长的处理时间。优化的 K 最近邻 (KNN) 具有相当高的准确率 (93.21%) 和推理时间 (32.63 s)。对于 PDA 预测,混合决策树和支持向量机回归 (HDT-RSVM) 击败了其他基于特征的机器学习模型。最终,制定的 DT:SVM:RSVM 模型通过使用可转换为低收入农业单位的消费级相机,在马铃薯叶片表面提供准确的病害识别和量化。

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