Thermal Image Processing for Automatic Detection of Fusarium Root and Crown Rot Disease In Tomato Plants

Ayşin Bi̇lgi̇li̇
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Abstract

Plant diseases can lead to significant yield losses and economic damages, but these losses can be mitigated through early disease diagnosis. In recent times, remote sensing techniques have been widely used for early disease detection even before visible symptoms appear. This study focused on the potential of early detection of Fusarium Root and Crown Rot in Tomato Plants, which causes substantial yield losses in tomato plants, under controlled conditions using thermal images. In this research, thermal images were obtained from both disease-inoculated and disease-free control plants throughout the plant growth period under controlled conditions. These images underwent preprocessing in a computer environment, and various feature parameters related to temperature changes in both groups (such as minimum, maximum, standard deviation, and skewness) were extracted. These extracted features were then used as inputs for different machine learning techniques, including K-Nearest Neighbors (KNN), Logistic Regression (LR), and Naive Bayes (NB), to classify healthy and diseased plants. Overall, the disease-inoculated plants exhibited higher average temperatures compared to the healthy control plants. The performance of the compared machine learning techniques in distinguishing between healthy and diseased plants was found to be in the order of KNN, NB, and LR, with success rates of 72%, 68%, and 60%, respectively. This study demonstrated the potential of using combined thermal images with different machine learning techniques for early diagnosis of Fusarium Root and Crown Rot in Tomato Plants. The results show promising prospects for utilizing thermal imaging in the early detection of plant diseases, leading to better management and reduction of yield losses and economic impacts.
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自动检测番茄根腐病和冠腐病的热图像处理技术
植物病害会导致严重的产量损失和经济损失,但这些损失可以通过早期病害诊断来减轻。近来,遥感技术已被广泛应用于早期病害检测,甚至在可见症状出现之前。本研究的重点是利用热图像在受控条件下早期检测番茄植株的镰刀菌根腐病和冠腐病的潜力,这种病害会给番茄植株造成巨大的产量损失。在这项研究中,在受控条件下,从接种了病菌的植株和无病菌对照植株的整个生长期获取了热图像。这些图像在计算机环境中进行了预处理,并提取了与两组温度变化相关的各种特征参数(如最小值、最大值、标准偏差和偏度)。这些提取的特征参数随后被用作不同机器学习技术的输入,包括 K-近邻(KNN)、逻辑回归(LR)和奈夫贝叶斯(NB),以对健康植物和患病植物进行分类。总体而言,与健康对照植物相比,病害接种植物的平均温度更高。比较发现,机器学习技术在区分健康植物和病害植物方面的表现依次为 KNN、NB 和 LR,成功率分别为 72%、68% 和 60%。这项研究证明了将热图像与不同的机器学习技术相结合用于番茄根腐病和冠腐病早期诊断的潜力。研究结果表明,热成像技术在植物病害的早期检测中具有广阔的应用前景,可促进更好的管理,减少产量损失和经济影响。
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