Analysis of Tomato Leaf Disease Identification Techniques

G. Chopra, P. Whig
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引用次数: 2

Abstract

India loses thousands of metric tons of tomato crop every year due to pests and diseases. Tomato leaf disease is a major issue that causes significant losses to farmers and possess a threat to the agriculture sector. Understanding how does an algorithm learn to classify different types of tomato leaf disease will help scientist and engineers built accurate models for tomato leaf disease detection. Convolutional neural networks with backpropagation algorithms have achieved great success in diagnosing various plant diseases. However, human benchmarks in diagnosing plant disease have still not been displayed by any computer vision method. Under different conditions, the accuracy of the plant identification system is much lower than expected by algorithms. This study performs analysis on features learned by the backpropagation algorithm and studies the state-of-the-art results achieved by image-based classification methods. The analysis is shown through gradient-based visualization methods. In our analysis, the most descriptive approach to generated attention maps is Grad-CAM. Moreover, it is also shown that using a different learning algorithm than backpropagation is also possible to achieve comparable accuracy to that of deep learning models. Hence, state-of-the-art results might show that Convolutional Neural Network achieves human comparable accuracy in tomato leaf disease classification through supervised learning. But, both genetic algorithms and semi-supervised models hold the potential to built precise systems for tomato leaf detection.
番茄叶病鉴定技术分析
由于病虫害,印度每年损失数千吨番茄作物。番茄叶病是给农民造成重大损失并对农业部门构成威胁的一个主要问题。了解算法如何学习分类不同类型的番茄叶病将有助于科学家和工程师建立准确的番茄叶病检测模型。采用反向传播算法的卷积神经网络在诊断各种植物病害方面取得了巨大成功。然而,人类在诊断植物病害方面的基准还没有被任何计算机视觉方法所显示。在不同的条件下,植物识别系统的精度远低于算法的预期。本研究对反向传播算法学习到的特征进行了分析,并研究了基于图像的分类方法所获得的最新结果。通过基于梯度的可视化方法显示分析结果。在我们的分析中,最具描述性的生成注意力图的方法是Grad-CAM。此外,研究还表明,使用不同于反向传播的学习算法也有可能达到与深度学习模型相当的精度。因此,最先进的结果可能表明,卷积神经网络通过监督学习在番茄叶病分类中达到了与人类相当的精度。但是,遗传算法和半监督模型都有潜力建立精确的番茄叶片检测系统。
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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