利用叶片图像和机器学习检测植物病害

Almira Suljović, Stevan Cakic, Tomo Popović, Stevan Sandi
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引用次数: 1

摘要

植物病害的预防和早期发现是农业中的主要问题和挑战之一。农民花很多时间观察和检测患病的植物,通常是通过观察和分析植物的叶子。对植物病害处理不当,如发现晚或使用错误的农药,往往会对作物造成损害,从而导致食品质量恶化。这个问题可以通过人工智能和机器学习来解决,通过处理叶片的数字图像来检测植物病害。由于叶子是植物健康与否的最佳指示器,通过应用机器学习,我们可以创建预测模型,在较短的时间内检测到叶子的状况,并可能预防或减少损失。本文介绍了利用Detectron2软件库和Faster R-CNN神经网络进行叶片状态检测的实验。使用包含6407张图像的数据集来训练模型。原始数据集通过使用RoboFlow工具增强图像进行扩展。实验和实现是在谷歌Colab环境下完成的,这是为云计算和机器学习开发而设计的环境。
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Detection of Plant Diseases Using Leaf Images and Machine Learning
Prevention and early detection of plant diseases is one of the main issues and challenges in agriculture. Farmers spend a lot of time observing and detecting diseased plants, often by looking at and analyzing plant leaves. Inadequate handling of plant disease such as late detection or the use of wrong pesticides often causes damage to crops, which causes a deterioration in the quality of food. This problem could be addressed using artificial intelligence and machine learning to detect plant diseases by processing digital images of leaves. As the leaf is the best indicator of whether the plant is healthy or not, by applying machine learning we can create predication models to detect the condition of the leaf in a shorter period of time and possibly prevent or reduce the losses. This paper describes experimenting with Detectron2 software library and Faster R-CNN neural network in order to detect the condition of the leaf. A dataset containing 6407 images was used to train the model. The original dataset has been extended by augmenting images using the RoboFlow tool. The experimentation and implementation was done using Google Colab, environment designed for cloud computing and machine learning development.
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