基于深度学习技术的木薯叶病诊断与分类

Syed Mursleen Riaz, Muhammad Ahsan, M. Akram
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引用次数: 1

摘要

植物病害诊断是农业领域中极具挑战性的研究课题。木薯是非洲第二大碳水化合物来源。它是非洲人民在非常恶劣的条件下的主要食物。根据联合国粮农组织的数据,撒哈拉以南非洲近80%的农民正在种植木薯根,但是由于各种病毒性疾病,木薯的产量从过去两年开始非常低。在数据科学的帮助下,可以诊断和分类这些类型的病毒性疾病。现有的病害检测方法要求农民寻求政府资助的农业专家的帮助,以直观地检查和诊断这些植物。此外,这个过程是劳动密集型的,耗时,成本高,影响生产和供应周期。另一个挑战是,针对农民的有效解决方案必须在重大限制条件下表现良好,因为非洲农民可能只能使用低带宽的移动质量相机。我们在本研究中使用的数据集来自Kaggle competition 2020。数据集包含21397张木薯植物的图像,它们属于五个不同的类别,即木薯细菌性枯萎病、木薯褐条病、木薯绿斑病、木薯花叶病和健康叶片。在这项工作中,我们使用增强技术来增加分类样本,平衡所有类别的数据分布不均匀,并使用深度学习模型efficiennetB3进行疾病的识别分类,在测试数据集上获得了83.03%的总体准确率,每个类别的个体准确率超过90%。我们开发了一个图形用户界面,以便更有效地使用该模型,目的是帮助该行业在疾病的初始阶段进行预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnosis Of Cassava Leaf Diseases and Classification Using Deep Learning Techniques
The plants disease diagnosis is very challenging research in the field of agriculture. Cassava is a second most provider of carbohydrates in Africa. It is a key food for people of Africa in very harsh conditions. According to United Nations (FAO) almost eighty percent farmers of sub Saharan Africa are growing cassava roots, but due to a variety of viral diseases the production of cassava is very low from last two years. With the help of data science, it is possible to diagnose and classify these types of viral diseases. Existing methods of disease detection require farmers to solicit the help of government-funded agricultural experts to visually inspect and diagnose the plants. Moreover, this process is labor-intensive, time taken, costly and impacting the production and supply cycle. As an added challenge, effective solutions for farmers must perform well under significant constraints since African farmers may only have access to mobile-quality cameras with low-bandwidth. The dataset which we use in this research is taken from Kaggle competition 2020. Dataset contains 21397 images of cassava plants which belongs to five different classes i.e., Cassava Bacterial Blight, Cassava Brown Streak Disease, Cassava Green Mottle, Cassava Mosaic Disease and Healthy leaves. In this work we have used augmentation technique to increase the samples for classification and balancing the uneven distribution of data for all classes and used deep learning model efficiennetB3 for identification classification of diseases and got 83.03% overall accuracy on test dataset with more than 90% individual accuracy of each class. We have developed a graphical user interface for using the model in more efficient way with the aim to help the industry for prediction of diseases during its initial stages.
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