Identifying selected diseases of leaves using deep learning and transfer learning models

A. Mimi, Sayeda Fatema Tuj Zohura, Muhammad Ibrahim, Riddho Ridwanul Haque, Omar Farrok, T. Jabid, M. Ali
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引用次数: 3

Abstract

Leaf diseases may harm plants in different ways, often causing reduced productivity and, at times, lethal consequences. Detecting such diseases in a timely manner can help plant owners take effective remedial measures. Deficiencies of vital elements such as nitrogen, microbial infections and other similar disorders can often have visible effects, such as the yellowing of leaves in Catharanthus roseus (bright eyes) and scorched leaves in Fragaria × ananassa (strawberry) plants. In this work, we explore approaches to use computer vision techniques to help plant owners identify such leaf disorders in their plants automatically and conveniently. This research designs three machine learning systems, namely a vanilla CNN model, a CNN-SVM hybrid model, and a MobileNetV2-based transfer learning model that detect yellowed and scorched leaves in Catharanthus roseus and strawberry plants, respectively, using images captured by mobile phones. In our experiments, the models yield a very promising accuracy on a dataset having around 4000 images. Of the three models, the transfer learning-based one demonstrates the highest accuracy (97.35% on test set) in our experiments. Furthermore, an Android application is developed that uses this model to allow end-users to conveniently monitor the condition of their plants in real time.
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利用深度学习和迁移学习模型识别选定的叶片病害
叶片病害可能以不同的方式危害植物,往往导致生产力下降,有时甚至造成致命后果。及时发现这些病害可以帮助工厂主采取有效的补救措施。缺乏重要元素,如氮、微生物感染和其他类似的疾病,往往会产生明显的影响,例如Catharanthus roseus(明亮的眼睛)的叶子变黄和Fragaria × ananassa(草莓)植物的叶子烧焦。在这项工作中,我们探索了使用计算机视觉技术帮助植物所有者自动方便地识别植物中此类叶片疾病的方法。本研究设计了香草CNN模型、CNN- svm混合模型和基于mobilenetv2的迁移学习模型三种机器学习系统,分别利用手机拍摄的图像检测花楸(Catharanthus roseus)和草莓(strawberry)植物的黄叶和焦叶。在我们的实验中,这些模型在大约4000张图像的数据集上产生了非常有希望的精度。在我们的实验中,基于迁移学习的模型在测试集上显示出最高的准确率(97.35%)。此外,开发了一个Android应用程序,使用该模型允许最终用户方便地实时监控其工厂的状况。
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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来源期刊
Machine Graphics and Vision
Machine Graphics and Vision Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
0.40
自引率
0.00%
发文量
1
期刊介绍: Machine GRAPHICS & VISION (MGV) is a refereed international journal, published quarterly, providing a scientific exchange forum and an authoritative source of information in the field of, in general, pictorial information exchange between computers and their environment, including applications of visual and graphical computer systems. The journal concentrates on theoretical and computational models underlying computer generated, analysed, or otherwise processed imagery, in particular: - image processing - scene analysis, modeling, and understanding - machine vision - pattern matching and pattern recognition - image synthesis, including three-dimensional imaging and solid modeling
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