Rose Plant Disease Detection using Deep Learning

Md. Ali- Al - Alvy, Golam Kibria Khan, M. J. Alam, Saiful Islam, Mokhlesur M. Rahman, Mirza Shahriyar Rahman
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Abstract

The detection and identification of rose plant disease is the focus of this investigation. Identification and detection are essential components of contemporary agro technology. In this case, AI technology was utilized to identify a disease in rose plants, although plant disease detection is difficult for sustainable agriculture. There are several instances of rose plant disease, and as a result, fascinating decoration is being lost. Due to this situation, which is getting worse every day in Bangladesh, the economy of agricultural sector is suffering. Bangladesh's population relies heavily on agriculture industry for their revenue. This study includes some disease detection of rose plants, albeit not all plants are affected equally by the illness. The plant leaf provides the plant with vital sustenance. When a leaf is ill, the plant is at its most vulnerable. Due to the accessibility of the sick leaf, disease identification is difficult. Agriculture field must be properly assessed to see significant improvements in proposed work. The best resource for creating this kind of disease detection model is deep learning technology. Image pre-processing and model analysis are steps in the disease detection construction process. Few CNN architectures are used in this study, including ResNet50, VGG-16 (Visual Geometry Group), MobileNetV2, and Inception V3. Four diseases have been identified in rose plant leaves. Here, image processing is investigated using a discovered approach and obtain a MobileNetV2 model accuracy of 96.11%.
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玫瑰植物病害的深度学习检测
玫瑰植物病害的检测与鉴定是本次调查的重点。鉴定和检测是当代农业技术的重要组成部分。在这种情况下,人工智能技术被用于识别玫瑰植物的疾病,尽管植物疾病检测对可持续农业来说是困难的。有几个玫瑰植物病害的例子,结果,迷人的装饰正在失去。由于这种情况在孟加拉国每天都在恶化,农业部门的经济正在受到影响。孟加拉国人口的收入严重依赖农业。这项研究包括对玫瑰植物的一些疾病检测,尽管不是所有的植物都受到这种疾病的影响。植物的叶子为植物提供重要的营养。当一片叶子生病时,植物是最脆弱的。由于叶片的可及性,疾病鉴定是困难的。必须对农业领域进行适当的评估,以看到拟议工作的重大改进。创建这种疾病检测模型的最佳资源是深度学习技术。图像预处理和模型分析是疾病检测构建过程中的两个步骤。本研究中使用的CNN架构很少,包括ResNet50、VGG-16 (Visual Geometry Group)、MobileNetV2和Inception V3。在玫瑰植物叶片中发现了四种病害。在此,使用发现的方法对图像处理进行了研究,并获得了96.11%的MobileNetV2模型精度。
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