Apple diseases, if not diagnosed early, can lead to massive resource loss and pose a serious threat to humans and animals who consume the infected apples. Hence, it is critical to diagnose these diseases early in order to manage plant health and minimize the risks associated with them. However, the conventional approach of monitoring plant diseases entails manual scouting and analyzing the features, texture, color, and shape of the plant leaves, resulting in delayed diagnosis and misjudgments. Our work proposes an ensembled system of Xception, InceptionResNet, and MobileNet architectures to detect 5 different types of apple plant diseases. The model has been trained on the publicly available Plant Pathology 2021 dataset and can classify multiple diseases in a given plant leaf. The system has achieved outstanding results in multi-class and multi-label classification and can be used in a real-time setting to monitor large apple plantations to aid the farmers manage their yields effectively.
翻译:苹果疾病,如果不及早诊断出来,可能导致大量资源损失,对食用受感染苹果的人类和动物构成严重威胁,因此,必须及早诊断这些疾病,以便管理植物健康并尽量减少与之有关的风险,然而,传统的植物疾病监测方法需要人工侦察和分析植物叶的特征、质地、颜色和形状,导致诊断和判断延迟。我们的工作提议建立一个集成的Xception、InpepionResNet和移动网络结构系统,以发现5种不同类型的苹果植物疾病。模型已经接受了关于公开提供的植物病理学2021数据集的培训,可以对特定植物叶中的多种疾病进行分类。这个系统在多级和多标签分类方面取得了突出的成果,可以在实时环境中用于监测大型苹果种植园,以帮助农民有效管理其产量。