Department of Computer Engineering, Gachon University, Sujeong-gu, Seongnam-si 461-701, Gyeonggi-do, Republic of Korea.
Department of AI Software, Gachon University, Sujeong-gu, Seongnam-si 461-701, Gyeonggi-do, Republic of Korea.
Sensors (Basel). 2022 Nov 18;22(22):8911. doi: 10.3390/s22228911.
Plant diseases are a major cause of reduction in agricultural output, which leads to severe economic losses and unstable food supply. The citrus plant is an economically important fruit crop grown and produced worldwide. However, citrus plants are easily affected by various factors, such as climate change, pests, and diseases, resulting in reduced yield and quality. Advances in computer vision in recent years have been widely used for plant disease detection and classification, providing opportunities for early disease detection, and resulting in improvements in agriculture. Particularly, the early and accurate detection of citrus diseases, which are vulnerable to pests, is very important to prevent the spread of pests and reduce crop damage. Research on citrus pest disease is ongoing, but it is difficult to apply research results to cultivation owing to a lack of datasets for research and limited types of pests. In this study, we built a dataset by self-collecting a total of 20,000 citrus pest images, including fruits and leaves, from actual cultivation sites. The constructed dataset was trained, verified, and tested using a model that had undergone five transfer learning steps. All models used in the experiment had an average accuracy of 97% or more and an average f1 score of 96% or more. We built a web application server using the EfficientNet-b0 model, which exhibited the best performance among the five learning models. The built web application tested citrus pest disease using image samples collected from websites other than the self-collected image samples and prepared data, and both samples correctly classified the disease. The citrus pest automatic diagnosis web system using the model proposed in this study plays a useful auxiliary role in recognizing and classifying citrus diseases. This can, in turn, help improve the overall quality of citrus fruits.
植物病害是农业减产的主要原因之一,这导致了严重的经济损失和不稳定的粮食供应。柑橘是一种在世界范围内广泛种植和生产的具有重要经济价值的水果作物。然而,柑橘植物容易受到各种因素的影响,如气候变化、病虫害等,导致产量和质量下降。近年来,计算机视觉技术的发展在植物病害检测和分类方面得到了广泛应用,为早期病害检测提供了机会,并促进了农业的发展。特别是,早期准确地检测易受病虫害影响的柑橘病害对于防止病虫害传播和减少作物损害非常重要。柑橘病虫害的研究一直在进行,但由于缺乏研究数据集和有限的病虫害类型,难以将研究成果应用于实际种植中。在本研究中,我们通过自行从实际种植地点收集了总共 20,000 张柑橘病虫害图像,包括果实和叶片,来构建数据集。使用经过五次迁移学习步骤的模型对构建的数据集进行了训练、验证和测试。实验中使用的所有模型的平均准确率均在 97%以上,平均 f1 得分均在 96%以上。我们使用在五个学习模型中表现最好的 EfficientNet-b0 模型构建了一个 Web 应用程序服务器。构建的 Web 应用程序使用从除了自行收集的图像样本和准备的数据之外的网站收集的图像样本测试了柑橘病虫害,并且两种样本都正确地对疾病进行了分类。使用本研究提出的模型构建的柑橘病虫害自动诊断 Web 系统在识别和分类柑橘病害方面发挥了有益的辅助作用。这反过来又有助于提高柑橘果实的整体质量。