An approach to Plant Disease Detection using Deep Learning Techniques

IF 0.5 Q4 ENGINEERING, MULTIDISCIPLINARY
J. Bhuvana, T. T. Mirnalinee
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引用次数: 1

Abstract

Agriculture is the backbone of Indian economy. Conventional farming systems are no longer being followed by our generation, due to lack of knowledge and expertise. Advancement of technologies pave a path that make a transition from traditional farming methods to smart agriculture by automating the processes involved. Challenges faced by today’s agriculture are depletion of soil nutrients and diseases caused by pests which lead to low productivity, irrigation problems, soil erosion, shortage of storage facilities, availability of quality seeds, lack of transportation, poor marketing etc. Among all these challenges in agriculture, prediction of diseases remains a major issue to be addressed. Identifying diseases based on visual inspection is the traditional way of farming which needs knowledge and experience to handle. Automating the process of detecting and identifying through visual inspection (cognitive) is the motivation behind this work. This is made possible with the availability of images of the plant or parts of plants, since most diseases are reflected on the leaves. A deep learning network architecture named Plant Disease Detection Network PDDNet-cv and a transfer learning approach of identifying diseases in plants were proposed. Our proposed system is compared with VGG19, ResNet50, InceptionResNetV2, the state-of-the-art methods reported in [9, 13, 5] and the results show that our method is significantly performing better than the existing systems. Our proposed PDDNet-cv has achieved average classification accuracy of 99.09% in detecting different classes of diseases. The proposed not so deep architecture is performing well compared to other deep learning architectures in terms of performance and computational time.
基于深度学习技术的植物病害检测方法
农业是印度经济的支柱。由于缺乏知识和专业技能,我们这一代人不再遵循传统的农业系统。技术的进步为从传统农业方法到智能农业的过渡铺平了道路,通过自动化所涉及的过程。当今农业面临的挑战是土壤养分枯竭和虫害引起的疾病,导致生产力低下,灌溉问题,土壤侵蚀,缺乏储存设施,优质种子的可用性,缺乏运输,营销不善等。在所有这些农业挑战中,疾病预测仍然是一个需要解决的主要问题。基于目测的疾病识别是传统的养殖方式,需要知识和经验来处理。通过视觉检查(认知)自动化检测和识别过程是这项工作背后的动机。由于大多数疾病都反映在叶子上,因此有了植物或植物部分的图像就可以做到这一点。提出了植物病害检测网络PDDNet-cv的深度学习网络架构和植物病害识别的迁移学习方法。我们提出的系统与VGG19、ResNet50、InceptionResNetV2(文献[9,13,5]中报道的最先进的方法)进行了比较,结果表明我们的方法明显优于现有系统。我们提出的PDDNet-cv在检测不同类别疾病方面的平均分类准确率达到99.09%。与其他深度学习架构相比,所提出的非深度架构在性能和计算时间方面表现良好。
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来源期刊
Revista Iteckne
Revista Iteckne ENGINEERING, MULTIDISCIPLINARY-
自引率
50.00%
发文量
3
审稿时长
24 weeks
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