Comparison of CNN models for application in crop health assessment with participatory sensing

Prakruti V. Bhatt, Sanat Sarangi, S. Pappula
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引用次数: 23

Abstract

Timely and robust diagnosis of plant diseases and nutrient deficiencies play a major role in management of crop yield. Automation is a low cost alternative to human experts and can help to detect early onset of crop diseases which aids faster decision making and in giving recommendations to farmers to curb yield loss. We have developed a smart-phone based participatory sensing application for agriculture which is used by farmers to scout their fields for events of interest, especially those related to crop health. Recently, deep convolutional neural networks (CNN) have emerged as a prominent technique in computer vision related challenges and such deep-learning based models could prove as an important tool to do just-in-time assessment of crop health. With a view to building state-of-the-art diagnostic capabilities on the phone, we present analysis of CNN models in terms of accuracy, memory, and inference time. Effects of change in hyperparameters have been evaluated in terms of accuracy. The trained model gives 99.7% classification accuracy with satisfactory inference time and model size which assures the application of CNN architectures for real-time crop state diagnosis on a large scale with limited hardware capabilities.
CNN模型在参与式传感作物健康评价中的应用比较
及时有力地诊断植物病害和营养缺乏在作物产量管理中起着重要作用。自动化是人类专家的低成本替代品,可以帮助发现作物疾病的早期发作,这有助于更快地做出决策,并向农民提供建议,以遏制产量损失。我们开发了一种基于智能手机的农业参与式传感应用程序,农民可以用它来侦察他们的田地,寻找感兴趣的事件,特别是那些与作物健康有关的事件。最近,深度卷积神经网络(CNN)已经成为计算机视觉相关挑战中的一项突出技术,这种基于深度学习的模型可以被证明是实时评估作物健康的重要工具。为了在手机上建立最先进的诊断功能,我们在准确性,记忆和推理时间方面对CNN模型进行了分析。超参数变化的影响已经根据准确性进行了评估。训练后的模型具有99.7%的分类准确率和令人满意的推理时间和模型大小,这保证了CNN架构在硬件能力有限的情况下大规模实时作物状态诊断的应用。
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