Use of a deep convolutional neural network to diagnose disease in the rose by means of a photographic image

O. A. Miloserdov, N. S. Ovcharenko, A. Makarenko
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引用次数: 1

Abstract

The article presents particulars of developing a plant disease detection system based on analysis of photo-graphic images by deep convolutional neural networks. A original lightweight neural network architecture is used (only 13 480 trained parameters) that is tens and hundreds of times more compact than typical solutions. Real-life field data is used for training and testing, with photographs taken in adverse conditions: variation in hardware quality, angles, lighting conditions, scales (from macro shots of individual fragments of leaf and stem to several rose bushes in one picture), and complex disorienting backgrounds. An adaptive decision-making rule is used, based on the Bayes’ theorem and Wald’s sequential probability ratio test, in order to improve reliability of the results. A following example is provided: detection of disease on leaves and stems of rose from images taken in the visible spectrum. The authors were able attain the quality of 90.6% on real-life data (F1 score, one input image, test dataset).
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利用深度卷积神经网络通过摄影图像来诊断玫瑰的疾病
本文介绍了一种基于深度卷积神经网络的植物病害检测系统。使用原始的轻量级神经网络架构(只有13480个训练参数),比典型解决方案紧凑数十倍甚至数百倍。真实的现场数据用于训练和测试,在不利条件下拍摄的照片:硬件质量、角度、照明条件、尺度(从单片叶子和茎的微距镜头到一张照片中的几株玫瑰丛)的变化,以及复杂的定向障碍背景。为了提高结果的可靠性,采用了基于贝叶斯定理和Wald序列概率比检验的自适应决策规则。提供了以下示例:从可见光谱中拍摄的图像检测玫瑰叶和茎上的疾病。作者能够在真实数据(F1分数,一个输入图像,测试数据集)上达到90.6%的质量。
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