基于卷积神经网络的葡萄病毒病害检测方法

Yi Wang, Shuizhou Ke, Shaohong Wang, Zhibo Zheng
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引用次数: 1

摘要

黑腐病、黑麻疹和异叶枯病是三种非常致命的葡萄病毒病。在葡萄栽培中,这些病害会危害葡萄的生长,对产量有很大的影响。因此,在发病早期采取及时的诊断和治疗措施,将大大降低葡萄的死亡率,这在葡萄栽培中尤为重要。传统的人工筛查方法需要具有专业疾病知识和检测经验的工作人员,在大规模检测中需要较高的人工成本和大量的时间。我们考虑在大规模筛查中加入一种基于卷积神经网络的深度学习检测方法,快速检测容易诊断的病例,从而专注于难以识别的病例,减少工作压力。在本文中,我们提出了一种使用先进的深度学习框架的检测方案来识别这三种症状相似的疾病,并在图像可视化中定位它们的位置并准确地勾勒出它们。数值结果表明,该检测方案具有良好的性能,并通过多次实验得到了高性能的结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Grapevine Virus Disease Detection Method Based on Convolution Neural Network
Black rot, black measles and isariopsis leaf spot are three kinds of very fatal grapevine virus disease. In the cultivation of grape, these diseases will harm the growth of grapes and have a great impact on the yield. Thus, timely diagnosis and treatment measures in the early stage of disease will greatly reduce the mortality of grape, which is particularly important in the cultivation of grape. The traditional method of manual screening requires staff with professional knowledge of diseases and detection experience, which requires high labor cost and a lot of time in large-scale detection. We consider adding a convolution neural network based deep learning detection method in large-scale screening to quickly detect easily diagnosed cases so as to focus on the hard-to-discern cases and reduce work pressure. In this paper, we propose a detection scheme using advanced deep learning framework to identify these three diseases with similar symptoms, locate their positions in image visualization and outline them accurately. Numerical results reveal that the detection scheme has great performance, and the high-performance configuration is obtained through several experiments.
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