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基于超分辨率生成对抗网络(SRGANs)的小麦条锈病分类。

Super Resolution Generative Adversarial Network (SRGANs) for Wheat Stripe Rust Classification.

机构信息

School of Electrical Engineering and Computer Science (SEECS), National University of Sciences and Technology (NUST), Islamabad 44000, Pakistan.

Department of Engineering and Technology, School of Computing and Engineering, University of Huddersfield, Queensgate, Huddersfield HD1 3DH, UK.

出版信息

Sensors (Basel). 2021 Nov 26;21(23):7903. doi: 10.3390/s21237903.

Abstract

Wheat yellow rust is a common agricultural disease that affects the crop every year across the world. The disease not only negatively impacts the quality of the yield but the quantity as well, which results in adverse impact on economy and food supply. It is highly desired to develop methods for fast and accurate detection of yellow rust in wheat crop; however, high-resolution images are not always available which hinders the ability of trained models in detection tasks. The approach presented in this study harnesses the power of super-resolution generative adversarial networks (SRGAN) for upsampling the images before using them to train deep learning models for the detection of wheat yellow rust. After preprocessing the data for noise removal, SRGANs are used for upsampling the images to increase their resolution which helps convolutional neural network (CNN) in learning high-quality features during training. This study empirically shows that SRGANs can be used effectively to improve the quality of images and produce significantly better results when compared with models trained using low-resolution images. This is evident from the results obtained on upsampled images, i.e., 83% of overall test accuracy, which are substantially better than the overall test accuracy achieved for low-resolution images, i.e., 75%. The proposed approach can be used in other real-world scenarios where images are of low resolution due to the unavailability of high-resolution camera in edge devices.

摘要

小麦条锈病是一种常见的农业病害,每年在全球范围内都会影响作物。这种病害不仅会降低产量的质量,还会降低数量,从而对经济和粮食供应造成不利影响。因此,人们非常希望开发出快速、准确检测小麦条锈病的方法;然而,高分辨率图像并不总是可用,这限制了训练模型在检测任务中的能力。本研究利用超分辨率生成对抗网络(SRGAN)的强大功能,在将图像用于训练深度学习模型以检测小麦条锈病之前对其进行上采样。在对数据进行去噪预处理后,使用 SRGAN 对图像进行上采样,以提高其分辨率,这有助于卷积神经网络(CNN)在训练过程中学习高质量的特征。这项研究从经验上表明,SRGAN 可以有效地提高图像的质量,并产生比使用低分辨率图像训练的模型显著更好的结果。从上采样图像获得的结果(即 83%的总体测试准确率)明显优于低分辨率图像获得的总体测试准确率(即 75%),这一点很明显。由于边缘设备中没有高分辨率相机,因此当图像分辨率较低时,该方法可以用于其他实际情况。

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