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Classification of Digital Modulated COVID-19 Images in the Presence of Channel Noise Using 2D Convolutional Neural Networks

机译:使用2D卷积神经网络的信道噪声存在数字调制Covid-19图像的分类

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The wireless environment poses a significant challenge to the propagation of signals. Different effects such as multipath scattering, noise, degradation, distortion, attenuation, and fading affect the distribution of signals adversely. Deep learning techniques can be used to differentiate among different modulated signals for reliable detection in a communication system. This study aims at distinguishing COVID-19 disease images that have been modulated by different digital modulation schemes and are then passed through different noise channels and classified using deep learning models. We proposed a comprehensive evaluation of different 2D Convolutional Neural Network (CNN) architectures for the task of multiclass (24-classes) classification of modulated images in the presence of noise and fading. It is used to differentiate between images modulated through Binary Phase Shift Keying, Quadrature Phase Shift Keying, 16- and 64-Quadrature Amplitude Modulation and passed through Additive White Gaussian Noise, Rayleigh, and Rician channels. We obtained mixed results under different settings such as data augmentation, disharmony between batch normalization (BN), and dropout (DO), as well as lack of BN in the network. In this study, we found that the best performing model is a 2D-CNN model using disharmony between BN and DO techniques trained using 10-fold cross-validation (CV) with a small value of DO before softmax and after every convolution and fully connected layer along with BN layers in the presence of data augmentation, while the least performing model is the 2D-CNN model trained using 5-fold CV without augmentation.
机译:无线环境对信号传播构成了重大挑战。不同的效果,如多径散射,噪声,劣化,失真,衰减和衰减产生不利的分布。深度学习技术可用于区分不同的调制信号,以便在通信系统中进行可靠的检测。本研究旨在区分由不同数字调制方案调制的CoVID-19疾病图像,然后通过不同的噪声通道通过并使用深度学习模型进行分类。我们提出了对不同2D卷积神经网络(CNN)架构的综合评估,用于在存在噪声和衰落的情况下调制图像的多标准(24级)分类的任务。它用于区分通过二进制相移键控,正交相移键控,16-和64正交幅度调制和通过添加性白色高斯噪声,瑞利和瑞典信道来分辨。我们在不同的设置下获得了混合结果,例如数据增强,批量标准化(BN)之间的Distrony,以及网络中的丢弃(DO)以及缺少BN。在这项研究中,我们发现,最好的表现模型是使用BN之间的Distralony的2D-CNN模型,并使用10倍交叉验证(CV)在SoftMax之前和每种卷积之前进行的少量验证的技术和完全连接的技术在数据增强的存在下,在存在数据时,在存在数据的情况下,虽然最小性模型是使用5倍CV的2D-CNN模型,而无需增强。

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