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A novel complex-valued convolutional neural network for medical image denoising

机译:一种用于医学图像去噪的新型复合卷积神经网络

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Several applications of complex-valued networks have been reported for computer vision tasks like image pro-cessing and classification. However, complex-valued convolutional neural networks are yet to be explored for medical image denoising. In this paper, a novel complex-valued convolutional neural network-based model, termed as CVMIDNet, is investigated for medical image denoising. Unlike traditional approaches, which learn clean images from noisy images, the proposed model utilizes residual learning, which learns noise from noisy images and then subtracts it from noisy images so as to obtain clean images. To assess the denoising performance of CVMIDNet, standard image quality metrics, namely, peak signal to noise ratio and the structural similarity index, have been used for five different additive white Gaussian noise levels in chest X-ray images. Chest X-ray denoising performance of CVMIDNet was compared with four recent state-of-the-art models, namely, Block -Matching and 3D (BM3D) filtering, DnCNN, Feature-guided Denoising Convolutional Neural Network (FDCNN), and deep CNN with residual learning. Additionally, it is also benchmarked against its real-valued counterpart, termed RVMIDNet. In all the reported performance investigations, CVMIDNet was found to be superior. For instance, for a Gaussian noise level of sigma = 15, peak signal to noise ratio and structural similarity index values achieved by the CVMIDNet are 37.2010 and 0.9227, respectively, against the 36.2292 and 0.9086, 36.3203 and 0.9139, 35.0995 and 0.9005, 36.1830 and 0.8968, 34.2436 and 0.8874 achieved by BM3D filtering, DnCNN, RVMIDNet, FDCNN, and deep CNN with residual learning, respectively. Therefore, based on the pre-sented investigations, it is concluded that CVMIDNet is a potential deep learning model for medical image denoising.
机译:据报道了用于计算机愿景任务,如图像Pro-Cessinging和分类,已经报道了多个复合网络的应用。然而,尚未探索复合值的卷积神经网络,用于医学图像去噪。本文研究了一种以CVMIDNET称为CVMIDNET的新型复合值卷积神经网络模型,用于医学图像去噪。与从嘈杂图像中学习清洁图像的传统方法不同,所提出的模型利用剩余学习,从而从嘈杂的图像中学习噪声,然后从嘈杂的图像中减去它以获得清洁图像。为了评估CVMIDNET的去噪性能,标准图像质量指标,即峰值信号到噪声比和结构相似性指数,已被用于胸部X射线图像中的五种不同的添加性白色高斯噪声水平。将CVMIDNET的胸部X射线去噪能与最近的四个最先进的模型进行比较,即块 - 拦截和3D(BM3D)滤波,DNCNN,功能导向的去噪卷积神经网络(FDCNN)和深CNN随着剩余学习。此外,它还针对其真实价值的对手,称为RVMIDNET。在所有报告的绩效调查中,发现CVMIDNET是优越的。例如,对于Sigma = 15的高斯噪声水平,CVMIDNET实现的峰值信号与CVMIDNET实现的噪声比和结构相似性指数值分别为37.2010和0.9227,而不是36.2292和0.9086,36.3203和0.9139,35.0995和0.9005,36.1830和由BM3D滤波,DNCNN,RVMIDNET,FDCNN和具有残留学习的深度CNN实现的0.8968,34.2436和0.8874。因此,根据预先发出的调查,得出结论,CVMIDNET是医学图像去噪的潜在深度学习模型。

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