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Computed Tomography (CT) Image Quality Enhancement via a Uniform Framework Integrating Noise Estimation and Super-Resolution Networks

机译:通过整合噪声估计和超分辨率网络的统一框架增强计算机断层扫描(CT)图像质量

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摘要

Computed tomography (CT) imaging technology has been widely used to assist medical diagnosis in recent years. However, noise during the process of imaging, and data compression during the process of storage and transmission always interrupt the image quality, resulting in unreliable performance of the post-processing steps in the computer assisted diagnosis system (CADs), such as medical image segmentation, feature extraction, and medical image classification. Since the degradation of medical images typically appears as noise and low-resolution blurring, in this paper, we propose a uniform deep convolutional neural network (DCNN) framework to handle the de-noising and super-resolution of the CT image at the same time. The framework consists of two steps: Firstly, a dense-inception network integrating an inception structure and dense skip connection is proposed to estimate the noise level. The inception structure is used to extract the noise and blurring features with respect to multiple receptive fields, while the dense skip connection can reuse those extracted features and transfer them across the network. Secondly, a modified residual-dense network combined with joint loss is proposed to reconstruct the high-resolution image with low noise. The inception block is applied on each skip connection of the dense-residual network so that the structure features of the image are transferred through the network more than the noise and blurring features. Moreover, both the perceptual loss and the mean square error (MSE) loss are used to restrain the network, leading to better performance in the reconstruction of image edges and details. Our proposed network integrates the degradation estimation, noise removal, and image super-resolution in one uniform framework to enhance medical image quality. We apply our method to the Cancer Imaging Archive (TCIA) public dataset to evaluate its ability in medical image quality enhancement. The experimental results demonstrate that the proposed method outperforms the state-of-the-art methods on de-noising and super-resolution by providing higher peak signal to noise ratio (PSNR) and structure similarity index (SSIM) values.
机译:近年来,计算机断层扫描(CT)成像技术已广泛用于辅助医学诊断。但是,成像过程中的噪声以及存储和传输过程中的数据压缩始终会中断图像质量,从而导致计算机辅助诊断系统(CAD)中后处理步骤的执行不可靠,例如医学图像分割,特征提取和医学图像分类。由于医学图像的退化通常表现为噪声和低分辨率模糊,因此在本文中,我们提出了统一的深度卷积神经网络(DCNN)框架来同时处理CT图像的降噪和超分辨率。该框架包括两个步骤:首先,提出了一种将初始结构和密集跳过连接相结合的稠密网络来估计噪声水平。初始结构用于针对多个接收场提取噪声和模糊特征,而密集跳过连接可以重用这些提取的特征并在网络上传输它们。其次,提出了一种结合联合损失的改进的残密网络来重构低噪声的高分辨率图像。初始块应用于密集残差网络的每个跳过连接,从而使图像的结构特征比噪声和模糊特征更多地通过网络传输。此外,感知损失和均方误差(MSE)损失都被用来限制网络,从而在重建图像边缘和细节方面获得更好的性能。我们提出的网络将降级估计,噪声消除和图像超分辨率集成在一个统一的框架中,以提高医学图像质量。我们将我们的方法应用于癌症影像档案馆(TCIA)的公共数据集,以评估其在医学影像质量增强方面的能力。实验结果表明,该方法通过提供更高的峰值信噪比(PSNR)和结构相似性指标(SSIM)值,在去噪和超分辨率方面优于最新方法。

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