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Denoising of 3D Brain MR Images with Parallel Residual Learning of Convolutional Neural Network Using Global and Local Feature Extraction

机译:使用全局和局部特征提取与卷积神经网络的平行剩余学习的3D脑MR图像的去噪

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Magnetic resonance (MR) images often suffer from random noise pollution during image acquisition and transmission, which impairs disease diagnosis by doctors or automated systems. In recent years, many noise removal algorithms with impressive performances have been proposed. In this work, inspired by the idea of deep learning, we propose a denoising method named 3D-Parallel-RicianNet, which will combine global and local information to remove noise in MR images. Specifically, we introduce a powerful dilated convolution residual (DCR) module to expand the receptive field of the network and to avoid the loss of global features. Then, to extract more local information and reduce the computational complexity, we design the depthwise separable convolution residual (DSCR) module to learn the channel and position information in the image, which not only reduces parameters dramatically but also improves the local denoising performance. In addition, a parallel network is constructed by fusing the features extracted from each DCR module and DSCR module to improve the efficiency and reduce the complexity for training a denoising model. Finally, a reconstruction (REC) module aims to construct the clean image through the obtained noise deviation and the given noisy image. Due to the lack of ground-truth images in the real MR dataset, the performance of the proposed model was tested qualitatively and quantitatively on one simulated T1-weighted MR image dataset and then expanded to four real datasets. The experimental results show that the proposed 3D-Parallel-RicianNet network achieves performance superior to that of several state-of-the-art methods in terms of the peak signal-to-noise ratio, structural similarity index, and entropy metric. In particular, our method demonstrates powerful abilities in both noise suppression and structure preservation.
机译:磁共振(MR)图像经常在图像采集和传输过程中遭受随机噪声污染,其损害医生或自动化系统的疾病诊断。近年来,已经提出了许多具有令人印象深刻性表演的噪声去除算法。在这项工作中,灵感来自深度学习的想法,我们提出了一种名为3D-Parally-Riciannet的去噪方法,它将结合全局和本地信息来消除MR图像中的噪声。具体而言,我们介绍了一个强大的扩张卷积残余(DCR)模块,以扩展网络的接受领域,并避免丢失全局特征。然后,为了提取更多本地信息并降低计算复杂性,我们设计深度可分离的卷积残差(DSCR)模块,以了解图像中的信道和位置信息,这不仅可以显着降低参数,而且还提高了本地去噪性能。另外,通过融合从每个DCR模块和DSCR模块提取的特征来构建并行网络,以提高效率并降低培训去噪模型的复杂性。最后,重建(REC)模块旨在通过所获得的噪声偏差和给定的噪声图像来构造清洁图像。由于实际MR DataSet中的地面真理图像缺乏,所提出的模型的性能在一个模拟的T1加权MR图像数据集上定性和定量地测试,然后扩展到四个真实数据集。实验结果表明,在峰值信噪比,结构相似性指数和熵度量方面,所提出的3D平行Riciannet网络在峰值信噪比和熵度量方面实现了优于多种最先进的方法的性能。特别是,我们的方法在噪声抑制和结构保存方面表现出强大的能力。

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