A study on low-dose CT image denoising method based on similar block learning

Huijuan Fu, Xiaoqi Xi, Yu Han, Linlin Zhu, Mengnan Liu, Siyu Tan, Chang Liu, Lei Li, Bin Yan
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Abstract

X-ray tomographic imaging has become an important analytical tool with a wide range of applications. It is inevitable that noise is introduced in CT images, and noise reduction is necessary. To solve this problem, we considered to use the nonlocal property of similar block search and proposed a deep learning network based on similar block learning for noise reduction of micro CT short exposure time scanned images to improve the scanning efficiency while ensuring high quality imaging. The method uses the output of the nonlocal method as a data preprocessing algorithm by combining a nonlocal block matching algorithm with a convolutional neural network, and uses a residual channel attention mechanism to learn the features after feature extraction, which reduces noise while preserving image details. Experimental results show that the method can remove noise from CT images quickly and effectively, and compared with the classical CPCE noise reduction method, the method improves the PSNR index by 1.52 dB, which is consistent with the theoretical assumption.
基于相似块学习的低剂量CT图像去噪方法研究
x射线层析成像已成为一种重要的分析工具,具有广泛的应用前景。在CT图像中不可避免地引入噪声,降噪是必要的。为了解决这一问题,我们考虑利用相似块搜索的非局部特性,提出了一种基于相似块学习的深度学习网络,用于微CT短曝光时间扫描图像的降噪,在保证高成像质量的同时提高扫描效率。该方法将非局部块匹配算法与卷积神经网络相结合,将非局部方法的输出作为数据预处理算法,并利用残差通道关注机制对特征提取后的特征进行学习,在降低噪声的同时保留图像细节。实验结果表明,该方法能够快速有效地去除CT图像中的噪声,与经典的CPCE降噪方法相比,该方法的PSNR指标提高了1.52 dB,与理论假设相符。
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