Learning a multiscale patch-based representation for image denoising in X-RAY fluoroscopy

Y. Matviychuk, B. Mailhé, Xiao Chen, Qiu Wang, A. Kiraly, N. Strobel, M. Nadar
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引用次数: 9

Abstract

Denoising is an indispensable step in processing low-dose X-ray fluoroscopic images that requires development of specialized high-quality algorithms able to operate in near real-time. We address this problem with an efficient deep learning approach based on the process-centric view of traditional iterative thresholding methods. We develop a novel trainable patch-based multiscale framework for sparse image representation. In a computationally efficient way, it allows us to accurately reconstruct important image features on multiple levels of decomposition with patch dictionaries of reduced size and complexity. The flexibility of the chosen machine learning approach allows us to tailor the learned basis for preserving important structural information in the image and noticeably minimize the amount of artifacts. Our denoising results obtained with real clinical data demonstrate significant quality improvement and are computed much faster in comparison with the BM3D algorithm.
学习基于多尺度补丁的x射线透视图像去噪方法
去噪是处理低剂量x射线透视图像必不可少的步骤,这需要开发能够近实时操作的专门高质量算法。我们用一种高效的深度学习方法来解决这个问题,这种方法基于传统迭代阈值方法的以过程为中心的观点。我们开发了一种新的基于可训练补丁的多尺度稀疏图像表示框架。在一个计算效率高的方式,它允许我们准确地重建重要的图像特征在多层次的分解与补丁字典的大小和复杂性减少。所选择的机器学习方法的灵活性使我们能够定制学习基础,以保留图像中的重要结构信息,并显着减少人工制品的数量。与BM3D算法相比,我们对真实临床数据的去噪结果显示出明显的质量改善,并且计算速度更快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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