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Multi-Frame Low-Dose CT Image noise reduction using Adaptive Type-2 Fuzzy filter and Fast-ICA

机译:使用自适应2型模糊滤波器和FastICA的多帧低剂量CT图像降噪

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Decreasing the absorbed dosage by patient in x-ray imaging along with keeping image quality is one of the long-term goals of medical imaging field. Using low-dose images, instead of normal-dose images, can decrease the absorbed dosage; however, it also decreases the image quality due to quantum noise. In this paper, combination of Fast-ICA and adaptive Type-2 Fuzzy filter is utilized for filtering a group of low-dose images. Five different phantoms are used for investigating various effect of denoising, such as retaining slice geometry, high resolution, low-contrast, uniformity and bead geometry regions. Due to few numbers of images (8 images for each phantom), using deep learning method is not practical. The main novelty is attempting to convert the shot noise distribution to salt and pepper and denoising mapped image using fast independent component analysis. Concisely, the average and standard deviation of PSNR and SSIM of the proposed algorithm on five phantoms are 36.0 ± 2.7 dB and 0.83 ± 0.2, respectively, which shows a significant improvement comparing to the similar benchmark methods.
机译:减少患者在X射线成像中的吸收剂量以及保持图像质量是医学成像领域的长期目标之一。使用低剂量图像而不是正常剂量图像可以减少吸收剂量。然而,由于量子噪声,它也降低了图像质量。本文结合Fast-ICA和2型自适应模糊滤波器对一组低剂量图像进行滤波。五个不同的体模用于研究各种去噪效果,例如保留切片几何形状,高分辨率,低对比度,均匀性和磁珠几何形状区域。由于图像数量很少(每个幻影有8张图像),因此使用深度学习方法不切实际。主要的新颖之处在于尝试使用快速独立分量分析将散粒噪声分布转换为盐和胡椒粉,并对映射图像进行去噪。简而言之,该算法在五个体模上的PSNR和SSIM的平均值和标准偏差分别为36.0±2.7 dB和0.83±0.2,与同类基准方法相比,具有明显的改进。

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