在器官和肿瘤分割前腹部CT图像去噪和增强的混合工具

Hasan Koyuncu, R. Ceylan
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引用次数: 9

摘要

腹部CT图像大多存在高斯噪声,由于腹部内部脂肪组织的存在,CT扫描视觉模糊。这两个障碍(噪声和脂肪组织)构成了准确分割腹部器官和肿瘤的障碍。此外,分割技术在对灰度较近的区域进行分割时也容易出现误差。因此,去噪和增强部分对CT图像的分割效果至关重要。在本文中,我们形成了一个包含三种高效算法的工具,用于腹部器官和肿瘤分割前的图像增强。首先,采用块匹配和三维滤波(BM3D)算法来消除动脉期CT图像中的高斯噪声。其次,采用快速连接尖峰皮质模型(FL-SCM)去除内部脂肪组织。最后,利用Otsu算法去除图像中的冗余部分。在实验中,采用峰值信噪比(PSNR)和结构相似度(SSIM)指标来评价所提方法的性能,并进行了视觉比较。结果表明,与两步管道(FL-SCM和BM3D & FL-SCM)相比,该工具获得了最佳的PSNR和SSIM值。因此,BM3D & FL-SCM & Otsu (BFO)可确保腹部清洁,特别是用于肝脏,脾脏,胰腺,肾上腺肿瘤,主动脉,肋骨,脊髓和肾脏的分割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A hybrid tool on denoising and enhancement of abdominal CT images before organ & tumour segmentation
Most of abdominal CT images include Gaussian noise, and CT scans form a blurry vision because of the internal fat tissue inside of abdomen. These two handicaps (noise and fat tissue) constitute an impediment in front of an accurate abdominal organ & tumour segmentation. Also segmentation techniques generally fall into error on segmentation of close grayscale regions. Therefore, denoising and enhancement parts are crucial for better segmentation results on CT images. In this paper, we form a tool including three efficient algorithms for the purpose of image enhancement before abdominal organ & tumour segmentation. At first, the denoising process is realized by Block Matching and 3D Filtering (BM3D) algorithm for elimination of Gaussian noise stated in arterial phase CT images. At second, Fast Linking Spiking Cortical Model (FL-SCM) is used for removing the internal fat tissue. At last, Otsu algorithm is processed to remove the redundant parts within the image. In experiments, Peak Signal-to-Noise Ratio (PSNR) and Structural Similarity (SSIM) index are used to evaluate the performance of proposed method, and a visual comparison is presented. According to results, it is seen that proposed tool obtains the best PSNR and SSIM values in comparison with two steps of pipeline (FL-SCM and BM3D & FL-SCM). Consequently, BM3D & FL-SCM & Otsu (BFO) ensures a clean abdomen particularly for segmentation of liver, spleen, pancreas, adrenal tumours, aorta, ribs, spinal cord and kidneys.
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