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Planar Nuclear Medicine Images De-Noising ViaWavelet Block Thresholding: a SimulationStudy

机译:平面核医学图像通过小波块阈值去噪:一个模拟研究

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Aims: Wavelet transform is the powerful mathematical tool used for image processing and noise suppression applications in different area of science and engineering. In this technique, selecting optimal threshold for de-noising is still an area of thrust for the researchers. In this paper, we have focused on the de-noising of planar nuclear medicine image using the block thresholding with different block sizes when threshold values vary for Stein, soft and hard thresholdings.Study Design: De-noising of planar nuclear medicine images via wavelet block thresholdingPlace and Duration of Study: University of Guilan.Methodology: We simulated planar images of hot region of Carlson phantom by GATE v. 6.1. Noisy image and reference image were produced by imaging time 10 and 40 second, from the hot region of Carlson phantom which is placed next to the simulated gamma camera. Then, we tried to de-noise noisy test image by wavelet transforms and block thresholding methods. For de-noising, we show the evolution of the de-noising peak signal to noise ratio when threshold values vary for Stein, soft and hard thresholding methods.Results: We observed that for the given noisy image, the optimal thresholds belong to the soft and Stein thresholding algorithms, respectively. Comparing the different size of blocks for the soft block thresholder by the PSNR and RMSE criterions show that the best results could be obtained by test image which is subjected to the block sizes of 3 and 4. Furthermore, Invariant soft thresholding is found to yield an overly smoothed estimate than orthogonal soft thresholding.Conclusion: Although decreasing of imaging time increases Poisson noise in the acquired nuclear medicine images, using of de-noising technique based on the wavelet transform could improve image degradation, so that the quality of de-noised test image could be compared to the reference image.
机译:目的:小波变换是功能强大的数学工具,可用于科学和工程学不同领域中的图像处理和噪声抑制应用。在这项技术中,选择最佳的降噪阈值仍然是研究人员的工作重点。在本文中,我们专注于当Stein,软阈值和硬阈值的阈值变化时,使用具有不同块大小的块阈值对平面核医学图像进行降噪研究设计:通过小波对平面核医学图像进行降噪方法:我们通过GATE v。6.1模拟了卡尔森幻影热点区域的平面图像。噪声图像和参考图像是在10到40秒的成像时间内从卡尔森体模的高温区域产生的,该区域位于模拟伽马相机旁边。然后,我们尝试通过小波变换和块阈值化方法对嘈杂的测试图像进​​行去噪。对于去噪,我们显示了Stein,软和硬阈值方法的阈值变化时,去噪峰值信噪比的变化。结果:我们观察到,对于给定的噪点图像,最佳阈值属于软阈值和Stein阈值算法。通过PSNR和RMSE准则对软块阈值器的不同块大小进行比较,结果表明,通过对3和4的块大小进行测试的图像可以获得最佳结果。此外,发现不变的软阈值产生了结论:尽管减少成像时间会增加采集的核医学图像中的泊松噪声,但基于小波变换的去噪技术可以改善图像质量,从而降低去噪测试的质量图像可以与参考图像进行比较。

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