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Deeolsing of PET images by combining wavelets and curvelets for improved preservation of resolution and quantitation

机译:通过组合小波和曲面来改善分辨率和定量保存的小波和曲线的Deeolsing

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摘要

Denoising of Positron Emission Tomography (PET) images is a challenging task due to the inherent low signal-to-noise ratio (SNR) of the acquired data. A pre-processing denoising step may facilitate and improve the results of further steps such as segmentation, quantification or textural features characterization. Different recent denoising techniques have been introduced and most state-of-the-art methods are based on filtering in the wavelet domain. However, the wavelet transform suffers from some limitations due to its non-optimal processing of edge discontinuities. More recently, a new multi scale geometric approach has been proposed, namely the curvelet transform. It extends the wavelet transform to account for directional properties in the image. In order to address the issue of resolution loss associated with standard denoising, we considered a strategy combining the complementary wavelet and curvelet transforms. We compared different figures of merit (e.g. SNR increase, noise decrease in homogeneous regions, resolution loss, and intensity bias) on simulated and clinical datasets with the proposed combined approach and the wavelet-only and curvelet-only filtering techniques. The three methods led to an increase of the SNR. Regarding the quantitative accuracy however, the wavelet and curvelet only denoising approaches led to larger biases in the intensity and the contrast than the proposed combined algorithm. This approach could become an alternative solution to filters currently used after image reconstruction in clinical systems such as the Gaussian filter.
机译:由于所获取的数据的固有的低信噪比(SNR),正电子发射断层扫描(PET)图像是一个具有挑战性的任务。预处理的去噪步骤可以促进和改善进一步步骤的结果,例如分段,定量或纹理特征表征。已经引入了不同最近的去噪技术,并且大多数最先进的方法基于小波域中的滤波。然而,由于边缘不连续性的非最佳处理,小波变换遭受了一些限制。最近,已经提出了一种新的多尺度几何方法,即曲线变换。它扩展了小波变换以解释图像中的方向属性。为了解决与标准去噪相关的解决问题的问题,我们考虑了结合互补小波和曲线变换的策略。我们比较了不同的优点(例如SNR增加,垂直区域,分辨率损失和强度偏置的噪声减少),其中具有所提出的组合方法和仅限小波和仅曲线滤波技术。这三种方法导致了SNR的增加。然而,关于定量准确性,小波和曲线仅被去噪地位导致强度和比提出的组合算法的强度和对比度更大的偏差。这种方法可以成为当前在高斯滤波器等临床系统中的图像重建之后使用的滤波器的替代解决方案。

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