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首页> 外文期刊>IEEE Transactions on Medical Imaging >Multispectral Photoacoustic Imaging Artifact Removal and Denoising Using Time Series Model-Based Spectral Noise Estimation
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Multispectral Photoacoustic Imaging Artifact Removal and Denoising Using Time Series Model-Based Spectral Noise Estimation

机译:使用基于时间序列模型的光谱噪声估计进行多光谱光声成像伪像去除和去噪

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摘要

The aim of this study is to solve a problem of denoising and artifact removal from in vivo multispectral photoacoustic imaging when the level of noise is not known a priori. The study analyzes Wiener filtering in Fourier domain when a family of anisotropic shape filters is considered. The unknown noise and signal power spectral densities are estimated using spectral information of images and the autoregressive of the power 1 ( AR(1)) model. Edge preservation is achieved by detecting image edges in the original and the denoised image and superimposing a weighted contribution of the two edge images to the resulting denoised image. The method is tested on multispectral photoacoustic images from simulations, a tissue-mimicking phantom, as well as in vivo imaging of the mouse, with its performance compared against that of the standard Wiener filtering in Fourier domain. The results reveal better denoising and fine details preservation capabilities of the proposed method when compared to that of the standard Wiener filtering in Fourier domain, suggesting that this could be a useful denoising technique for other multispectral photoacoustic studies.
机译:这项研究的目的是解决先验未知噪声水平下体内多光谱光声成像的降噪和伪影去除问题。该研究在考虑了各向异性形状滤波器族的情况下分析了傅立叶域中的维纳滤波。使用图像的光谱信息和功率1(AR(1))模型的自回归来估计未知噪声和信号功率谱密度。通过检测原始图像和去噪图像中的图像边缘并将两个边缘图像的加权贡献叠加到最终的去噪图像中,可以实现边缘保留。该方法在模拟的多光谱光声图像,模拟组织的幻像以及小鼠的体内成像上进行了测试,其性能与傅立叶域中标准Wiener过滤的性能相比。结果表明,与傅立叶域中的标准Wiener滤波相比,该方法具有更好的去噪和精细的细节保留能力,这表明该方法可用于其他多光谱光声研究的降噪技术。

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