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Dimensionality reduced plug and play priors for improving photoacoustic tomographic imaging with limited noisy data

机译:维数减少了塞子和播放前沿用于改善具有有限噪声数据的光声断层图像

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摘要

The reconstruction methods for solving the ill-posed inverse problem of photoacoustic tomography with limited noisy data are iterative in nature to provide accurate solutions. These methods performance is highly affected by the noise level in the photoacoustic data. A singular value decomposition (SVD) based plug and play priors method for solving photoacoustic inverse problem was proposed in this work to provide robustness to noise in the data. The method was shown to be superior as compared to total variation regularization, basis pursuit deconvolution and Lanczos Tikhonov based regularization and provided improved performance in case of noisy data. The numerical and experimental cases show that the improvement can be as high as 8.1 dB in signal to noise ratio of the reconstructed image and 67.98% in root mean square error in comparison to the state of the art methods.
机译:解决具有有限噪声数据的光声断层扫描的不良反问题的重建方法是迭代的,以提供准确的解决方案。这些方法性能受到光声数据中的噪声水平的影响。在这项工作中提出了一种奇异值分解(SVD)用于解决光声反向问题的播放前缀方法,为数据中的噪声提供鲁棒性。与总变化正则化的方法相比,该方法是优越的,基于追踪解卷积和基于Lanczos Tikhonov的正则化,并在嘈杂的数据情况下提供了改进的性能。数值和实验案例表明,与现有技术的状态相比,改善在重建图像的信号与噪声比中的信噪比高达8.1dB,而且与现有技术的状态相比,均方根误差67.98%。

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