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Performance evaluation of an image estimation method based on principal component analysis (PCA) developed for quantitative depth-variant fluorescence microscopy imaging

机译:基于主成分分析(PCA)的定量深度可变荧光显微镜成像图像估计方法的性能评估

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In 3D wide-field computational microscopy, the image formation process is depth variant due to the refractive index mismatch between the imaging layers. In a previous study, an image estimation method based on a principle component analysis (PCA) model for the representation of the depth varying point spread function (DV-PSF) was presented and demonstrated with noiseless simulations1. In this study, the performance of the PCA-based DV expectation maximization algorithm (PCA-DVEM) was further evaluated with noisy simulations. Different levels of Poisson noise were used in simulated forward images of a synthetic object computed using theoretically-determined DV-PSFs approximated by the PCA approach. The noise influence on the reconstructed images obtained with PCA-DVEM was evaluated. We found that without regularization, the algorithm performs well when the signal-to-noise ratio (SNR) is 14 dB or higher. The relationship of the number of PCA components, B, to the image reconstruction performance was also investigated on both noiseless and noisy simulated data. In both cases, we found that the number of PCA components has limited effect on the image reconstruction performance for B > 1. To reduce computational complexity while maintaining image estimation performance, B = 2 is suggested for processing experimental data.
机译:在3D广域计算显微镜中,由于成像层之间的折射率不匹配,因此图像形成过程是深度变化的。在先前的研究中,提出了一种基于主成分分析(PCA)模型表示深度变化点扩展函数(DV-PSF)的图像估计方法,并通过无噪声仿真进行了演示1。在这项研究中,基于PCA的DV期望最大化算法(PCA-DVEM)的性能通过噪声仿真得到了进一步评估。在通过理论上确定的DV-PSF(通过PCA方法近似)计算出的合成对象的模拟正向图像中,使用了不同级别的泊松噪声。评估了噪声对使用PCA-DVEM获得的重建图像的影响。我们发现,如果不进行正则化处理,则当信噪比(SNR)为14 dB或更高时,该算法性能良好。在无噪声和有噪声的模拟数据上,还研究了PCA分量B的数量与图像重建性能的关系。在这两种情况下,我们发现PCA分量的数量对B> 1的图像重建性能影响有限。为降低计算复杂度,同时保持图像估计性能,建议B = 2用于处理实验数据。

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