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Normalized iterative denoising ghost imaging based on the adaptive threshold

机译:基于自适应阈值的归一化迭代去噪重影成像

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摘要

An approach for improving ghost imaging (GI) quality is proposed. In this paper, an iteration model based on normalized GI is built through theoretical analysis. An adaptive threshold value is selected in the iteration model. The initial value of the iteration model is estimated as a step to remove the correlated noise. The simulation and experimental results reveal that the proposed strategy reconstructs a better image than traditional and normalized GI, without adding complexity. The NIDGI-AT scheme does not require prior information regarding the object, and can also choose the threshold adaptively. More importantly, the signal-to-noise ratio (SNR) of the reconstructed image is greatly improved. Therefore, this methodology represents another step towards practical real-world applications.
机译:提出了一种提高重影成像(GI)质量的方法。本文通过理论分析,建立了基于归一化GI的迭代模型。在迭代模型中选择自适应阈值。迭代模型的初始值被估计为去除相关噪声的步骤。仿真和实验结果表明,所提策略在不增加复杂性的情况下,重建了比传统和归一化GI更好的图像。NIDGI-AT方案不需要有关对象的先验信息,也可以自适应选择阈值。更重要的是,重建图像的信噪比(SNR)得到了极大的提高。因此,这种方法代表了向实际应用迈出的又一步。

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