Blind coherent modulation imaging using momentum acceleration and sample priors

Yishi Shi, Yiwen Gao, Junhao Zhang, Dongyu Yang, Wenjin Lyu, Tianhao Ruan
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Abstract

Coherent Modulation Imaging (CMI) stands out as a novel lensless imaging technique with notable advantages such as rapid convergence and single-shot capability. Nevertheless, conventional CMI implementations necessitate an additional step to acquire prior information about the modulator function, introducing complexity and reliance on other imaging techniques. Previous attempts to mitigate the requirement for precise modulator information using diverse objects have encountered slow convergence speeds. Here, we present an improved CMI algorithm, termed as blind CMI, which achieves blind recovery without prior knowledge of the modulator. This is achieved by leveraging sample priors and incorporating momentum acceleration. We validate our method through numerical simulations and optical experiments, demonstrating that the proposed blind CMI outperforms other state-of-the-art methods in terms of both convergence speed and reconstruction quality.
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利用动量加速度和样本先验进行盲相干调制成像
相干调制成像(CMI)是一种新型的无镜头成像技术,具有快速收敛和单次拍摄能力等显著优势。然而,传统的相干调制成像技术需要额外的步骤来获取有关调制器功能的先验信息,这就带来了复杂性和对其他成像技术的依赖。以前尝试使用不同的对象来降低对精确调制器信息的要求,但收敛速度很慢。在这里,我们提出了一种改进的 CMI 算法,称为盲 CMI,它可以在不预先了解调制器的情况下实现盲恢复。这是通过利用样本先验并结合动量加速来实现的。我们通过数值模拟和光学实验验证了我们的方法,证明所提出的盲 CMI 在收敛速度和重建质量方面都优于其他最先进的方法。
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