Zhou Chang, Cao Jie, Hao Qun, Cui Huan, Yao Haifeng, Ning Yaqian, Zhang Haoyu, Shi Moudan
Opt Express. 2024 Feb 26;32(5):7119-7135. doi: 10.1364/OE.511452.
Ghost imaging (GI) has been widely used in the applications including spectral imaging, 3D imaging, and other fields due to its advantages of broad spectrum and anti-interference. Nevertheless, the restricted sampling efficiency of ghost imaging has impeded its extensive application. In this work, we propose a novel foveated pattern affine transformer method based on deep learning for efficient GI. This method enables adaptive selection of the region of interest (ROI) by combining the proposed retina affine transformer (RAT) network with minimal computational and parametric quantities with the foveated speckle pattern. For single-target and multi-target scenarios, we propose RAT and RNN-RAT (recurrent neural network), respectively. The RAT network enables an adaptive alteration of the fovea of the variable foveated patterns spot to different sizes and positions of the target by predicting the affine matrix with a minor number of parameters for efficient GI. In addition, we integrate a recurrent neural network into the proposed RAT to form an RNN-RAT model, which is capable of performing multi-target ROI detection. Simulations and experimental results show that the method can achieve ROI localization and pattern generation in 0.358 ms, which is a 1 × 10 efficiency improvement compared with the previous methods and improving the image quality of ROI by more than 4 dB. This approach not only improves its overall applicability but also enhances the reconstruction quality of ROI. This creates additional opportunities for real-time GI.
鬼成像(GI)因其具有光谱范围广和抗干扰等优点,已在光谱成像、三维成像等领域得到广泛应用。然而,鬼成像有限的采样效率阻碍了其广泛应用。在这项工作中,我们提出了一种基于深度学习的新型中心凹图案仿射变换方法,以实现高效的鬼成像。该方法通过将所提出的视网膜仿射变换(RAT)网络与最少的计算量和参数量相结合,利用中心凹散斑图案实现对感兴趣区域(ROI)的自适应选择。对于单目标和多目标场景,我们分别提出了RAT和RNN - RAT(递归神经网络)。RAT网络通过预测仿射矩阵,以少量参数实现对可变中心凹图案光斑的中心凹进行自适应改变,使其适应目标的不同大小和位置,从而实现高效的鬼成像。此外,我们将递归神经网络集成到所提出的RAT中,形成RNN - RAT模型,该模型能够进行多目标ROI检测。仿真和实验结果表明,该方法能够在0.358毫秒内实现ROI定位和图案生成,与先前方法相比效率提高了1×10倍,且ROI的图像质量提高了4分贝以上。这种方法不仅提高了其整体适用性,还提升了ROI的重建质量。这为实时鬼成像创造了更多机会。