Yu Chen, Liu Ying, Li Linhan, Zhou Guangpeng, Dang Boshi, Du Jie, Ma Junlin, Zhang Site
Changchun Institute of Optics, Fine Mechanics and Physics, Chinese Academy of Sciences, Changchun 130033, China.
University of Chinese Academy of Sciences, Beijing 100049, China.
Sensors (Basel). 2025 May 20;25(10):3221. doi: 10.3390/s25103221.
Diffraction significantly deteriorates the quality of the laser image, causing severe degradation that undermines the theoretical performance parameters of the autofocus system. In this paper, we conduct a comprehensive analysis of the non-uniform features of the images. To enhance the imaging quality of each individual image, we propose a de-diffraction algorithm based on gradient iteration. This algorithm is capable of rapidly removing the interference spots resulting from diffraction and restoring the distorted laser spots. By doing so, it effectively eliminates the inevitable reduction in the autofocus resolution and focusing accuracy caused by diffraction. Furthermore, the proposed calculation model for the intra-localisation interval significantly improves the convergence of the iterative calculation process. Through experiments, it has been verified that, under the same conditions, the interlayer resolution between the reflective surfaces of the samples processed using this algorithm is increased to a quarter of the original value. This remarkable improvement in resolution, which far exceeds the microscope's inherent resolution, demonstrates that the algorithm successfully achieves super-resolution for the microscope.
衍射会严重降低激光图像的质量,导致严重退化,破坏自动对焦系统的理论性能参数。在本文中,我们对图像的非均匀特征进行了全面分析。为了提高每个单独图像的成像质量,我们提出了一种基于梯度迭代的去衍射算法。该算法能够快速去除衍射产生的干扰斑点,并恢复失真的激光光斑。通过这样做,它有效地消除了衍射导致的自动对焦分辨率和聚焦精度不可避免的降低。此外,所提出的局部定位区间计算模型显著提高了迭代计算过程的收敛性。通过实验验证,在相同条件下,使用该算法处理的样品反射面之间的层间分辨率提高到原来的四分之一。这种分辨率的显著提高远远超过了显微镜的固有分辨率,表明该算法成功地实现了显微镜的超分辨率。