鲍雪晶, 戴仕杰, 郭澄, 吕寿丹, 沈成, 刘正君. 基于插值的共焦显微镜非线性畸变失真图像校正[J]. 红外与激光工程, 2017, 46(11): 1103006-1103006(7). DOI: 10.3788/IRLA201746.1103006
引用本文: 鲍雪晶, 戴仕杰, 郭澄, 吕寿丹, 沈成, 刘正君. 基于插值的共焦显微镜非线性畸变失真图像校正[J]. 红外与激光工程, 2017, 46(11): 1103006-1103006(7). DOI: 10.3788/IRLA201746.1103006
Bao Xuejing, Dai Shijie, Guo Cheng, Lv Shoudan, Shen Cheng, Liu Zhengjun. Nonlinear distortion image correction from confocal microscope based on interpolation[J]. Infrared and Laser Engineering, 2017, 46(11): 1103006-1103006(7). DOI: 10.3788/IRLA201746.1103006
Citation: Bao Xuejing, Dai Shijie, Guo Cheng, Lv Shoudan, Shen Cheng, Liu Zhengjun. Nonlinear distortion image correction from confocal microscope based on interpolation[J]. Infrared and Laser Engineering, 2017, 46(11): 1103006-1103006(7). DOI: 10.3788/IRLA201746.1103006

基于插值的共焦显微镜非线性畸变失真图像校正

Nonlinear distortion image correction from confocal microscope based on interpolation

  • 摘要: 通过分析共焦显微镜在成像过程中因光学元件等位置偏差造成会聚焦点与针孔位置发生偏差而出现的图像畸变现象,提出一种位置校正函数进行插值运算对非线性畸变失真图像进行校正和复原。应用基于机器学习的卷积神经网络技术提高位置校正后退化图像质量,在对单幅图像进行训练时,采用5层卷积和下采样加入池化层以降低网络参数的数量级。结果表明池化层可显著提高运算速度,同时使图片的清晰度得到显著提升。

     

    Abstract: Through the analysis of confocal microscope in the imaging process caused by the position, such as optical hardware deviation converge and pinhole position deviation occurring in image distortion phenomenon, a position correction function into interpolation algorithm was proposed for nonlinear distortion image correction and rehabilitation. The convolution neural network based on machine learning technology was applied to improve the quality of image position correction after degradation when training a single image. The five layers of convolution and down sampling to join pooling layer were employed to reduce the order of magnitude in network parameters. The results show that the pooling layer can improve the operation speed significantly and improve the sharpness of the image.

     

/

返回文章
返回