论文标题

深度图像无效的高速光声显微镜

Deep image prior for undersampling high-speed photoacoustic microscopy

论文作者

Vu, Tri, DiSpirito III, Anthony, Li, Daiwei, Zhang, Zixuan, Zhu, Xiaoyi, Chen, Maomao, Jiang, Laiming, Zhang, Dong, Luo, Jianwen, Zhang, Yu Shrike, Zhou, Qifa, Horstmeyer, Roarke, Yao, Junjie

论文摘要

光声显微镜(PAM)是一种结合光和声音的新兴成像方法。然而,受激光的重复率的限制,最先进的高速PAM技术通常会牺牲空间采样密度(即,不足度采样),以提高大型视野的成像速度。深度学习(DL)方法最近已用于改善稀疏采样的PAM图像。但是,这些方法通常需要耗时的预训练和大型培训数据集,并具有地面真相。在这里,我们建议使用深图像先验(DIP)来提高采样不采样的PAM图像的图像质量。与其他DL方法不同,DIP既不需要预训练,也不需要完全采样的地面真理,从而可以在各种成像目标上进行灵活而快速的实现。我们的结果表明,在高速PAM上完全采样的像素的PAM图像的大幅改进。我们的方法的表现优于插值,具有预训练的监督DL方法具有竞争力,并且很容易被转化为其他高速,不足的采样成像。

Photoacoustic microscopy (PAM) is an emerging imaging method combining light and sound. However, limited by the laser's repetition rate, state-of-the-art high-speed PAM technology often sacrifices spatial sampling density (i.e., undersampling) for increased imaging speed over a large field-of-view. Deep learning (DL) methods have recently been used to improve sparsely sampled PAM images; however, these methods often require time-consuming pre-training and large training dataset with ground truth. Here, we propose the use of deep image prior (DIP) to improve the image quality of undersampled PAM images. Unlike other DL approaches, DIP requires neither pre-training nor fully-sampled ground truth, enabling its flexible and fast implementation on various imaging targets. Our results have demonstrated substantial improvement in PAM images with as few as 1.4$\%$ of the fully sampled pixels on high-speed PAM. Our approach outperforms interpolation, is competitive with pre-trained supervised DL method, and is readily translated to other high-speed, undersampling imaging modalities.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源