Haoyu Zhou, Yan Song, Zhiming Yao, Dongwei Hei, Yang Li, Baojun Duan, Yinong Liu, Liang Sheng
{"title":"Image reconstruction for compressed ultrafast photography based on manifold learning and the alternating direction method of multipliers","authors":"Haoyu Zhou, Yan Song, Zhiming Yao, Dongwei Hei, Yang Li, Baojun Duan, Yinong Liu, Liang Sheng","doi":"10.1364/josaa.527500","DOIUrl":null,"url":null,"abstract":"Compressed ultrafast photography (CUP) is a high-speed imaging technique with a frame rate of up to ten trillion frames per second (fps) and a sequence depth of hundreds of frames. This technique is a powerful tool for investigating ultrafast processes. However, since the reconstruction process is an ill-posed problem, the image reconstruction will be more difficult with the increase of the number of reconstruction frames and the number of pixels of each reconstruction frame. Recently, various deep-learning-based regularization terms have been used to improve the reconstruction quality of CUP, but most of them require extensive training and are not generalizable. In this paper, we propose a reconstruction algorithm for CUP based on the manifold learning and the alternating direction method of multipliers framework (ML-ADMM), which is an unsupervised learning algorithm. This algorithm improves the reconstruction stability and quality by initializing the iterative process with manifold modeling in embedded space (MMES) and processing the image obtained from each ADMM iterative with a nonlinear modeling based on manifold learning. The numerical simulation and experiment results indicate that most of the spatial details can be recovered and local noise can be eliminated. In addition, a high-spatiotemporal-resolution video sequence can be acquired. Therefore, this method can be applied for CUP with ultrafast imaging applications in the future.","PeriodicalId":501620,"journal":{"name":"Journal of the Optical Society of America A","volume":"295 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-06-28","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Journal of the Optical Society of America A","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1364/josaa.527500","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Compressed ultrafast photography (CUP) is a high-speed imaging technique with a frame rate of up to ten trillion frames per second (fps) and a sequence depth of hundreds of frames. This technique is a powerful tool for investigating ultrafast processes. However, since the reconstruction process is an ill-posed problem, the image reconstruction will be more difficult with the increase of the number of reconstruction frames and the number of pixels of each reconstruction frame. Recently, various deep-learning-based regularization terms have been used to improve the reconstruction quality of CUP, but most of them require extensive training and are not generalizable. In this paper, we propose a reconstruction algorithm for CUP based on the manifold learning and the alternating direction method of multipliers framework (ML-ADMM), which is an unsupervised learning algorithm. This algorithm improves the reconstruction stability and quality by initializing the iterative process with manifold modeling in embedded space (MMES) and processing the image obtained from each ADMM iterative with a nonlinear modeling based on manifold learning. The numerical simulation and experiment results indicate that most of the spatial details can be recovered and local noise can be eliminated. In addition, a high-spatiotemporal-resolution video sequence can be acquired. Therefore, this method can be applied for CUP with ultrafast imaging applications in the future.
压缩超快摄影(CUP)是一种高速成像技术,帧频高达每秒十万亿帧(fps),序列深度可达数百帧。该技术是研究超快过程的有力工具。然而,由于重构过程是一个难以解决的问题,随着重构帧数和每个重构帧像素数的增加,图像重构的难度也会增加。最近,各种基于深度学习的正则化条件被用来提高 CUP 的重建质量,但它们大多需要大量的训练,而且不具有普适性。本文提出了一种基于流形学习和乘数交替方向法框架(ML-ADMM)的 CUP 重建算法,这是一种无监督学习算法。该算法通过嵌入空间流形建模(MMES)初始化迭代过程,并利用基于流形学习的非线性建模处理每次 ADMM 迭代得到的图像,从而提高了重建的稳定性和质量。数值模拟和实验结果表明,大部分空间细节可以恢复,局部噪声可以消除。此外,还能获得高时空分辨率的视频序列。因此,这种方法未来可应用于具有超快成像功能的 CUP。