通过Chambolle-Pock启发的深度展开网络增强鬼成像重建

IF 4.6 2区 物理与天体物理 Q1 OPTICS
Chang Zhou , Jie Cao , Haifeng Yao , Huan Cui , Haoyu Zhang , Qun Hao
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引用次数: 0

摘要

鬼影成像是一种创新的成像方式,解决了使用桶形探测器获取稀疏测量数据时的不适定式重建挑战。该技术具有广泛的应用潜力,并在各个领域具有重要的实用价值。近年来,基于压缩感知技术和深度学习方法的深度展开网络(DUNs)由于其自适应的可靠学习能力和固有的可解释性,被广泛应用于鬼像重建。然而,大多数DUNs在低采样率下对图像细节的重建缺乏敏感性,导致复杂图像出现失真和模糊。本文提出了一种基于Chambolle-Pock (CP)算法的深度展开网络的鬼影成像方法。该方法将CP算法与DUNs算法相结合,在减少模型参数数量的同时,提高了重建图像的视觉质量。此外,我们提出了一个多尺度信息映射模块,用于提取和整合不同尺度特征信息的敏感性,从而减轻重建阶段的信息损失,改善图像重建细节。结果表明,该方法可以提高图像的重建质量,特别是在细节恢复方面,并且优于现有的技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced ghost imaging reconstruction via a Chambolle-Pock inspired deep unfolding network
Ghost imaging is an innovative imaging modality that addresses the ill-posed reconstruction challenges associated with the acquisition of sparse measurements using a bucket detector. This technique holds extensive potential for applications and possesses significant practical utility across various domains. Deep unfolding networks (DUNs) based on compressive sensing techniques and deep learning methods have been applied to ghost imaging reconstruction in recent years due to their adaptive solid learning capabilities and inherent interpretability. However, most DUNs exhibit a lack of sensitivity to the reconstruction of image details at low sampling rates, resulting in the introduction of distortion and blurring in complex images. In this paper, we propose a ghost imaging method based on a deep unfolding network inspired by the Chambolle-Pock (CP) Algorithm. This method combines the CP algorithm with DUNs, enhancing the visual quality of reconstructed images while reducing the number of model parameters. Furthermore, we propose a multi-scale information mapping module for extracting and integrating the sensitivity of different scale feature information, thereby mitigating information loss in the reconstruction stage and improving image reconstruction details. The proposed method is shown to enhance the reconstruction quality of images, particularly in terms of detail recovery, and to outperform existing techniques.
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来源期刊
CiteScore
8.50
自引率
10.00%
发文量
1060
审稿时长
3.4 months
期刊介绍: Optics & Laser Technology aims to provide a vehicle for the publication of a broad range of high quality research and review papers in those fields of scientific and engineering research appertaining to the development and application of the technology of optics and lasers. Papers describing original work in these areas are submitted to rigorous refereeing prior to acceptance for publication. The scope of Optics & Laser Technology encompasses, but is not restricted to, the following areas: •development in all types of lasers •developments in optoelectronic devices and photonics •developments in new photonics and optical concepts •developments in conventional optics, optical instruments and components •techniques of optical metrology, including interferometry and optical fibre sensors •LIDAR and other non-contact optical measurement techniques, including optical methods in heat and fluid flow •applications of lasers to materials processing, optical NDT display (including holography) and optical communication •research and development in the field of laser safety including studies of hazards resulting from the applications of lasers (laser safety, hazards of laser fume) •developments in optical computing and optical information processing •developments in new optical materials •developments in new optical characterization methods and techniques •developments in quantum optics •developments in light assisted micro and nanofabrication methods and techniques •developments in nanophotonics and biophotonics •developments in imaging processing and systems
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