光学学报, 2023, 43 (15): 1511001, 网络出版: 2023-07-28   

散斑及压缩计算成像研究进展 下载: 993次特邀综述

Advances in Speckle and Compressive Computational Imaging
作者单位
北京理工大学光电学院光电成像技术与系统教育部重点实验室,北京 100081
摘要
计算成像是集光学、计算科学、信息科学于一体的新兴交叉领域技术。该技术基于多维光场调控与解调的信息传输原理,利用前端光电成像系统与后端数据处理的“一体化设计”,解决光场信息维度与探测维度不匹配的问题,从而有效提升感知能力和探测性能,目前已成为光电成像领域的前沿方向。其中,散斑成像能够通过调控散斑场来实现强散射光成像,打破了光散射妨碍成像的传统观点;空域和时域压缩计算成像通过对光场信号的编码,能够突破半导体工艺、大量数据传递与处理对高分辨率、高速探测器的限制;压缩计算光谱成像结合光学调制、复用探测与计算重构,解决了传统光谱成像中系统复杂、数据采集效率低和分辨率受限的问题。详细介绍这3类计算成像模式的原理方法和最新研究进展,分析当前尚存的问题,并对这类技术的未来发展方向进行了展望。
Abstract
Significance

This study reports several typical advances in three categories of computational imaging techniques based on multidimensional optical field manipulation: speckle imaging, spatial and temporal compressive imaging, and compressive computational spectral imaging. Additionally, existing problems and future research prospects are analyzed and discussed herein.

High-quality imaging through scattering media has crucial applications in biomedicine, astronomy, remote sensing, traffic safety, etc. Object photons traveling through a scattering medium can be classified as ballistic, snake, or diffusive photons based on the degree of deviation from their initial propagation directions. Ballistic photons can maintain their initial directions and retain undistorted object information. Using gated ballistic photons, optical coherence tomography, multiphoton microscopy, and confocal microscopy have been employed to successfully image objects hidden behind scattering media. However, in the presence of a strong scattering medium, all incident photons become diffusive after multiple scatterings and form a speckle pattern. Hence, the abovementioned techniques based on gated ballistic photons fail to image hidden objects. Therefore, the speckle imaging technology was developed to overcome this limitation. This technology involves three main steps: first, establishing a physical model of speckle formation; second, measuring and statistically analyzing the speckle light field; and finally, computationally reconstructing the hidden objects.

An imaging system with high spatial and temporal resolution can obtain rich spatial and motion details of high-speed moving scenes. Improvement in spatial and temporal resolutions depends on hardware-performance improvement, including attaining high resolution and low noise in a detector array and satisfactory optical design. However, owing to the limitations in the development of semiconductors and manufacturing technologies, manufacturing a high-performance detector is difficult and costly. Additionally, the huge volume of data collected using an imaging system mandates strict requirements for read-out circuits and back-end data processing platforms. Moreover, miniaturization of the system becomes a general concern that conflicts with these high-performance requirements. Hence, further improvement in the performance of imaging systems cannot be realized based solely on hardware improvement. Compressive imaging is an imaging technology based on the compressed sensing principle and development in computer science, which realizes signal coding and compression simultaneously. Combined with back-end reconstruction algorithms, compressive imaging greatly improves the performance of an imaging system and is widely used in various imaging applications.

Spectral imaging technology combines imaging and spectral technologies; thus, this technology can obtain the spatial and spectral information of an object simultaneously. Compared with traditional imaging technologies, the spectral imaging technology possesses a remarkable advantage of sensing information from a multidimensional optical field. By analyzing spectral images, highly detailed target information can be obtained, which is helpful for target recognition as well as substance detection and classification. With the development of compressed sensing theory, a new type of computational imaging technology termed as coded aperture snapshot spectral imaging (CASSI) was proposed. Subsequently, CASSI has become an advanced research topic in the field of imaging. CASSI integrates optical modulation, multiplexing detection, and numerical reconstruction algorithm to address the issues of imaging complex systems, low efficiency of data acquisition, and limited resolution in traditional snapshot spectral imaging technologies. In future, CASSI can play an important role in agriculture, military, biomedicine, and other fields, realizing fast and accurate spectral imaging approaches using intelligent perception capability.

Progress

The speckle correlation imaging method proposed by Bertolotti et al. introduced the concept of speckle imaging. They analyzed the autocorrelation of speckle images captured under different laser illumination angles and subsequently achieved noninvasive reconstruction of objects with phase retrieval. Katz et al. simplified the speckle imaging system using incoherent light illumination and then achieved reconstruction using a single speckle image. Since then, substantial progress has been observed in speckle imaging technology, pertaining to improving accuracy and scene applicability, expanding the imaging field of view and depth of field, and enhancing the ability of the technology to decode objects' optical field parameters, thus becoming a highly researched topic in computational imaging. This study introduces our primary research results regarding key technologies related to speckle imaging, including recursion-driven bispectral imaging with respect to dynamic scattering scenes, learning to image and track moving objects through scattering media via speckle difference, and imaging through scattering media under ambient-light interference.

Developing high resolution detectors in the infrared band is considerably difficult compared with developing detectors in the visible band. Therefore, herein, we focused on studying compressive imaging in infrared band. The optical hardware systems and reconstruction algorithms related to spatial and temporal infrared compressive imaging are introduced and our related research is introduced in this study. We set up a mediumwave infraredblock compressive imaging system (Fig.9) and discussed obtained results herein, including reducing block effect, removing stray light, limiting nonuniform (Fig.10), improving real-time performance (Fig.11). For the back-end processing of measured data, we reviewed the traditional methods and proposed several reconstruction algorithms based on deep learning in this study. With respect to spatial compressive imaging, we designed Meta-TR, which combined meta-attention and transformer (Fig.12); furthermore, we designed a multiframe reconstruction network named Joinput-CiNet (Fig.13). Moreover, we introduced a novel version of a 3D-TCI network to achieve temporal reconstruction (Fig.14). Moreover, the spatial–temporal compressive imaging method, which combines temporal and spatial compression, is briefly discussed herein (Fig.16).

Furthermore, we reviewed relevant studies in the field of compressive computational spectral imaging that covered the development of color-coded aperture and use of the latest transformer network to improve the image-reconstruction quality. Additionally, we summarized our research achievements. First, we proposed an optical-axis-shift CASSI system based on a digital micromirror device, which can effectively suppress off-axis aberration (Fig.17). Second, we proposed a 3D coded convolutional neural network capable of realizing hyperspectral image classification (Fig.19) based on the established dual-disperser CASSI system (Fig.18). Subsequently, we proposed a hexagonal, blue-noise, complementary-coded aperture (Fig.20) and spatial-target adaptive-coded aperture (Fig.21) for improving the perceptual efficiency of CASSI systems. Finally, to enhance the quality of reconstructed spectral images, we proposed a fast alternating minimization algorithm based on the sparsity and deep image priors (Fama-SDIP) (Fig.22).

Conclusions and Prospects

We achieved remarkable results in three categories of computational imaging techniques based on multidimensional optical field manipulation: speckle imaging, spatial and temporal compressive imaging, and compressive computational spectral imaging. However, these techniques still face numerous challenges in terms of practical applications, including realizing a compact system design, mounting and error calibration, coded aperture preparation, fast and accurate reconstruction of optical fields, and lightweight design of networks. In future, researchers can combine the field of micro-/nano-optics with computational imaging mechanisms to further improve the manipulation ability of imaging systems. Moreover, artificial intelligence can be used to improve the scope of practical application of imaging systems.

王霞, 马旭, 柯钧, 贺思, 郝晓文, 雷景文, 马凯. 散斑及压缩计算成像研究进展[J]. 光学学报, 2023, 43(15): 1511001. Xia Wang, Xu Ma, Jun Ke, Si He, Xiaowen Hao, Jingwen Lei, Kai Ma. Advances in Speckle and Compressive Computational Imaging[J]. Acta Optica Sinica, 2023, 43(15): 1511001.

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