Deep learning-based infrared imaging degradation model identification and super-resolution reconstruction

被引:2
作者
Cao J. [1 ,2 ,3 ,4 ]
Ding Q. [5 ]
Zou D. [6 ]
Qin H. [6 ]
Luo H. [1 ,2 ,3 ]
机构
[1] Key Laboratory of Opto-Electronic Information Processing, Chinese Academy of Sciences, Shenyang
[2] Shenyang Institute of Automation, Chinese Academy of Sciences, Shenyang
[3] Institutes for Robotics and Intelligent Manufacturing, Chinese Academy of Sciences, Shenyang
[4] University of Chinese Academy of Sciences, Beijing
[5] Space Star Technology Co., Ltd., Beijing
[6] The Third Military Representative Office of the Air Force Equipment Department in Shenyang, Shenyang
来源
Hongwai yu Jiguang Gongcheng/Infrared and Laser Engineering | 2024年 / 53卷 / 05期
关键词
blur kernel estimation; degradation model identification; infrared image; iterative optimization; spatially variant blur; super-resolution;
D O I
10.3788/IRLA20240049
中图分类号
学科分类号
摘要
Objective The limited resolution of infrared devices, constrained by cost and manufacturing technology, remains a challenge. While deep learning-based single image super-resolution (SISR) has shown promise in enhancing image resolution, its application in real-world infrared images is hindered by the complexity of actual degradation, including spatial non-uniform blur caused by optical aberration and assembly error, as well as variations in the blur kernel due to environmental temperature changes. A deep learning-based approach for infrared imaging degradation model identification and super-resolution reconstruction is proposed to tackle these challenges. This method entails solving the degradation model using a convolutional neural network to describe the evolution of blur kernels, along with a super-resolution reconstruction method that adheres to the constraints of the degradation model and incorporates online learning of degradation parameters. Methods Images of calibration targets are captured using an infrared camera placed in a high and low temperature chamber, along with a portable target simulator placed outside it (Fig.1-2). These images are utilized to calibrate the blur kernels. A convolutional neural network (CNN) is employed to construct a model that characterizes the relationship between blur kernel, pixel coordinate, and operating temperature (Fig.3). The model is trained using the calibrated blur kernels. Additionally, a super-resolution network is developed and trained (Fig.4). The operating temperature is initially estimated using the low-resolution image. Next, the initial blur kernels are estimated by inputting the operating temperature into the kernel model. Subsequently, super-resolution reconstruction is conducted based on the estimated blur kernels, and the reconstructed image is utilized to refine the operating temperature and blur kernel estimation. Iterative processes improve the accuracy of blur kernel estimation, leading to enhanced reconstruction outcomes. Results and Discussions The blur kernels of the infrared imaging system exhibit significant variation in response to temperature changes and spatial locations (Fig.6). The trained blur kernel model effectively predicts blur kernels using temperature and pixel coordinate inputs (Fig.7). The average PSNR between predicted and actual blur kernels across different operational temperatures is consistently high, with a minimum of 32.2 dB and an average of 37.1 dB, indicating precise predictions (Fig.8). The calibration and modeling of blur kernels provide valuable prior information for super-resolution reconstruction, resulting in enhanced reconstruction outcomes. Consequently, the proposed algorithm produces visually appealing results with improved detail (Fig.10-11) and enhances objective quality evaluation metrics such as the natural image quality evaluator (NIQE), perception-based image quality evaluator (PIQE), and blind/referenceless image spatial quality evaluator (BRISQUE) (Tab.1). Conclusions A novel approach is proposed for infrared super-resolution imaging, including degradation model identification and iterative super-resolution reconstruction. The degradation model is based on a convolutional neural network and is solved using offline calibration data. It can predict blur kernels across various temperatures and spatial positions, reducing the need for extensive calibration work. Online degradation parameter correction is achieved through an iterative optimization network alternating between estimating the blur kernel and reconstructing the super-resolution image. By leveraging the degradation model, the complex high-dimensional blur kernel estimation problem is simplified into a low-dimensional operating temperature estimation problem, streamlining the solution process. Through iterations, the accuracy of blur kernel estimation improves, leading to superior super-resolution reconstruction outcomes. Experimental results demonstrate that calibrating and modeling blur kernels enhance prior information for super-resolution reconstruction, yielding superior results. Additionally, the proposed method adapts to a wider temperature range, reducing the stringency of athermalization design requirements for infrared optical systems. © 2024 Chinese Society of Astronautics. All rights reserved.
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相关论文
共 19 条
[11]  
Gu J, Lu H, Zuo W, Et al., Blind super-resolution with iterative kernel correction, Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, pp. 1604-1613, (2019)
[12]  
Liang J, Sun G, Zhang K, Et al., Mutual affine network for spatially variant kernel estimation in blind image super-resolution, Proceedings of the IEEE/CVF International Conference on Computer Vision, pp. 4096-4105, (2021)
[13]  
Chen X, Zhang J, Xu C, Et al., Better “CMOS” produces clearer images: learning space-variant blur estimation for blind image super-resolution, 2023 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), pp. 1651-1661, (2023)
[14]  
Kim S, Sim H, Kim M, KOALAnet: Blind super-resolution using kernel-oriented adaptive local adjustment, 2021 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), pp. 10606-10615, (2021)
[15]  
Joshi N, Szeliski R, Kriegman D J., PSF estimation using sharp edge prediction, 2008 IEEE Conference on Computer Vision and Pattern Recognition, pp. 1-8, (2008)
[16]  
Kee E, Paris S, Chen S, Et al., Modeling and removing spatially-varying optical blur, 2011 IEEE International Conference on Computational Photography (ICCP), pp. 1-8, (2011)
[17]  
Cao Junfeng, Ding Qinghai, Luo Haibo, Infrared image Super-resolution based on spatially-variant blur kernel calibration, Infrared and Laser Engineering, 53, 2, (2024)
[18]  
Olivieri M, Pieri S, Romoli A., Analysis of defocusing thermal effects in optical systems, Optical Instrumentation and Systems Design, 2774, (1996)
[19]  
Zhang K, Gool L V, Timofte R., Deep unfolding network for image super-resolution, Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, pp. 3217-3226, (2020)