| Literature DB >> 28383503 |
Dongming Li1,2,3, Changming Sun4, Jinhua Yang5, Huan Liu6, Jiaqi Peng7, Lijuan Zhang8,9.
Abstract
An adaptive optics (AO) system provides real-time compensation for atmospheric turbulence. However, an AO image is usually of poor contrast because of the nature of the imaging process, meaning that the image contains information coming from both out-of-focus and in-focus planes of the object, which also brings about a loss in quality. In this paper, we present a robust multi-frame adaptive optics image restoration algorithm via maximum likelihood estimation. Our proposed algorithm uses a maximum likelihood method with image regularization as the basic principle, and constructs the joint log likelihood function for multi-frame AO images based on a Poisson distribution model. To begin with, a frame selection method based on image variance is applied to the observed multi-frame AO images to select images with better quality to improve the convergence of a blind deconvolution algorithm. Then, by combining the imaging conditions and the AO system properties, a point spread function estimation model is built. Finally, we develop our iterative solutions for AO image restoration addressing the joint deconvolution issue. We conduct a number of experiments to evaluate the performances of our proposed algorithm. Experimental results show that our algorithm produces accurate AO image restoration results and outperforms the current state-of-the-art blind deconvolution methods.Entities:
Keywords: adaptive optics; atmospheric turbulence; blind deconvolution; frame selection; image restoration; maximum likelihood
Year: 2017 PMID: 28383503 PMCID: PMC5422058 DOI: 10.3390/s17040785
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
The values of the main parameters for an AO imaging system.
| Parameter Name | Parameter Value | Remarks |
|---|---|---|
| 13 cm | Atmospheric coherence length | |
| 0.72 | Central wavelength | |
| 20 m | Imaging focal length | |
| 1.03 m | Telescope aperture | |
| The size for imaging CCD | 320 × 240 pixel | |
| Size of pixel in CCD | 6.7 | |
| Imaging observation range | 0.7−0.9 | |
| Field of view for imaging system |
Figure 1The original images and the simulated multi-frame degradation images. (a) input images of the datasets; (b) images degraded by the 5 × 5 PSF at SNR of 20 dB under ideal conditions; (c) images degraded by the 5 × 5 PSF at SNR of 25 dB under ideal conditions; (d) images degraded by the 5 × 5 PSF at SNR of 30 dB under ideal conditions.
Figure 2The comparison results of the restored images based on four algorithms (with 300 iterations). (a) by the ML-EM algorithm; (b) by the CPF-adaptive algorithm; (c) by the RT-IEM algorithm; (d) by the VBBD-TV algorithm; (e) by our algorithm with and .
Comparison results on and running time of different restoration algorithms.
| ML-EM | CPF-Adaptive | RT-IEM | VBBD-TV | Our Algorithm | |||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Image Names | Running Time (s) | Running Time (s) | Running Time (s) | Running Time (s) | Running Time (s) | ||||||||||
| House | 0.0034 | 0.0025 | 13.27 | 0.0030 | 13.96 | 0.0023 | 13.87 | 13.90 | |||||||
| Chemical Plant | 0.0069 | 0.0072 | 12.89 | 0.0054 | 13.04 | 0.0051 | 13.12 | 13.21 | |||||||
| The Little Girl | 0.0046 | 0.0039 | 10.54 | 0.0028 | 10.91 | 0.0021 | 10.87 | 11.08 | |||||||
Figure 3Nine frames of binary-star images by an AO system and their variances. (a) Frame 1 with variance ; (b) Frame 2 with variance ; (c) Frame 3 with variance ; (d) Frame 4 with variance ; (e) Frame 5 with variance ; (f) Frame 6 with variance ; (g) Frame 7 with variance ; (h) Frame 8 with variance ; (i) Frame 9 with variance .
Figure 4The restoration results comparison on multi-frames binary-star AO images. (a) restored image by the ML-EM algorithm; (b) restored image by the CPF-adaptive algorithm; (c) restored image by the RT-IEM algorithm; (d) restored image by the VBBD-TV algorithm; (e) restored image by our algorithm; (f) estimated PSF by our algorithm.
The , , and the computation time comparison for the five algorithms for binary-star images restoration (iteration number is 300).
| Algorithms | Computation Time (s) | ||
|---|---|---|---|
| ML-EM | 0.0252 | 6.27 | 9.872 |
| CPF-adaptive | 0.0213 | 6.46 | 12.196 |
| RT-IEM | 0.0210 | 6.51 | 10.983 |
| VBBD-TV | 0.0221 | 6.48 | 8.624 |
| Our algorithm | 0.0204 | 6.69 | 12.257 |
Figure 5The restoration comparisons on and measures versus the iteration number for the five methods. (a) versus the iteration number of the five algorithms; (b) versus the iteration number of the five algorithms.
Figure 6Error on the estimation of the PSF model in the case of a noise free image, and in the cases of photon noises with , , and photons in the whole image, respectively.
Figure 7RMS error on estimation of the PSF initial value for different noise levels (in percentage).