Ming-hui CHEN, Fan WANG, Chen-xi ZHANG, et al. Sparse reconstruction of frequency domain OCT image based on compressed sensing[J]. Optics and precision engineering, 2020, 28(1): 189-199.
DOI:
Ming-hui CHEN, Fan WANG, Chen-xi ZHANG, et al. Sparse reconstruction of frequency domain OCT image based on compressed sensing[J]. Optics and precision engineering, 2020, 28(1): 189-199. DOI: 10.3788/OPE.20202801.0189.
Sparse reconstruction of frequency domain OCT image based on compressed sensing
In order to alleviate the pressure of subsequent data acquisition and processing systems caused by high data volume in Frequency Domain Optical Coherence Tomography (FD-OCT)
and to address the contradiction between imaging time and imaging quality
we introduced compressed sensing technology and focus on the reconstruction algorithm in this technology. First
we analyzed the framework of the compressed sensing technology
the frequency domain OCT image was sparsely represented by Discrete Cosine Transform. Next
we used Gaussian random matrices to perform linear observations on OCT images. Then
we studied the principle of FOCUSS (Focal Underdetermined System Solver) reconstruction algorithm
and combined the block idea
introduced the regular term
lp
norm and embed anisotropic smoothing operator in the algorithm. Finally
we combined all the small image blocks to obtain the compressed sensing reconstruction result of the whole frequency domain OCT image. Experimental results indicate that the running time of the improved reconstruction algorithm is shortened from 78.65 s to 1.89 s
and the image block effect is significantly improved
the PSNR value of the reconstructed image is improved by 1.6-2.7 dB
and the SSIM value can reach 0.938 3. Compressed sensing technology can accurately reconstruct the original frequency domain OCT image with a small amount of sampled data. The improved FOCUSS reconstruction algorithm can achieve the balance of frequency domain OCT image reconstruction efficiency and reconstruction quality to some extent.
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