Image reconstruction from incomplete measurements: Maximum Entropy versus L1 norm optimization

M. Petrovici, C. Damian, D. Coltuc
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引用次数: 2

Abstract

Maximum Entropy (MaxEnt) and Compressive Sensing (CS) are two paradigms that allow good image reconstruction from a low number of measurements. MaxEnt is based on the maximization of entropy while CS uses the minimization of l1 norm of image sparse representation. In this paper, MaxEnt and CS are tested in conditions simulating the acquisition by Single Pixel Camera. The set of measurements is obtained by non-uniform sampling (NUS) of the image. Before sampling, the images are blurred with a Gaussian kernel in order to simulate the camera Point Spread Function (PSF). The results show that both CS and MaxEnt reconstruct above the quality of blurred image and that, generally, CS performs better than MaxEnt. The impact of sparsity and camera PSF are discussed. The sparsity has higher influence in CS than in MaxEnt while for the PSF, it is the opposite: CS does not seem to be sensitive to the PSF size. The number of measured samples is also discussed. For more than 50% measured pixels, MaxEnt improves only a few the image quality while CS increases constantly the image PSNR.
不完全测量的图像重建:最大熵与L1范数优化
最大熵(MaxEnt)和压缩感知(CS)是允许从少量测量中进行良好图像重建的两种范例。MaxEnt基于熵的最大化,而CS使用图像稀疏表示的l1范数的最小化。本文在模拟单像素相机采集的条件下,对MaxEnt和CS进行了测试。该测量集是通过图像的非均匀采样(NUS)获得的。在采样前,对图像进行高斯核模糊处理,模拟相机点扩散函数(PSF)。结果表明,CS和MaxEnt重构的图像质量都高于模糊图像的质量,总体上CS优于MaxEnt。讨论了稀疏度和相机PSF的影响。稀疏度在CS中的影响比在MaxEnt中更大,而对于PSF,则相反:CS似乎对PSF的大小不敏感。还讨论了测量样品的数量。对于超过50%的测量像素,MaxEnt仅提高了少量图像质量,而CS则不断提高图像的PSNR。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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