首页> 外文会议>Conference on Image Reconstruction from Incomplete Data II; Jul 8-9, 2002; Seattle, Washington, USA >Comparison of Reconstruction Algorithms for Images from Sparse-Aperture Systems
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Comparison of Reconstruction Algorithms for Images from Sparse-Aperture Systems

机译:稀疏光圈系统图像重建算法的比较

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Telescopes and imaging interferometers with sparsely filled apertures can be lighter weight and less expensive than conventional filled-aperture telescopes. However, their greatly reduced MTF's cause significant blurring and loss of contrast in the collected imagery. Image reconstruction algorithms can correct the blurring completely when the signal-to-noise ratio (SNR) is high, but only partially when the SNR is low. This paper compares both linear (Wiener) and nonlinear (iterative maximum likelihood) algorithms for image reconstruction under a variety of circumstances. These include high and low SNR, Gaussian noise and Poisson-noise dominated, and a variety of aperture configurations and degrees of sparsity. The quality metric employed to compare algorithms is image utility as quantified by the National Imagery Interpretability Rating Scale (NIIRS). On balance, a linear reconstruction algorithm with a power-law power-spectrum estimate performed best.
机译:与传统的填充孔径望远镜相比,孔径稀疏的望远镜和成像干涉仪的重量更轻且成本更低。但是,它们大大降低的MTF导致所收集图像中明显的模糊和对比度损失。当信噪比(SNR)高时,图像重建算法可以完全校正模糊,而在SNR低时,只能部分校正模糊。本文比较了在各种情况下用于图像重建的线性(维纳)算法和非线性(最大迭代似然)算法。这些包括高和低SNR,高斯噪声和泊松噪声为主,以及各种孔径配置和稀疏度。用于比较算法的质量度量是图像实用程序,由“国家图像可解释性等级量表”(NIIRS)进行了量化。总而言之,具有幂律功率谱估计的线性重建算法表现最佳。

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