Paper
9 October 2008 Quantitative performance evaluation of a blurring restoration algorithm based on principal component analysis
Author Affiliations +
Proceedings Volume 7108, Optics in Atmospheric Propagation and Adaptive Systems XI; 71080L (2008) https://doi.org/10.1117/12.800157
Event: SPIE Remote Sensing, 2008, Cardiff, Wales, United Kingdom
Abstract
In the field on blind image deconvolution a new promising algorithm, based on the Principal Component Analysis (PCA), has been recently proposed in the literature. The main advantages of the algorithm are the following: computational complexity is generally lower than other deconvolution techniques (e.g., the widely used Iterative Blind Deconvolution - IBD - method); it is robust to white noise; only the blurring point spread function support is required to perform the single-observation deconvolution (i.e., a single degraded observation of a scene is available), while the multiple-observation one is completely unsupervised (i.e., multiple degraded observations of a scene are available). The effectiveness of the PCA-based restoration algorithm has been only confirmed by visual inspection and, to the best of our knowledge, no objective image quality assessment has been performed. In this paper a generalization of the original algorithm version is proposed; then the previous unexplored issue is considered and the achieved results are compared with that of the IBD method, which is used as benchmark.
© (2008) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Mario Greco, Claudia Huebner, and Gabriele Marchi "Quantitative performance evaluation of a blurring restoration algorithm based on principal component analysis", Proc. SPIE 7108, Optics in Atmospheric Propagation and Adaptive Systems XI, 71080L (9 October 2008); https://doi.org/10.1117/12.800157
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KEYWORDS
Image quality

Principal component analysis

Deconvolution

Image restoration

Point spread functions

Atmospheric turbulence

Image filtering

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