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Beyond maximum entropy: Fractal Pixon-based image reconstructionWe have developed a new Bayesian image reconstruction method that has been shown to be superior to the best implementations of other competing methods, including Goodness-of-Fit methods such as Least-Squares fitting and Lucy-Richardson reconstruction, as well as Maximum Entropy (ME) methods such as those embodied in the MEMSYS algorithms. Our new method is based on the concept of the pixon, the fundamental, indivisible unit of picture information. Use of the pixon concept provides an improved image model, resulting in an image prior which is superior to that of standard ME. Our past work has shown how uniform information content pixons can be used to develop a 'Super-ME' method in which entropy is maximized exactly. Recently, however, we have developed a superior pixon basis for the image, the Fractal Pixon Basis (FPB). Unlike the Uniform Pixon Basis (UPB) of our 'Super-ME' method, the FPB basis is selected by employing fractal dimensional concepts to assess the inherent structure in the image. The Fractal Pixon Basis results in the best image reconstructions to date, superior to both UPB and the best ME reconstructions. In this paper, we review the theory of the UPB and FPB pixon and apply our methodology to the reconstruction of far-infrared imaging of the galaxy M51. The results of our reconstruction are compared to published reconstructions of the same data using the Lucy-Richardson algorithm, the Maximum Correlation Method developed at IPAC, and the MEMSYS ME algorithms. The results show that our reconstructed image has a spatial resolution a factor of two better than best previous methods (and a factor of 20 finer than the width of the point response function), and detects sources two orders of magnitude fainter than other methods.
Document ID
19950015340
Acquisition Source
Legacy CDMS
Document Type
Conference Paper
Authors
Puetter, Richard C.
(California Univ. San Diego, CA, United States)
Pina, R. K.
(California Univ. San Diego, CA, United States)
Date Acquired
September 6, 2013
Publication Date
April 1, 1994
Publication Information
Publication: JPL, Science with High Spatial Resolution Far-Infrared Data
Subject Category
Documentation And Information Science
Accession Number
95N21757
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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