Title of article
LSF restoration by means of a neural network
Author/Authors
Burstein، نويسنده , , P and Ingman، نويسنده , , D، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 1999
Pages
13
From page
551
To page
563
Abstract
The LSF restoration problem is written as a Maximum Entropy one, where the constraint on the restoration energy is dictated by the “Discrepancy Principle”. The ME solution is found by means of a continuous-Hopfield neural network which reduces the energy of the output misfit, and maximizes the restoration entropy at the same time. A positive learning parameter controls the constraint compliance. Prior knowledge insertion into the netʹs algorithm, such as prior LSF models, upper bounds, etc. is presented. Simulations, both with computer generated and experimental data are carried out. The results are compared to those of the Least Squares method. Sensitivity of constraint fulfillment is analyzed.
Keywords
entropy , prior knowledge , Radiography , Restoration energy , LSF restoration , Maximum entropy problem , Continuous-Hopfield net
Journal title
Nuclear Instruments and Methods in Physics Research Section A
Serial Year
1999
Journal title
Nuclear Instruments and Methods in Physics Research Section A
Record number
2181114
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