Improved Shape Parameter Estimation in K Clutter with Neural Networks and Deep Learning

The discrimination of the clutter interfering signal is a current problem in modern radars’ design, especially in coastal or offshore environments where the histogram of the background signal often displays heavy tails. The statistical characterization of this signal is very important for the cancel...

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Main Authors: José Raúl Fernández Machado, Jesús Concepción Bacallao Vidal
Format: Article
Language:English
Published: Universidad Internacional de La Rioja (UNIR) 2016-06-01
Series:International Journal of Interactive Multimedia and Artificial Intelligence
Subjects:
Online Access:http://www.ijimai.org/journal/node/1176
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spelling doaj-972851f7953d4211ad673fb2a1a9f5322020-11-24T23:40:43ZengUniversidad Internacional de La Rioja (UNIR)International Journal of Interactive Multimedia and Artificial Intelligence1989-16601989-16602016-06-013796310.9781/ijimai.2016.3715ijimai.2016.3715Improved Shape Parameter Estimation in K Clutter with Neural Networks and Deep LearningJosé Raúl Fernández MachadoJesús Concepción Bacallao VidalThe discrimination of the clutter interfering signal is a current problem in modern radars’ design, especially in coastal or offshore environments where the histogram of the background signal often displays heavy tails. The statistical characterization of this signal is very important for the cancellation of sea clutter, whose behavior obeys a K distribution according to the commonly accepted criterion. By using neural networks, the authors propose a new method for estimating the K shape parameter, demonstrating its superiority over the classic alternative based on the Method of Moments. Whereas both solutions have a similar performance when the entire range of possible values of the shape parameter is evaluated, the neuronal alternative achieves a much more accurate estimation for the lower Fig.s of the parameter. This is exactly the desired behavior because the best estimate occurs for the most aggressive states of sea clutter. The final design, reached by processing three different sets of computer generated K samples, used a total of nine neural networks whose contribution is synthesized in the final estimate, thus the solution can be interpreted as a deep learning approximation. The results are to be applied in the improvement of radar detectors, particularly for maintaining the operational false alarm probability close to the one conceived in the design.http://www.ijimai.org/journal/node/1176Artificial Neural NetworksEstimationKmeansLearningSea Clutter
collection DOAJ
language English
format Article
sources DOAJ
author José Raúl Fernández Machado
Jesús Concepción Bacallao Vidal
spellingShingle José Raúl Fernández Machado
Jesús Concepción Bacallao Vidal
Improved Shape Parameter Estimation in K Clutter with Neural Networks and Deep Learning
International Journal of Interactive Multimedia and Artificial Intelligence
Artificial Neural Networks
Estimation
Kmeans
Learning
Sea Clutter
author_facet José Raúl Fernández Machado
Jesús Concepción Bacallao Vidal
author_sort José Raúl Fernández Machado
title Improved Shape Parameter Estimation in K Clutter with Neural Networks and Deep Learning
title_short Improved Shape Parameter Estimation in K Clutter with Neural Networks and Deep Learning
title_full Improved Shape Parameter Estimation in K Clutter with Neural Networks and Deep Learning
title_fullStr Improved Shape Parameter Estimation in K Clutter with Neural Networks and Deep Learning
title_full_unstemmed Improved Shape Parameter Estimation in K Clutter with Neural Networks and Deep Learning
title_sort improved shape parameter estimation in k clutter with neural networks and deep learning
publisher Universidad Internacional de La Rioja (UNIR)
series International Journal of Interactive Multimedia and Artificial Intelligence
issn 1989-1660
1989-1660
publishDate 2016-06-01
description The discrimination of the clutter interfering signal is a current problem in modern radars’ design, especially in coastal or offshore environments where the histogram of the background signal often displays heavy tails. The statistical characterization of this signal is very important for the cancellation of sea clutter, whose behavior obeys a K distribution according to the commonly accepted criterion. By using neural networks, the authors propose a new method for estimating the K shape parameter, demonstrating its superiority over the classic alternative based on the Method of Moments. Whereas both solutions have a similar performance when the entire range of possible values of the shape parameter is evaluated, the neuronal alternative achieves a much more accurate estimation for the lower Fig.s of the parameter. This is exactly the desired behavior because the best estimate occurs for the most aggressive states of sea clutter. The final design, reached by processing three different sets of computer generated K samples, used a total of nine neural networks whose contribution is synthesized in the final estimate, thus the solution can be interpreted as a deep learning approximation. The results are to be applied in the improvement of radar detectors, particularly for maintaining the operational false alarm probability close to the one conceived in the design.
topic Artificial Neural Networks
Estimation
Kmeans
Learning
Sea Clutter
url http://www.ijimai.org/journal/node/1176
work_keys_str_mv AT joseraulfernandezmachado improvedshapeparameterestimationinkclutterwithneuralnetworksanddeeplearning
AT jesusconcepcionbacallaovidal improvedshapeparameterestimationinkclutterwithneuralnetworksanddeeplearning
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