M-RWTL: Learning Signal-Matched Rational Wavelet Transform in Lifting Framework
Transform learning is being extensively applied in several applications because of its ability to adapt to a class of the signals of interest. Often, a transform is learned using a large amount of training data, while only limited data may be available in many applications. Motivated with this, we p...
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doaj-192bdf3546cd4d23a04c412b7611b35e2021-03-29T20:42:24ZengIEEEIEEE Access2169-35362018-01-016122131222710.1109/ACCESS.2017.27880848253448M-RWTL: Learning Signal-Matched Rational Wavelet Transform in Lifting FrameworkNaushad Ansari0https://orcid.org/0000-0001-9211-7617Anubha Gupta1https://orcid.org/0000-0002-7752-1926Department of Electronics and Communication Engineering, Signal processing and Bio-medical Imaging Laboratory, Indraprastha Institute of Information Technology, Delhi, Delhi, IndiaDepartment of Electronics and Communication Engineering, Signal processing and Bio-medical Imaging Laboratory, Indraprastha Institute of Information Technology, Delhi, Delhi, IndiaTransform learning is being extensively applied in several applications because of its ability to adapt to a class of the signals of interest. Often, a transform is learned using a large amount of training data, while only limited data may be available in many applications. Motivated with this, we propose wavelet transform learning in the lifting framework for a given signal. Significant contributions of this paper are: 1) the existing theory of lifting framework for the dyadic wavelet is extended to more generic rational wavelet design, where dyadic is a special case and 2) the proposed work allows to learn rational wavelet transform from a given signal and does not require large training data. Since it is a signal-matched design, the proposed methodology is called Signal-Matched Rational Wavelet Transform Learning in the Lifting Framework (M-RWTL). The proposed M-RWTL method inherits all the advantages of lifting, i.e., the learned rational wavelet transform is always invertible, method is modular, and the corresponding M-RWTL system can also incorporate non-linear filters, if required. This may enhance the use of RWT in applications, which is so far restricted. M-RWTL is observed to perform better compared with the standard wavelet transforms in the applications of compressed sensing-based signal reconstruction.https://ieeexplore.ieee.org/document/8253448/Transform learningrational waveletlifting frameworksignal-matched wavelet |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Naushad Ansari Anubha Gupta |
spellingShingle |
Naushad Ansari Anubha Gupta M-RWTL: Learning Signal-Matched Rational Wavelet Transform in Lifting Framework IEEE Access Transform learning rational wavelet lifting framework signal-matched wavelet |
author_facet |
Naushad Ansari Anubha Gupta |
author_sort |
Naushad Ansari |
title |
M-RWTL: Learning Signal-Matched Rational Wavelet Transform in Lifting Framework |
title_short |
M-RWTL: Learning Signal-Matched Rational Wavelet Transform in Lifting Framework |
title_full |
M-RWTL: Learning Signal-Matched Rational Wavelet Transform in Lifting Framework |
title_fullStr |
M-RWTL: Learning Signal-Matched Rational Wavelet Transform in Lifting Framework |
title_full_unstemmed |
M-RWTL: Learning Signal-Matched Rational Wavelet Transform in Lifting Framework |
title_sort |
m-rwtl: learning signal-matched rational wavelet transform in lifting framework |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2018-01-01 |
description |
Transform learning is being extensively applied in several applications because of its ability to adapt to a class of the signals of interest. Often, a transform is learned using a large amount of training data, while only limited data may be available in many applications. Motivated with this, we propose wavelet transform learning in the lifting framework for a given signal. Significant contributions of this paper are: 1) the existing theory of lifting framework for the dyadic wavelet is extended to more generic rational wavelet design, where dyadic is a special case and 2) the proposed work allows to learn rational wavelet transform from a given signal and does not require large training data. Since it is a signal-matched design, the proposed methodology is called Signal-Matched Rational Wavelet Transform Learning in the Lifting Framework (M-RWTL). The proposed M-RWTL method inherits all the advantages of lifting, i.e., the learned rational wavelet transform is always invertible, method is modular, and the corresponding M-RWTL system can also incorporate non-linear filters, if required. This may enhance the use of RWT in applications, which is so far restricted. M-RWTL is observed to perform better compared with the standard wavelet transforms in the applications of compressed sensing-based signal reconstruction. |
topic |
Transform learning rational wavelet lifting framework signal-matched wavelet |
url |
https://ieeexplore.ieee.org/document/8253448/ |
work_keys_str_mv |
AT naushadansari mrwtllearningsignalmatchedrationalwavelettransforminliftingframework AT anubhagupta mrwtllearningsignalmatchedrationalwavelettransforminliftingframework |
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1724194224253960192 |