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KUBÁNKOVÁ, A. ATASSI, H. KUBÁNEK, D.
Original Title
Noise Robust Automatic Digital Modulation Recognition Based on Gaussian Mixture Models
Type
conference paper
Language
English
Original Abstract
The paper describes a method for the classification of digital modulations. The method uses features computed from parameters of recognized signal such as instantaneous amplitude, instantaneous phase, and spectrum symmetry. A classifier based on Gaussian mixture models was used to analyze the features and classify the modulations. ASK, FSK, MSK, BPSK, QPSK, and QAM-16 were chosen for the classification as the best-known digital modulations used in modern communication technologies. The effectivity of the method designed was tested using signals corrupted by white Gaussian noise.
Keywords
Classification of modulations, recognition, features, Gaussian mixture models
Authors
KUBÁNKOVÁ, A.; ATASSI, H.; KUBÁNEK, D.
RIV year
2011
Released
2. 2. 2011
Publisher
VUT v Brně
Location
Brno, Czech Republic
ISBN
978-80-214-4231-3
Book
Proceedings of the 6th International Conference on Teleinformatics - ICT 2011 (id 18951)
Pages from
220
Pages to
226
Pages count
7
BibTex
@inproceedings{BUT74186, author="Anna {Kubánková} and Hicham {Atassi} and David {Kubánek}", title="Noise Robust Automatic Digital Modulation Recognition Based on Gaussian Mixture Models", booktitle="Proceedings of the 6th International Conference on Teleinformatics - ICT 2011 (id 18951)", year="2011", pages="220--226", publisher="VUT v Brně", address="Brno, Czech Republic", isbn="978-80-214-4231-3" }