DIGITAL PROCESSING OF SIGNALS USING WAVELET METHODS
Keywords:
Types of digital processing to signals, Fure replacement, Weyvlet-substitutions, weyvlet types.Abstract
Capabilities and the importance of building a wavelet model, in this paper through digital signal processing, digital signal processing and its. Wavelet models provide high accuracy in digital processing of signals, providing useful information about signal processing and reception. In today's research, the results of comparative analysis of some types of wavelets, which are a daily necessity and are widely used, are discussed. As it relates to digital processing of signals from human body temperature sensors, special attention is paid to signal types in the research work.
References
H.M.AstafyevaАстафьева Н.М. Wavelet analysis: basic theory and examples of application // UFN, November 1996, volume 166 no. 11.
R.S. Akhmetkhanov., E.F.Dubinin, V.I.Kuksova.“Application of wavelet transforms for the analysis of experimental data”, Problems of mechanical engineering and automation, 2012, №. 4, P. 39–45
V.I.Vorobiev, V.G.Gribunin Theory and practice of wavelet transform – VUS, 1999–206p.
V.V. Vityazev Wavelet analysis of time series. St. Petersburg: 2001
I.Daubechies Ten lectures on wavelets – M.: Izhevsk: RHD, 2001.
V.P. Dyakonov Wavelets From theory to practice, –M. 2002.-448c
Yu.K. Diemyanovich, V.A.Khodakovsky Introduction to wavelet theory St. Petersburg 2007-34s.
I.Daubechies. The Wavelet Transform, Time-Frequency Localization and Signal Analysis //IEEE Trans. Inform. Theory, 1990, № 5. P. 961-1005.
Kh.N. Zainidinov, I.Yusupov, Sh.Urakov Application of Haar Wavelets in Problems of Digital Processing of Two-Dimensional Signals. Journal of Automation and Software Engineering. Novosibirsk Institute of Software Systems ISSN: 2312-4997eISSN: 2618-7558. 79-84 art., 2019.
X.N. Zaynidinov , A.A.Turakulov, F.T. Mullajonova Sensors And Devices For Receiving Human Biosignals //JournalNX. – С. 316-320.
X.N. Zaynidinov , A.A.Turakulov, F.T. Mullajonova Possibilities of using approximation methods in visualization of sphygmosignals //Academic research in educational sciences. – 2021. – Т. 2. – №. 10. – P. 388-395.
S.Malla Wavelets in signal processing – M.: Mir, 2005 – P-672
A.A.Turakulov, F.T. Mullajonova Using Modern Microcontrollers In Automated Data Processing Of Sphygmic Cardiosignals //JournalNX. – С. 659-662.
A.Turakulov, F.Mullajonova An automated system for body temperature monitoring of children, people with disabilities and bedridden people using a continuous analysis //Diagnostyka. – 2020. – Т. 21. – №. 3. – С. 31-40.
Qiao Wang, Yue Liu Seismic Wavelet Signal Noise Reduction Algorithm of Blind Source Separation Optimization/assets/Journal/MMI-6/034.
P.V.Kozlov, B.B.Chen Wavelet transform and analysis of time series // Bulletin of KRSU, 2002, No. 2.
L.V.Novikov Fundamentals of wavelet signal analysis: Textbook. – St. Petersburg, Institute of Academy of Sciences of the Russian Academy of Sciences, 1999, 152 pp.
K.Chui Introduction to wavelets. M. 2001. 412 p.
A.Kiselev Fundamentals of the theory of wavelet transform.–http://www.basegroup.ru/library/cleaning/intro-to-wavelets/
H.L.Resnikof Wells R.O. Wavelet Analysis. Springer, 1991