References
- Mitola J . Cognitive radio: an integrated agent architecture for software defined radio. [ Ph.D. dissertation]. Stockholm Switzerland: Royal Institute of Technology; 1996; p. 271–350.
- Anil Kumar B , Trinatha Rao P . Overview of advances in communication technologies. INCEMIC Conf Proc; 2015; p. 47–51.
- Lu L . Ten years of research in spectrum sensing and sharing in cognitive radio. EURASIP J Wirel Commun Network. 2012; 2012(1):28.
- Wang B . Advances in cognitive radio networks: a survey. IEEE J Sel Topics Signal Process. 2011;5(1):5–23.
- Alvi SA . A log-probability based cooperative spectrum sensing scheme for cognitive radio networks. ELSEVIER J Emerg Ubiquitous Syst Pervasive Network, Procedia Comput Sci. 2014;3:196–202.
- Gardner WA . Exploitation of spectral redundancy in cyclostationary signals. IEEE Sign Process Mag. India: 1991;8(2):14–36.10.1109/79.81007
- Paul D . Sutton, cyclostationary signatures in practical cognitive radio applications. IEEE J Sel Areas Commun. 2008;26:13–24.
- Joshi D . Spectrum sensing for cognitive radio using hybrid matched filter single cycle cyclostationary feature detector. IJIEEB. 2015;7:13–19.10.5815/ijieeb
- Geethu S . A novel selection based hybrid spectrum sensing technique for cognitive radios. ICECCN; 2013, IEEE 978-1-4673-5036-5/13; p. 476–480.
- Ejaz W . Improved local spectrum sensing for cognitive radio networks. EURASIP J Adv Signal Process. 2012;2012(1): 242.
- Zhang Z . A novel hybrid matched filter structure for IEEE 802.22 standard.IEEE 978-1-4244-7456-1; 2010. p. 652–655.
- Skolink MI . Introduction to radar principles. 3rd ed. India: Tata McGraw Hill; 2008; p. 284–285.
- Wang H , Wang J . An effective image representation method using kernel classification. Tools Artif Intell; 2014. p. 853–858.
- El Aboudi, N , Benhlima L . Parallel and distributed population based feature selection framework for health monitoring. Int J Cloud Appl Comput. 2017;7:57–71.10.4018/IJCAC
- Bakshi S , Sa PK , Wang H , et al . Fast periocular authentication in handheld devices with reduced phase intensive local pattern. Multimedia Tools Appl. 2017;1–29.
- Anil Kumar B , Trinatha Rao P . MDI-SS: matched filter detection with inverse covariance matrix based spectrum sensing in cognitive radio. Paper is accepted in Inderscience Publisher, IJITST; 2017. India and Hi-tech publisher.
- Anil Kumar B , Trinatha Rao P . CFDI-SS: cyclostationary feature detection with inverse covariance matrix based spectrum sensing in cognitive radio. Paper is selected in Serials publisher, IJCA; 2017.
- Vachhani S . Cyclostationary based detection method of spectrum sensing for cognitive radio. IJPPT. 2014;7:26–28.
- Srihari P . Probability theory and stochastic processing. 3rd ed. 2010; p. 63–65.
- Tertinek S . Optimal detection of deterministic and random signals. Adv Sign Process. 2002; 1SE.
- Oppenheim AV , George V . Detection, estimation, and modulation theory. Hoboken, NJ: Wiley; 2010.
- Proakis JG . Digital communications. 4th ed. Singapore: McGraw Hill; 2001.
- Yang Lei . Cyclo-energy detector for spectrum sensing in cognitive radio. ELSEVIER Int J Electron Commun. 2012;66(1):89–92.10.1016/j.aeue.2011.05.004
- Vadivelu R . Matched filter based spectrum sensing for cognitive radio at low signal to noise ratio. J Theor Appl Inf Technol. 2014;62:107–113.
- http://www.dot.gov.in/sites/default/files/Annexures/ Hand book.pdf
- Ramchandran V . Improvement of energy efficiency of spectrum sensing algorithms for cognitive radio networks using compressive technique. ICCCI, IEEE; 2014 978-1-4799-2352-6/14.
- Anil Kumar B , Trinatha Rao P . Review of advances in mobile communication technologies. IJAER (ISSN 0973-4562). 2016; 11(6):4406–4412.