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doc. Ing. Peter Drotár, PhD.

Zoznam pôvodných publikovaných vedeckých prác, odborných prác a umeleckých prác, učebníc učebných textov, prehľad preukázateľných citácií a ohlasov na vedecké práce, odborné práce, prehľad prednášok a prednáškových pobytov doma a v zahraničí

AAA - Vedecké monografie vydané v zahraničných vydavateľstvách (1) ABC - Kapitoly vo vedeckých monografiách vydané v zahraničných vydavateľstvách (1) ACB - Vysokoškolské učebnice vydané v domácich vydavateľstvách (1) BCI - Skriptá a učebné texty (3) ADC - Vedecké práce v zahraničných karentovaných časopisoch (16) ADD - Vedecké práce v domácich karentovaných časopisoch (1) ADE - Vedecké práce v zahraničných nekarentovaných časopisoch (3) ADF - Vedecké práce v domácich nekarentovaných časopisoch (4) AED - Vedecké práce v domácich recenzovaných vedeckých zborníkoch, monografiách (1) AFC - Publikované príspevky na zahraničných vedeckých konferenciách (19) AFD - Publikované príspevky na domácich vedeckých konferenciách (7) AFH - Abstrakty príspevkov z domácich konferencií (1) BBB - Kapitoly v odborných monografiách vydané v domácich vydavateľstvách (1) ADM - Vedecké práce v zahraničných časopisoch registrovaných v databázach Web of alebo SCOPUS (3)

AAA - Vedecké monografie vydané v zahraničných vydavateľstvách(1)

AAA001 [163819] Nonlinear distortion in mobile communication systems / Peter Drotár - 1. vyd. - Saarbrücken : LAP LAMBERT Academic Publishing - 2015. - 96 p.. - ISBN 978-3-659-78381-4. [DROTÁR, Peter]

ABC - Kapitoly vo vedeckých monografiách vydané v zahraničných vydavateľstvách(1)

ABC001 [118635] Reduction of Nonlinear Distortion in Multi-Antenna WiMAX Systems / Peter Drotár ... [et al.] - 2011.In: Advanced transmission techniques in WIMAX. - Rijeka : InTech, 2011 P. 59-76 [1,15 AH]. - ISBN 978-953-307-965-3 [DROTÁR, Peter - GAZDA, Juraj - KOCUR, Dušan - GALAJDA, Pavol]

ACB - Vysokoškolské učebnice vydané vdomácich vydavateľstvách(1)

ACB001 [227987] Inteligentné systémy podpory rozhodovania v biomedicíne / Peter Drotár - 1. vyd. - Košice : Elfa - 2021. - 78 s. [print]. - ISBN 978-80-8086-281-7. [DROTÁR, Peter]

ADC - Vedecké práce v zahraničných karentovaných časopisoch(14)

ADC001 [101690] Receiver technique for iterative estimation and cancellation of nonlinear distortion in MIMO SFBC-OFDM Systems / Peter Drotár ... [et al.] - 2010.In: IEEE Transactions on Consumer Electronics. Vol. 56, no. 2 (2010), p. 471-475. - ISSN 0098-3063 [DROTÁR, Peter - GAZDA, Juraj - GALAJDA, Pavol - KOCUR, Dušan - PAVELKA, Pavol]

ADC002 [105126] Tone reservation for SFBC-OFDM with no spectral broadening / J. Gazda ... [et al.] - 2010.In: Frequenz. Vol. 64, no. 7-8 (2010), p. 140-143. - ISSN 0016-1136 Spôsob prístupu: http://frequenz.schiele-schoen.de/108/15758/fre21008140/Tone_Reservation_forSFBC_OFDM_with_no_ Spectral_Broadening.html. [GAZDA, Juraj - DROTÁR, Peter - DEUMAL, M. - GALAJDA, Pavol - KOCUR, Dušan]

ADC003 [116165] Iterative Suboptimal Maximum Likelihood Receiver for Nonlinearly Distorted SC-FDMA Symbols / Juraj Gazda ... [et al.] - 2011.In: Frequenz. Vol. 65, no. 11 (2011), p. 327-334. - ISSN 0016-1136 Spôsob prístupu: http://www.reference-global.com/doi/abs/10.1515/FREQ.2011.049. [GAZDA, Juraj - DEUMAL, Marc - BERGADA, Pau - DROTÁR, Peter - KOCUR, Dušan - GALAJDA, Pavol]

ADC004 [159736] Analysis of in-air movement in handwriting: A novel marker for Parkinsons disease / Peter Drotár ... [et al.] - 2014.In: Computer Methods and Programs in Biomedicine. Vol. 117, no. 3 (2014), p. 405-411. - ISSN 0169-2807 Spôsob prístupu: www.elsevier.com. [DROTÁR, Peter - MEKYSKA, Jiří - REKTOROVÁ, Irena - MASAROVÁ, Lucia - SMÉKAL, Zdenek - FAUNDEZ-ZANUY, Marcus]

ADC005 [165513] An Experimental Comparison of Feature Selection Methods on Two-Class Biomedical Datasets / Peter Drotár, Juraj Gazda, Zdenek Smekal - 2015.In: Computers in Biology and Medicine. Vol. 66 (2015), p. 1-10. - ISSN 0010-4825 Spôsob prístupu: http://www.sciencedirect.com/science/article/pii/S0010482515002917. [DROTÁR, Peter - GAZDA, Juraj - SMÉKAL, Zdeněk]

ADC006 [170292] Evaluation of handwriting kinematics and pressure for differential diagnosis of Parkinson's disease / Peter Drotár ... [et al.] - 2016.In: Artificial in Medicine. Vol. 67 (2016), p. 39-46. - ISSN 0933-3657 Spôsob prístupu: http://www.sciencedirect.com/science/article/pii/S0933365716000063. [DROTÁR, Peter - MEKYSKA, Jiří - REKTOROVÁ, Irena - SMÉKAL, Zdenek - FAUNDEZ-ZANUY, Marcus - MASÁROVÁ, Lucia]

ADC007 [178440] Tax optimization in an agent-based model of real- spectrum secondary market / Juraj Gazda ... [et al.] - 2017.In: Telecommunication Systems. Vol. 64, no. 3 (2017), p. 543-558. - ISSN 1018-4864 [GAZDA, Juraj - KOVÁČ, Viliam - TÓTH, Peter - DROTÁR, Peter - GAZDA, Vladimír]

ADC008 [182140] Dynamic spectrum leasing and retail pricing using an experimental / Juraj Gazda ... [et al.] - 2017.In: Computer Networks. Vol. 121 (2017), p. 173-184. - ISSN 1389-1286 Spôsob prístupu: http://www.sciencedirect.com/science/article/pii/S1389128617301718. [GAZDA, Juraj - BUGÁR, Gabriel - VOLOŠIN, Marcel - DROTÁR, Peter - HORVÁTH, Denis - GAZDA, Vladimír]

ADC009 [203227] Machine Approach to Dysphonia Detection / Zuzana Dankovičová ... [et al.] - 2018.In: Applied . - Basel (Švajčiarsko) : MDPI Roč. 8, č. 10 (2018), s. 1927-1927 [online]. - ISSN 2076-3417 [HUDÁKOVÁ, Zuzana - SOVÁK, Dávid - DROTÁR, Peter - VOKOROKOS, Liberios]

ADC010 [203228] Weighted nearest neighbors feature selection / Peter Bugata, Peter Drotár - 2019.In: Knowledge-Based Systems. č. 163 (2019), s. 749-761 [print]. - ISSN 0950-7051 Spôsob prístupu: https://www.sciencedirect.com/science/article/pii/S0950705118304908?via%3Dihub. [BUGATA, Peter - DROTÁR, Peter]

ADC011 [203647] Ensemble feature selection using election methods and ranker clustering / Peter Drotár, Matej Gazda, Liberios Vokorokos - 2019.In: Information Sciences : an International Journal : Informatics and Computer Science Intelligent Systems Applications. - New York (USA) : North-Holland Roč. 480 (2019), s. 365-380 [print]. - ISSN 0020-0255 [DROTÁR, Peter - GAZDA, Matej - VOKOROKOS, Liberios]

ADC012 [217002] Robustness of Interval Monge Matrices in Fuzzy Algebra / Máté Hireš, Monika Molnárová, Peter Drotár - 2020.In: Mathematics. - Bazilej (Švajčiarsko) : Multidisciplinary Digital Publishing Institute Roč. 8, č. 4 (2020), s. [1-16] [online]. - ISSN 2227-7390 (online) Spôsob prístupu: https://www.mdpi.com/2227-7390/8/4. [HIREŠ, Máté - MOLNÁROVÁ, Monika - DROTÁR, Peter]

ADC013 [217091] On some aspects of minimum redundancy maximum relevance feature selection / Peter Drotár, Peter Bugata - 2020.In: Science Information Sciences. Roč. 63, č. 1 (2020), s. 1-15 [print]. - ISSN 1674-733X Spôsob prístupu: https://link.springer.com/content/pdf/10.1007/s11432-019-2633-y.pdf. [DROTÁR, Peter - BUGATA, Peter]

ADC014 [218922] Bankruptcy prediction for small- and medium-sized companies using severely imbalanced datasets / Martin Zoričák ... [et al.] - 2020.In: Economic Modelling : The International Journal of Theoretical and Applied Papers on Economic Modelling. - Amsterdam (Holandsko) : Elsevier Roč. 84 (2020), s. 165-176 [print]. - ISSN 0264-9993 Spôsob prístupu: https://www.sciencedirect.com/science/article/pii/S0264999318315438. [ZORIČÁK, Martin - GNIP, Peter - DROTÁR, Peter - GAZDA, Vladimír]

ADD - Vedecké práce v domácich karentovaných časopisoch(1)

ADD001 [182960] Comparison of filter techniques for two-step feature selection / Peter Drotár ... [et al.] - 2017.In: Computing and Informatics. Roč. 36, č. 3 (2017), s. 597-617. - ISSN 1335-9150 [DROTÁR, Peter - ŠIMOŇÁK, Slavomír - PIETRIKOVÁ, Emília - CHOVANEC, Martin - CHOVANCOVÁ, Eva - ÁDÁM, Norbert - SZABÓ, Csaba - BALÁŽ, Anton - BIŇAS, Miroslav]

ADE - Vedecké práce v zahraničných nekarentovaných časopisoch(3)

ADE001 [83455] Effects of spreading sequences on the performance of MC-CDMA system with nonlinear models of HPA / Peter Drotár ... [et al.] - 2009.In: Radioengineering. Vol. 18, no. 1 (2009), p. 48-54. - ISSN 1210-2512 Spôsob prístupu: http://www.radioeng.cz. [DROTÁR, Peter - GAZDA, Juraj - KOCUR, Dušan - GALAJDA, Pavol]

ADE002 [85198] Joint microstatistic multiuser detection and cancellation of nonlinear distortion effects for the uplink of MC-CDMA systems using golay codes / Peter Drotár ... [et al.] - 2009.In: International Journal of Electronics, Communications and Computer Engineering. Vol. 1, no. 1(2009), p. 87-92. - ISSN 2073-0543 Spôsob prístupu: http://www.waset.org/journals/ijecce/v1.php. [DROTÁR, Peter - GAZDA, Juraj - GALAJDA, Pavol - KOCUR, Dušan]

ADE003 [105129] Performance improvement of MC-CDMA microstatistic multi-user detection in nonlinear fading channels using spreading code selection / Juraj Gazda ... [et al.] - 2010.In: Híradástechnika. Vol. 65, no. 3 (2010), p. 53-61. - ISSN 2061-2079 Spôsob prístupu: http://www.hiradastechnika.hu/2010_03_en. [GAZDA, Juraj - DROTÁR, Peter - KOCUR, Dušan - GALAJDA, Pavol]

ADF - Vedecké práce v domácich nekarentovaných časopisoch(4)

ADF001 [91284] Joint evaluation of nonlinear distortion effects and signal metrics in OFDM based transmission systems / Juraj Gazda ... [et al.] - 2009.In: Acta Electrotechnica et Informatica. Roč. 9, č. 4 (2009), s. 55-60. - ISSN 1335-8243 Spôsob prístupu: http://www.aei.tuke.sk. [GAZDA, Juraj - DROTÁR, Peter - KOCUR, Dušan - GALAJDA, Pavol - BLICHA, Radovan]

ADF002 [94784] Uplink modulation strategies in 4G wireless cellular systems / Juraj Gazda ... [et al.] - 2010.In: Acta Electrotechnica et Informatica. Roč. 10, č. 1 (2010), s. 37-41. - ISSN 1335-8243 Spôsob prístupu: http://www.aei.tuke.sk. [GAZDA, Juraj - DROTÁR, Peter - KOCUR, Dušan - GALAJDA, Pavol]

ADF003 [159738] Comparative study of machine learning techniques for supervised classification of biomedical data / Peter Drotár, Zdeněk Smékal - 2014.In: Acta Electrotechnica et Informatica. Roč. 14, č. 3 (2014), s. 5-10. - ISSN 1335-8243 [DROTÁR, Peter - SMÉKAL, Zdeněk]

ADF004 [177364] Návrh zápästia pre roboticku ruku Mechaterobot / Juraj Kováč, Peter Drotár, Michal Šulík - 2016.In: Transfer inovácií. Č. 33 (2016), s. 149-152. - ISSN 1337-7094 [KOVÁČ, Juraj - DROTÁR, Peter - ŠULÍK, Michal]

ADM - Vedecké práce v zahraničných časopisoch registrovaných v databázach Web of Science alebo SCOPUS(3)

ADM001 [159737] Hodnocení písma u pacientu s Parkinsonovou nemocí / Lucia Masarova ... [et al.] - 2014.In: Česká a slovenská neurologie a neurochirurgie. Vol. 77, no. 4 (2014), p. 456-462. - ISSN 1210-7859 [MASAROVÁ, Lucia - DROTÁR, Peter - MEKYSKA, Jiří - SMÉKAL, Zdenek - REKTOROVÁ, Irena]

ADM002 [159735] Decision Support Framework for Parkinson’s Disease Based on Novel Handwriting Markers / Peter Drotár ... [et al.] - 2015.In: IEEE Transactions on neural and rehabilitation engineering. Vol. 23, no. 3 (2015), p. 508-516. - ISSN 1534-4320 [DROTÁR, Peter - MEKYSKA, Jiri - REKTOROVA, Irena - MASAROVA, Lucia - SMEKAL, Zdenek - FAUNDEZ-ZANUY, Marcus]

ADM003 [207689] Small- and medium-enterprises bankruptcy dataset / Peter Drotár ... [et al.] - 2019.In: Data in Brief. - Amsterdam (Holandsko) : Elsevier č. 25 (2019), s. 1-6 [print]. - ISSN 2352-3409 Spôsob prístupu: https://www.sciencedirect.com/science/article/pii/S2352340919307140?via%3Dihub. [DROTÁR, Peter - GNIP, Peter - ZORIČÁK, Martin - GAZDA, Vladimír]

AED - Vedecké práce v domácich recenzovaných vedeckých zborníkoch, monografiách(1)

AED001 [100541] Porovnanie niektorých priestorovo-časových blokových kódov / Miroslav Jurek, Peter Drotár - 2010. - 1 elektronický optický disk (CD-ROM).In: Electrical Engineering and Informatics : Proceeding of the Faculty of Electrical Engineering and Informatics of the Technical University of Košice : September, 2010, Košice, Slovak Republic. - Košice : TU, 2010 S. 834-837. - ISBN 978-80-553-0460-1 [JUREK, Miroslav - DROTÁR, Peter]

AFC - Publikované príspevky na zahraničných vedeckých konferenciách(19)

AFC001 [71204] MC-CDMA performance analysis for different spreading codes at HPA Saleh model / Peter Drotár ... [et al.] - 2008.In: Radioelektronika 2008. - Praha : Czechoslovakia Section IEEE, 2008 4 p. - ISBN 9781424420889 [DROTÁR, Peter - GAZDA, Juraj - KOCUR, Dušan - GALAJDA, Pavol]

AFC002 [86208] Simple iterative cancellation of nonlinear distortion in LFDMA systems / Juraj Gazda ... [et al.] - 2009.In: 14th International OFDM-Workshop. - S.l. : s.n., 2009 P. 1-5. [GAZDA, Juraj - DROTÁR, Peter - DEUMAL, Marc - KOCUR, Dušan - GALAJDA, Pavol]

AFC003 [86747] Receivers for spatially multiplexed MIMO transmission systems / Peter Drotár ... [et al.] - 2009.In: RTT 2009. - Praha : ČVUT, 2009 P. 1-4. - ISBN 9788001044117 [DROTÁR, Peter - GAZDA, Juraj - GALAJDA, Pavol - KOCUR, Dušan]

AFC004 [96078] Refined iterative detection of coded SC-FDMA based transmission systems / Juraj Gazda ... [et al.] - 2010. - 1 elektronický optický disk (CD-ROM).In: Radioelektronika 2010 : proceedings of 20th international conference : April 19-21, 2010, Brno, Czech Republic. - Brno : Brno University of , 2010 P. 1-4. - ISBN 978-1-4244-6320-6 Spôsob prístupu: http://www.radioelektronika.cz. [GAZDA, Juraj - DROTÁR, Peter - KOCUR, Dušan - GALAJDA, Pavol]

AFC005 [97135] Receiver based compensation of nonlinear distortion in MIMO-OFDM / Peter Drotár ... [et al.] - 2010. - 1 elektronický optický disk (CD-ROM).In: RF Front-ends for Software Defined and Cognitive Radio Solutions : IEEE International Microwale Workshop Series : Aveiro, Portugal, February 22-23, 2010. - Aveiro : IEEE, 2010 P. 1-4. - ISBN 978-1-4244-5752-6 Spôsob prístupu: http://imws2010.av.it.pt. [DROTÁR, Peter - GAZDA, Juraj - DEUMAL, Marek - GALAJDA, Pavol - KOCUR, Dušan]

AFC006 [109630] Tone Reservation for SFBC-OFDM transmission systems using null subcarriers / Juraj Gazda ... [et al.] - 2011.In: SIU 2011 : the 19th IEEE Conference on Signal Processing and Communications Applications : 20-22 April 2011, Kemer, Antalya. - Kemer : IEEE, 2011 P. 1208-1211. [GAZDA, Juraj - DROTÁR, Peter - DEUMAL, Marc - KOCUR, Dušan - GALAJDA, Pavol]

AFC007 [159747] Prediction potential of different handwriting tasks for diagnosis of Parkinson' s / Peter Drotár ... [et al.] - 2013.In: E-Health and Bioengineering Conference (EHB). - USA : IEEE, 2013 S. 1-4. - ISBN 978-1-4799-2373-1 [DROTÁR, Peter - MEKYSKA, Jiri - REKTOROVA, Irena - MASAROVA, Lucia - SMEKAL, Zdenek - FAUNDEZ-ZANUY, Marcus]

AFC008 [159745] Fusion of diverse denoising systems for robust automatic speech recognition / Naveen Kumar ... [et al.] - 2014.In: Acoustics, Speech and Signal Processing (ICASSP 2014). - S.l. : IEEE, 2014 P. 5557-5561. - ISBN 978-1-4799-2894-1 [KUMAR, Naveen - VAN SEGBROECK, Marteen - KARTIK, Audhkhasi - DROTÁR, Peter - NARAYANAN, Shrikanth S.]

AFC009 [159746] Stability of Feature Selection Algorithms and its Influence on Prediction Accuracy in Biomedical Datasets / Peter Drotár, Zdenek Smékal - 2014.In: TENCON 2014. - Danvers : IEEE, 2014 P. 1-5. - ISBN 978-1-4799-4075-2 - ISSN 2159-3450 Spôsob prístupu: http://ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=7022309. [DROTÁR, Peter - SMÉKAL, Zdenek]

AFC010 [159750] A New Modality for Quantitative Evaluation of Parkinson's Disease: In- Air Movement / Peter Drotár ... [et al.] - 2015.In: Bioinformatics and Bioengineering (BIBE). - Greece : IEEE, 2015 P. 1-4. - ISBN 978-1-4799-3163-7 Spôsob prístupu: http://ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=6701692. [DROTÁR, Peter - MEKYSKA, Jiri - REKTOROVÁ, Irena - MASAROVÁ, Lucia - SMÉKAL, Zdeněk - FAUNDEZ-ZANUY, Marcus]

AFC011 [159870] Contribution of different handwriting modalities to differential diagnosis of Parkinson's disease / Peter Drotár ... [et al.] - 2015.In: MEMEA 2015. - Piscataway : IEEE, 2015 P. 344-348. - ISBN 978-1-4799-6476-5 [DROTÁR, Peter - MEKYSKA, Jiri - SMÉKAL, Zdeněk - REKTOROVA, Irena - MASAROVA, Lucia - FAUNDEZ-ZANUY, Marcos]

AFC012 [163840] The taxation of real-time spectrum secondary markets in cognitive radio networks / Peter Tóth ... [et al.] - 2015.In: CTTE 2015. - München : Technische Universität, 2015 P. 1-2. - ISBN 978-1-4799-8238-7 [TÓTH, Peter - GAZDA, Vladimír - GAZDA, Juraj - DROTÁR, Peter]

AFC013 [182958] Two-step feature selection methods for selection of very few features / Peter Drotár, Juraj Gazda - 2016.In: ISCMI 2016. - Danvers : IEEE, 2017 P. 179-183. - ISBN 978-1-5090-3696-7 [DROTÁR, Peter - GAZDA, Juraj]

AFC014 [182983] Spatial real-time price in the dynamic spectrum access markets / Marcel Vološin ... [et al.] - 2017.In: Lecture Notes in Computer Science (including subseries Lecture Notes in and Lecture Notes in Bioinformatics) volume 10207 : EUMAS 2016. - Cham : Springer, 2017 P. 217-229. - ISBN 978-3-319-59293-0 - ISSN 0302-9743 [VOLOŠIN, Marcel - GAZDA, Juraj - DROTÁR, Peter - BUGÁR, Gabriel - GAZDA, Vladimír]

AFC015 [189577] Predikcia úpadku spoločností s ručením obmedzeným využitím metód pre rozpoznanie odľahlých bodov / Peter Gnip, Martin Zoričák, Peter Drotár - 2017.In: Data a znalosti 2017. - Plzen : Západočeska univerzita v Plzni, 2017 P. 187-191. - ISBN 978-80-261-0720-0 [GNIP, Peter - ZORIČÁK, Martin - DROTÁR, Peter]

AFC016 [189580] Heterogeneous ensemble feature selection based on weighted Borda count / Peter Drotár, Matej Gazda, Juraj Gazda - 2017.In: ICITEE 2017. - Danvers : IEEE, 2017 P. 1-4. - ISBN 978-1-5090-6477-9 [DROTÁR, Peter - GAZDA, Matej - GAZDA, Juraj]

AFC017 [195520] Frequency spectrum distribution investments: Evidence from an agent-based experimental economy model / Juraj Gazda ... [et al.] - 2018.In: TCSET´2018. - Danvers : IEEE, 2018 P. 1123-1126. - ISBN 978-1-5386-2556-9 Spôsob prístupu: https://ieeexplore.ieee.org/abstract/document/8336391/. [GAZDA, Juraj - VOLOŠIN, Marcel - ŠLAPAK, Eugen - DROTÁR, Peter - MAKSYMYUK, Taras]

AFC018 [202636] Single-Class Bankruptcy Prediction Based on the Data from Annual Reports / Peter Drotár [et al.] - 2018.In: Intelligent data engineering and automated learning : Part 1. - Cham (Švajčiarsko) : Springer s. 343-353 [online]. - ISBN 978-3-030-03492-4 [DROTÁR, Peter - GNIP, Peter - ZORIČÁK, Martin - GAZDA, Vladimír]

AFC019 [225546] Ensemble methods for strongly imbalanced data: Bankruptcy prediction / Peter Gnip, Peter Drotár - 2019.In: 17th International Symposium on Intelligent Systems and Informatics : proceedings. - Budapešť (Maďarsko) : Institute of Electrical and Electronics Engineers s. 155-159 [online]. - ISBN 978-1-7281-2142-0 Spôsob prístupu: https://ieeexplore.ieee.org/document/9111557. [GNIP, Peter - DROTÁR, Peter]

AFD - Publikované príspevky na domácich vedeckých konferenciách(7)

AFD001 [86406] Multi-user receivers for MCCDMA transmission systems / Peter Drotár, Juraj Gazda, Votech Zvada - 2006.In: 6th PhD Student Conference and Scientific and Technical Competition of Students of Faculty of Electrical Engineering and Informatics Technical University of Košice. - Košice : Elfa, 2006 P. 155-156. - ISBN 8080860351 [DROTÁR, Peter - GAZDA, Juraj - ZVADA, Vojtech]

AFD002 [76934] Effects of spreading codes and convolution coding on the performance of MC-CDMA system with nonlinear model of HPA / Juraj Gazda, Peter Drotár - 2008.In: SCYR 2008. - Košice : FEI TU, 2008 S. 129-132. - ISBN 9788055300368 [GAZDA, Juraj - DROTÁR, Peter]

AFD003 [83659] On MC-CDMA transmission system performance at nonlinear high power amplifier of transmitter over frequency selective fading channel / Juraj Gazda ... [et al.] - 2009.In: Radioelektronika 2009. - Brno : Brno University of Technology, 2009 S. 35-38. - ISBN 9781424435364 Spôsob prístupu: http://www.radioelektronika.cz. [GAZDA, Juraj - DROTÁR, Peter - KOCUR, Dušan - GALAJDA, Pavol]

AFD004 [84181] Performance of orthogonal space-time block codes / Peter Drotár - 2009.In: SCYR 2009. - Košice : FEI TU, 2009 S. 119-121. - ISBN 9788055301785 [DROTÁR, Peter]

AFD005 [93451] Comparative evaluation of OFDMA and SC-FDMA based transmission systems / Juraj Gazda ... [et al.] - 2010. - 1 elektronický optický disk (CD-ROM).In: SAMI 2010 : 8th International Symposium on Applied Machine Intelligence and Informatics : January 28-30, 2010, Herľany, . - [s.l.] : IEEE, 2010 S. 177-181. - ISBN 978-1-4244-6423-4 Spôsob prístupu: http://www.sami.tuke.sk. [GAZDA, Juraj - DROTÁR, Peter - GALAJDA, Pavol - KOCUR, Dušan]

AFD006 [159742] Comparison of stability measures for feature selection / Peter Drotár, Zdenek Smékal - 2015.In: SAMI 2015. - Danvers : IEEE, 2015 S. 71-75. - ISBN 978-1-4799-8220-2 [DROTÁR, Peter - SMÉKAL, Zdenek]

AFD007 [191664] Overview of the handwriting processing for clinical decision support system / Zuzana Dankovičová ... [et al.] - 2017.In: Informatics 2017. - Danvers : IEEE, 2017 S. 63-67. - ISBN 978-1-5386-0888-3 [HUDÁKOVÁ, Zuzana - DROTÁR, Peter - GAZDA, Juraj - VOKOROKOS, Liberios]

AFH - Abstrakty príspevkov z domácich konferencií(1)

AFH001 [162269] On the taxation of real-time spectrum secondary markets in cognitive radio networks / Peter Tóth ... [et al.] - 2015.In: Slovak Economic Association Meeting in Košice. - Bratislava : Ekonóm, 2015 S. 1. - ISBN 978-80-225-4144-2 [TÓTH, Peter - GAZDA, Vladimír - GAZDA, Juraj - DROTÁR, Peter]

BBB - Kapitoly v odborných monografiách vydané v domácich vydavateľstvách(1)

BBB001 [112085] Modulácia OFDM / Dušan Kocur ... [et al.] - 2011. - ISBN 978-80-553-0632-2.In: Progresívne technológie v DVB-T. - Košice : TU, FEI, 2011, - ISBN 9788055306322 S. 71-91. - ISBN 978-80-553-0632-2 [KOCUR, Dušan - GAZDA, Juraj - DROTÁR, Peter - DUPÁK, Denis]

BCI - Skriptá a učebné texty(3)

BCI001 [165641] QoS v bezdrôtových sieťach / Peter Drotár - 1. vyd. - Košice : TU - 2015. - 67 s. [CD-ROM]. - ISBN 978-80-553-2451-7. [DROTÁR, Peter]

BCI002 [227988] Inteligentné systémy v informatike / Peter Drotár, Gabriel Bugár, Juraj Gazda - 1. vyd. - Košice : Technická univerzita v Košiciach - 2021. - 189 s. [CD-ROM]. - ISBN 978-80-553-3869-9. [DROTÁR, Peter - BUGÁR, Gabriel - GAZDA, Juraj]

BCI003 [228003] Krátky úvod do počítačových sietí / Gabriel Bugár, Juraj Gazda, Peter Drotár - 1. vyd. - Košice : Technická univerzita v Košiciach - 2021. - 183 s. [print]. - ISBN 978-80-553-3868-2. [BUGÁR, Gabriel - GAZDA, Juraj - DROTÁR, Peter]

Prehľad vybraných citácií

Evaluation of handwriting kinematics and pressure for differential diagnosis of Parkinson's disease / Peter Drotár ... [et al.] - 2016.In: Artificial Intelligence in Medicine. Vol. 67 (2016), p. 39-46. - ISSN 0933-3657

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Ammour, A., Aouraghe, I., Khaissidi, G., Mrabti, M., Aboulem, G., Belahsen, F. Online Arabic and French handwriting of Parkinson's disease: The impact of segmentation techniques on the classification results (2021) Biomedical Signal Processing and Control, 66, art. no. 102429, . https://www.scopus.com/inward/record.uri?eid=2-s2.0-85099985822&doi=10.1016%2f j.bspc.2021.102429&partnerID=40&md5=8f39bcd4031adbbcce428d587ef7c2f7

Kamran, I., Naz, S., Razzak, I., Imran, M. Handwriting dynamics assessment using deep neural network for early identification of Parkinson's disease (2021) Future Generation Computer Systems, 117, pp. 234-244. https://www.scopus.com/inward/record.uri?eid=2-s2.0-85097584108&doi=10.1016%2f j.future.2020.11.020&partnerID=40&md5=3e914f35aa3b28cd0a7bee714ab917fc

Patel, H.R., Patel, A.M., Parikh, S.M. Comparative Study on Parkinson Disease Dignosis Treatment Classification Using Machine Learning Classifier (PDMLC) (2021) Lecture Notes in Networks and Systems, 154, pp. 267-277. https://www.scopus.com/inward/record.uri?eid=2-s2.0-85098167248&doi=10.1007%2f 978-981-15-8354-4_28&partnerID=40&md5=7d9a52b72027682629627b139cc17f23

Lamba, R., Gulati, T., Al-Dhlan, K.A., Jain, A. A systematic approach to diagnose Parkinson’s disease through kinematic features extracted from handwritten drawings (2021) Journal of Reliable Intelligent Environments, . https://www.scopus.com/inward/record.uri?eid=2-s2.0-85100135767&doi=10.1007%2f s40860-021-00130-9&partnerID=40&md5=04d769addd43ffed3b9a890dde835f42

Lunardini, F., Febbo, D.D., Malavolti, M., Cid, M., Serra, M., Piccini, L., Pedrocchi, A.L.G., Borghese, N.A., Ferrante, S. A Smart Ink Pen for the Ecological Assessment of Age-Related Changes in Writing and Tremor Features (2021) IEEE Transactions on Instrumentation and Measurement, 70, art. no. 9311200, . https://www.scopus.com/inward/record.uri?eid=2-s2.0-85099112959&doi=10.1109%2f TIM.2020.3045838&partnerID=40&md5=e9a03d24f162fc3f2cbbf48f0ce5ff7d

Bi, X.-A., Hu, X., Xie, Y., Wu, H. A novel CERNNE approach for predicting Parkinson's Disease-associated genes and regions based on multimodal imaging genetics data (2021) Medical Image Analysis, 67, art. no. 101830, . https://www.scopus.com/inward/record.uri?eid=2-s2.0-85092777616&doi=10.1016%2f j.media.2020.101830&partnerID=40&md5=c0267ecfc5472cd766511893d2e4b9a4

Parziale, A., Senatore, R., Della Cioppa, A., Marcelli, A. Cartesian genetic programming for diagnosis of Parkinson disease through handwriting analysis: Performance vs. interpretability issues (2021) Artificial Intelligence in Medicine, 111, art. no. 101984, . https://www.scopus.com/inward/record.uri?eid=2-s2.0-85096493705&doi=10.1016%2f j.artmed.2020.101984&partnerID=40&md5=5c9516c5e75f63ea5b786c2a86f7ece5

Crespo, Y., Iglesias-Parro, S., Aznarte, J.I., Ibáñez-Molina, A.J., Soriano, M.F. Handwritten Geometrical Patterns in the Evaluation of Motor Symptoms in Psychotic Disorders (2021) Nonlinear Dynamics, Psychology, and Sciences, 25 (1), pp. 1-18. https://www.scopus.com/inward/record.uri?eid=2-s2.0-85098282257&partnerID=40&m d5=9179d328db228f312bb21017cae51be5

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Moetesum, M., Siddiqi, I., Javed, F., Masroor, U. Dynamic Handwriting Analysis for Parkinson's Disease Identification using C-BiGRU Model (2020) Proceedings of International Conference on Frontiers in Handwriting Recognition, ICFHR, 2020-September, art. no. 9257617, pp. 115-120. https://www.scopus.com/inward/record.uri?eid=2-s2.0-85097449287&doi=10.1109%2f ICFHR2020.2020.00031&partnerID=40&md5=d3490dd45728a566f234de17c0b72e3a

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Ivančević, N., Miler-Jerković, V., Stevanović, D., Jančić, J., Popović, M.B. Writing kinematics and graphic rules in children with adhd (2020) Srpski Arhiv za Celokupno Lekarstvo, 148 (7-8), pp. 462-468. https://www.scopus.com/inward/record.uri?eid=2-s2.0-85093895666&doi=10.2298%2f SARH190918017I&partnerID=40&md5=34e5b8adb174f08d78ed6929ff92f300

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Aouraghe, I., Alae, A., Ghizlane, K., Mrabti, M., Aboulem, G., Faouzi, B. A novel approach combining temporal and spectral features of Arabic online handwriting for Parkinson's disease prediction (2020) Journal of Neuroscience Methods, 339, art. no. 108727, . https://www.scopus.com/inward/record.uri?eid=2-s2.0-85083265046&doi=10.1016%2f j.jneumeth.2020.108727&partnerID=40&md5=dfca0a2eb810c649ddc69ae21bd152f2

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Castrillón, R., Acien, A., Orozco-Arroyave, J.R., Morales, A., Vargas, J.F., Vera-Rodríguez, R., Fierrez, J., Ortega-Garcia, J., Villegas, A. Characterization of the handwriting skills as a biomarker for Parkinson's disease (2019) Proceedings - 14th IEEE International Conference on Automatic Face and Gesture Recognition, FG 2019, art. no. 8756508, . https://www.scopus.com/inward/record.uri?eid=2-s2.0-85070457694&doi=10.1109%2f FG.2019.8756508&partnerID=40&md5=8569a2e620a3d9716b91d3780bac96f3

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Košice 22.6.2021

v.z. prof. Ing. Alena Pietriková, CSc. v.r...... prof. Ing. Liberios Vokorokos, PhD. dekan FEI TUKE