[[1] Donoho, D.L. (2006). Compressed sensing. IEEE Transactions on Information Theory, 52 (4), 1289-1306.10.1109/TIT.2006.871582]Search in Google Scholar
[[2] Andráš, I., Dolinský, P., Michaeli, L., Šaliga, J. (2018). A time domain reconstruction method of randomly sampled frequency sparse signal. Measurement, 127, 68-77.10.1016/j.measurement.2018.05.065]Search in Google Scholar
[[3] Wu, L., Yu, K., Hu, Y., Wang, Z. (2014). CS-based framework for sparse signal transmission over lossy link. In IEEE International Conference on Mobile Ad Hoc and Sensor Systems, Philadelphia, USA. IEEE, 680-685.10.1109/MASS.2014.51]Search in Google Scholar
[[4] Liu, H., Xiao, D., Zhang, R., Zhang., Y., Bai, S. (2016). Robust and hierarchical watermarking of encrypted images based on Compressive Sensing. Signal Processing: Image Communication, 46, 41-51.]Search in Google Scholar
[[5] Xiao, X., He, Q., Fu, Z., Xu, M., Zhang, X. (2016). Applying CS and WSN methods for improving efficiency of frozen and chilled aquatic products monitoring system in cold chain logistics. Food Control, 60, 656-666.10.1016/j.foodcont.2015.09.012]Search in Google Scholar
[[6] Bellan, D., Pignari, S.A. (2015). Monitoring of electromagnetic environment along high-speed railway lines based on compressive sensing. Progress in Electromagnetics Research C, 58, 183-191.10.2528/PIERC15051103]Search in Google Scholar
[[7] Craven, D., McGinley, B., Kilmartin, L., Glavin, M., Jones, E. (2016). Energy-efficient Compressed Sensing for ambulatory ECG monitoring. Computers in Biology and Medicine, 71, 1-13.10.1016/j.compbiomed.2016.01.01326854730]Search in Google Scholar
[[8] Angayarkanni, V., Radha, S. (2016). Design of bandwidth efficient compressed sensing based prediction measurement encoder for video transmission in wireless sensor networks. Wireless Personal Communications, 87, 1-21.10.1007/s11277-016-3176-1]Search in Google Scholar
[[9] Talari, A., Rahnavard, N. (2016). CStorage: Decentralized compressive data storage in wireless sensor networks. Ad Hoc Networks, 37, 475-485.10.1016/j.adhoc.2015.09.009]Search in Google Scholar
[[10] Zong, F., Eurydice, M.N., Galvosas, P. (2016). Fast reconstruction of highly undersampled MR images using one and two dimensional principal component analysis. Magnetic Resonance Imaging, 34, 227-238.10.1016/j.mri.2015.10.00926514390]Search in Google Scholar
[[11] Sun, Z., Wang, S., Chen, X. (2016). Feature-based digital modulation recognition using compressive sampling. Mobile Information Systems, 10, 9754162.10.1155/2016/9754162]Search in Google Scholar
[[12] Maceková, Ľ., Žiga, M. (2014). The wireless sensor network concept for measurement of water quality in water streams. Acta Electrotechnica et Informatica, 14 (2), 60-67.10.15546/aeei-2014-0020]Search in Google Scholar
[[13] Šaliga, J., Žiga, M., Galajda, P., Drutarovský, M., Kocur, D., Maceková, Ľ. (2015). Wireless sensor network for river water quality monitoring. In XXI IMEKO World Congress “Measurement in Research and Industry”, Prague, Czech Republic. IMEKO, 1745-1750.]Search in Google Scholar
[[14] Galajda, P., Drutarovský, M., Šaliga, J., Žiga, M., Maceková, Ľ., Marchevský, S., Kocur, D. (2015). Sensor node for the remote river quality monitoring. In MEASUREMENT 2015. Bratislava, Slovakia: IMS SAS, 313-316.]Search in Google Scholar
[[15] Šaliga, J., Kocur, D., Galajda, P., Drutarovsky, M., Macekova, Ľ., Andráš, I., Michaeli, L. (2017). Multiparametric sensor network for water quality monitoring. In IMEKO TC19 Workshop on Metrology for the Sea, Naples, Italy. IMEKO, 123-126.]Search in Google Scholar
[[16] Stojmenović, I. (2005). Energy scavenging and nontraditional power sources for wireless sensor networks. In Handbook of Sensor Networks: Algorithms and Architectures. John Wiley & Sons, 75-106.]Search in Google Scholar
[[17] Daponte, P., De Vito, L., Rapuano, S., Tudosa, I. (2017). Analog-to-information converters in the wideband RF measurement for aerospace applications: Current situation and perspectives. IEEE Instrumentation & Measurement magazine, 20 (1), 20-28.10.1109/MIM.2017.7864545]Search in Google Scholar
[[18] Candes, E.J., Wakin, M.B. (2008). An introduction to compressive sampling. IEEE Signal Processing Magazine, 25 (2), 21-30.10.1109/MSP.2007.914731]Search in Google Scholar
[[19] Fung, G., Mangasarian, O.L. (2011). Equivalence of minimal ℓ0 and ℓp-norm solutions of linear equalities, inequalities and linear programs for sufficiently small p. Journal of Optimization Theory and Applications, 151 (1), 1-10.]Search in Google Scholar
[[20] Palese, L.L. (2018). A random version of principal component analysis in data clustering. Computational Biology and Chemistry, 73, 57-64.10.1016/j.compbiolchem.2018.01.00929428276]Search in Google Scholar
[[21] Phyniomark, A., Hu, H., Phukpattaranont, P., Limsakul, C. (2012). Application of linear discriminant analysis in dimensionality reduction for hand motion classification. Measurement Science Review, 12 (3), 82-89.10.2478/v10048-012-0015-8]Search in Google Scholar
[[22] Ji, Y., Sun, S., Xie, H.B. (2017). Stationary waveletbased two-directional two-dimensional principal component analysis for EMG signal classification. Measurement Science Review, 17 (3), 117-124.10.1515/msr-2017-0015]Search in Google Scholar
[[23] Oesterlein, T.G., Lenis, G., Luik, A., Verma, B., Schmitt, C., Dossel, O. (2014). Removing ventricular far field artifacts in intracardiac electrograms during stable atrial flutter using the periodic component analysis - proof of concept study. In Electrocardiology 2014: Proceedings of 41thInternational Congress on Electrocardiology. Bratislava, Slovakia: IMS SAS, 49-52.]Search in Google Scholar
[[24] Rošťáková, Z., Rosipal, R. (2018). Time alignment as a necessary step in the analysis of sleep probabilistic curves. Measurement Science Review, 18 (1), 1-6.]Search in Google Scholar
[[25] Huang, H., Ouyang, H., Gao, H., Guo, L., Li, D., Wen, J. (2016). A feature extraction method for vibration signal of bearing incipient degradation. Measurement Science Review, 16 (3), 149-159.10.1515/msr-2016-0018]Search in Google Scholar
[[26] Abari, O., Lim, F., Chen, F., Stojanović, V. (2013). Why analog-to-information converters suffer in highbandwidth sparse signal applications. IEEE Transactions on Cirsuits and Systems - I: Regular Papers, 60 (9), 2273-2284.]Search in Google Scholar
[[27] Daponte, P., De Vito, L., Iadarola, G., Iovini, M., Rapuano, S. (2016). Experimental comparison of two mathematical models for Analog-to-Information Converters. In 21st IMEKO TC4 Symposium “Measurements of Electrical Quantities 2016” (and 19th International Workshop on ADC and DCA Modelling and Testing, IWADC): Understanding the World Through Electrical and Electronic Measurement, Budapest, Hungary. IMEKO, 65-70.]Search in Google Scholar
[[28] Daponte, P., De Vito, L., Iadarola, G., Rapuano, S. (2016). PRBS non-idealities affecting Random Demodulation Analog-to-Information Converters. In 21stIMEKO TC4 Symposium “Measurements of Electrical Quantities 2016” (and 19thInternational Workshop on ADC and DCA Modelling and Testing, IWADC): Understanding the World Through Electrical and Electronic Measurement, Budapest, Hungary. IMEKO, 71-60.]Search in Google Scholar
[[29] Daponte, P., De Vito, L., Iadarola, G., Rapuano, S. (2016). Effects of PRBS jitter on random demodulation analog-to-information converters. In IEEE Metrology for Aerospace, Florence, Italy. IEEE, 630-635.10.1109/MetroAeroSpace.2016.7573290]Search in Google Scholar
[[30] Candes, E., Becker, S. (2013). Compressive sensing: Principles and Hardware implementations. In ESSCIRC 2013: 39th European Solid ‐ State Circuits Conference, Bucharest, Romania. IEEE, 22-23.10.1109/ESSCIRC.2013.6649062]Search in Google Scholar
[[31] Wakin, M., Becker, S., Nakamura, E., Grant, M., Sovero, E., Ching, D., Yoo, J. (2012). A non-uniform sampler for wideband spectrally-sparse environments. IEEE Journal on Emerging and Selected Topics in Circuits and Systems, 2 (3), 516-529.10.1109/JETCAS.2012.2214635]Search in Google Scholar
[[32] Faculty of Electrical Engineering and Informatics, Technical University of Košice, Slovakia. (2013-2015). WSN-AQUA Wireless Sensor Network for Water Quality Monitoring (project).]Search in Google Scholar
[[33] Lopes, M.E. (2013). Estimating unknown sparsity in compressed sensing. In 30thInternational Conference on Machine Learning (ICML 2013), Atlanta, Georgia, USA. International Machine Learning Society (IMLS), 1254-1262.]Search in Google Scholar