J. Eckmann, S. Kamphorst, and D. Ruelle, Recurrence plots of dynamical systems, Europhys. Lett, vol.4, pp.973-977, 1987.

P. Faure and H. Korn, A new method to estimate the Kolmogorov entropy from recurrence plots: its application to neuronal signals, Physica D, vol.122, issue.1-4, pp.265-279, 1998.

M. Thiel, M. C. Romano, P. Read, and J. Kurths, Estimation of dynamical invariants without embedding by recurrence plots, Chaos, vol.14, issue.2, pp.234-243, 2004.

N. Marwan, M. Romano, M. Thiel, and J. Kurths, Recurrence plots for the analysis of complex systems, Phys. Rep, vol.438, pp.237-329, 2007.

N. Marwan, N. Wessel, U. Meyerfeldt, A. Schirdewan, and J. Kurths, Recurrence plot based measures of complexity and its application to heart rate variability data, Phys. Rev. E, vol.66, p.26702, 2002.

J. Zbilut and C. Webber, Embeddings and delays as derived from quantification of recurrence plots, Phys. Lett. A, vol.171, pp.199-203, 1992.

C. Webber and J. Zbilut, Dynamical assessment of physiological systems and states using recurrence plot strategies, J. Appl. Physiol, vol.76, pp.965-973, 1994.

G. Robinson and M. Thiel, Recurrences determine the dynamics, Chaos, vol.19, issue.2, p.23104, 2009.

Y. Hirata and K. Aihara, Devaney's chaos on recurrence plots, Phys. Rev. E, vol.82, issue.3, p.36209, 2010.

I. N. Junejo, E. Dexter, I. Laptev, and P. Perez, View-independent action recognition from temporal self-similarities, IEEE Trans. Pattern Anal. Mach. Intell, vol.33, pp.172-185, 2011.
URL : https://hal.archives-ouvertes.fr/hal-01064695

H. Yang, T. Bukkapatnam, L. G. Satish, and . Barajas, Local recurrence based performance prediction and prognostics in the nonlinear and nonstationary systems, Pattern Recognition, vol.44, pp.1834-1840, 2011.

F. Zhou, F. De-la-torre, and J. K. Hodgins, Hierarchical aligned cluster analysis for temporal clustering of human motion, IEEE Trans. Pattern Anal. Mach. Intell, vol.35, pp.582-596, 2013.

F. A. Faria, J. Almeida, B. Alberton, L. P. Morellato, R. Da et al., Fusion of time series representations for plant recognition in phenology studies, vol.83, pp.205-214, 2016.

L. De-carvalho-pagliosa and R. Fernandes-de-mello, Semi-supervised time series classification on positive and unlabeled problems using crossrecurrence quantification analysis, Pattern Recognition, vol.80, pp.53-63, 2018.

G. K. Rohde, J. M. Nichols, B. M. Dissinger, and F. Bucholtz, Stochastic analysis of recurrence plots with applications to the detection of deterministic signals, Physica D, vol.237, issue.5, pp.619-629, 2008.

P. Faure and A. Lesne, Recurrence plots for symbolic sequences, Int. J. Bifurcat. Chaos, vol.20, issue.06, pp.1731-1749, 2010.

M. Grendár, J. Majerová, and V. ?pitalský, Strong laws for recurrence quantification analysis, Int. J. Bifurcat. Chaos, vol.23, p.1350147, 2013.

S. Ramdani, G. Tallon, P. L. Bernard, and H. Blain, Recurrence quantification analysis of human postural fluctuations in older fallers and nonfallers, Ann. Biomed. Eng, vol.41, issue.8, pp.1713-1725, 2013.

C. Webber and N. Marwan, Recurrence Quantification Analysis, 2015.

N. Marwan and A. Meinke, Extended recurrence plot analysis and its application to ERP data, Int. J. Bifurcat. Chaos, vol.14, issue.02, pp.761-771, 2004.

Y. Yang, Z. Gao, X. Wang, Y. Li, J. Han et al., A recurrence quantification analysis-based channel-frequency convolutional neural network for emotion recognition from EEG, Chaos, vol.28, issue.8, p.85724, 2018.

S. Ramdani, F. Bouchara, J. Lagarde, and A. Lesne, Recurrence plots of discrete-time Gaussian stochastic processes, Physica D, vol.330, pp.17-31, 2016.

S. Ramdani, F. Bouchara, and A. Lesne, Probabilistic analysis of recurrence plots generated by fractional Gaussian noise, Chaos, vol.28, issue.8, p.85721, 2018.
URL : https://hal.archives-ouvertes.fr/lirmm-02050628

D. Schultz, S. Spiegel, N. Marwan, and S. Albayrak, Approximation of diagonal line based measures in recurrence quantification analysis, Phys. Lett. A, vol.379, pp.997-1011, 2015.

S. Spiegel, D. Schultz, and N. Marwan, Approximate recurrence quantification analysis (aRQA) in code of best practice, Recurrence Plots and Their Quantifications: Expanding Horizons. Springer Proceedings in Physics, vol.180, pp.113-136, 2016.

T. Rawald, M. Sips, and N. Marwan, PyRQA -conducting recurrence quantification analysis on very long time series efficiently, Comput. & Geosci, vol.104, pp.101-108, 2017.

N. Packard, J. Crutchfield, J. Farmer, and R. Shaw, Geometry from a time series, Phys. Rev. Lett, vol.45, pp.712-716, 1980.

F. Takens, Detecting strange attractors in turbulence, Dynamical systems and turbulence, pp.366-381, 1980.

H. Kantz and T. Schreiber, Nonlinear time series analysis, 2004.

A. Papoulis and S. Pillai, Probability, random variables and stochastic processes, 2002.

C. Rasmussen and C. Williams, Gaussian processes for machine learning, 2006.

A. Delorme and S. Makeig, EEGLAB: an open source toolbox for analysis of single-trial EEG dynamics including independent component analysis, J. Neurosci. Methods, vol.134, issue.1, pp.9-21, 2004.

W. Gersch, Spectral analysis of EEG's by autoregressive decomposition of time series, Math. Biosci, vol.7, issue.1-2, pp.205-222, 1970.

J. Pardey, S. Roberts, and L. Tarassenko, A review of parametric modelling techniques for EEG analysis, Med. Eng. & Phys, vol.18, issue.1, pp.2-11, 1996.

E. Pereda, R. Q. Quiroga, and J. Bhattacharya, Nonlinear multivariate analysis of neurophysiological signals, Prog. Neurobiol, vol.77, issue.1-2, pp.1-37, 2005.

G. E. Box, G. M. Jenkins, G. C. Reinsel, and G. M. Ljung, Time series analysis: forecasting and control, 2015.

A. Genz, Numerical computation of multivariate normal probabilities, J. Comput. Graph. Stat, vol.1, pp.141-149, 1992.

M. Thiel, M. C. Romano, J. Kurths, R. Meucci, E. Allaria et al., Influence of observational noise on the recurrence quantification analysis, Physica D, vol.171, issue.3, pp.138-152, 2002.

N. Marwan, How to avoid potential pitfalls in recurrence plot based data analysis, Int. J. Bifurcat. Chaos, vol.21, issue.04, pp.1003-1017, 2011.

T. March, S. Chapman, and R. Dendy, Recurrence plot statistics and the effect of embedding, Physica D, vol.200, issue.1-2, pp.171-184, 2005.

D. Farina, L. Fattorini, F. Felici, and G. Filligoi, Nonlinear surface emg analysis to detect changes of motor unit conduction velocity and synchronization, J. Appl. Physiol, vol.93, pp.1753-1763, 2002.