Temporal Signal Processing by Inference Bayesian Approach for Detection of Abrupt Variation of Statistical Characteristics of Noisy Signals
Commenced in January 2007
Frequency: Monthly
Edition: International
Paper Count: 32807
Temporal Signal Processing by Inference Bayesian Approach for Detection of Abrupt Variation of Statistical Characteristics of Noisy Signals

Authors: Farhad Asadi, Hossein Sadati

Abstract:

In fields such as neuroscience and especially in cognition modeling of mental processes, uncertainty processing in temporal zone of signal is vital. In this paper, Bayesian online inferences in estimation of change-points location in signal are constructed. This method separated the observed signal into independent series and studies the change and variation of the regime of data locally with related statistical characteristics. We give conditions on simulations of the method when the data characteristics of signals vary, and provide empirical evidence to show the performance of method. It is verified that correlation between series around the change point location and its characteristics such as Signal to Noise Ratios and mean value of signal has important factor on fluctuating in finding proper location of change point. And one of the main contributions of this study is related to representing of these influences of signal statistical characteristics for finding abrupt variation in signal. There are two different structures for simulations which in first case one abrupt change in temporal section of signal is considered with variable position and secondly multiple variations are considered. Finally, influence of statistical characteristic for changing the location of change point is explained in details in simulation results with different artificial signals.

Keywords: Time series, fluctuation in statistical characteristics, optimal learning.

Procedia APA BibTeX Chicago EndNote Harvard JSON MLA RIS XML ISO 690 PDF Downloads 497

References:


[1] Zhou F, De la Torre F, Hodgins JK. Hierarchical aligned cluster analysis for temporal clustering of human motion. IEEE Transactions on Pattern Analysis and Machine Intelligence. 2012 Jun 26;35(3):582-96.
[2] Asadi F, Khorram M, Moosavian SA. CPG-based gait transition of a quadruped robot. In2015 3rd RSI International Conference on Robotics and Mechatronics (ICROM) 2015 Oct 7 (pp. 210-215). IEEE.
[3] Asadi F, Khorram M, Moosavian SA. CPG-based gait planning of a quadruped robot for crossing obstacles. In2015 3rd RSI International Conference on Robotics and Mechatronics (ICROM) 2015 Oct 7 (pp. 216-222). IEEE.
[4] Asadi F, Mollakazemi MJ. Investigation on Performance of Change Point Algorithm in Time Series Dynamical Regimes and Effect of Data Characteristics. World Academy of Science, Engineering and Technology, International Journal of Mechanical, Aerospace, Industrial, Mechatronic and Manufacturing Engineering. 2015 Jan 1;8(10):1787-93.
[5] Angela JY, Dayan P. Uncertainty, neuromodulation, and attention. Neuron. 2005 May 19;46(4):681-92.
[6] Behrens TE, Woolrich MW, Walton ME, Rushworth MF. Learning the value of information in an uncertain world. Nature neuroscience. 2007 Sep;10(9):1214-21.
[7] Xuan X, Murphy K. Modeling changing dependency structure in multivariate time series. In Proceedings of the 24th international conference on Machine learning 2007 Jun 20 (pp. 1055-1062).
[8] Naeem MT, Jazayeri SA, Rezamahdi N, Toosi KN. Failure analysis of gas Matteson DS, James NA. A nonparametric approach for multiple change point analysis of multivariate data. Journal of the American Statistical Association. 2014 Jan 2;109(505):334-45.
[9] Asadi F, Mollakazemi MJ, Uzelac IL, Moosavian SA. A novel method for arterial blood pressure pulse detection based on a new coupling strategy and discrete wavelet transform. In2015 Computing in Cardiology Conference (CinC) 2015 Sep 6 (pp. 1081-1084). IEEE.
[10] Asadi F, Mollakazemi MJ, Atyabi SA, Uzelac IL, Ghaffari A. Cardiac arrhythmia recognition with robust discrete wavelet-based and geometrical feature extraction via classifiers of SVM and MLP-BP and PNN neural networks. In2015 Computing in Cardiology Conference (CinC) 2015 Sep 6 (pp. 933-936). IEEE.
[11] Xuan X, Murphy K. Modeling changing dependency structure in multivariate time series. In Proceedings of the 24th international conference on Machine learning 2007 Jun 20 (pp. 1055-1062).
[12] Wilson RC, Nassar MR, Gold JI. Bayesian online learning of the hazard rate in change-point problems. Neural computation. 2010 Sep;22(9):2452-76.
[13] Younes L, Albert M, Miller MI, BIOCARD Research Team. Inferring changepoint times of medial temporal lobe morphometric change in preclinical Alzheimer's disease. NeuroImage: Clinical. 2014 Jan 1;5:178-87.
[14] Fox E, Sudderth EB, Jordan MI, Willsky AS. Bayesian nonparametric inference of switching dynamic linear models. IEEE Transactions on Signal Processing. 2011 Jan 6;59(4):1569-85.
[15] Wilson RC, Nassar MR, Gold JI. Bayesian online learning of the hazard rate in change-point problems. Neural computation. 2010 Sep;22(9):2452-76.
[16] Schölkopf B, Platt JC, Shawe-Taylor J, Smola AJ, Williamson RC. Estimating the support of a high-dimensional distribution. Neural computation. 2001 Jul 1;13(7):1443-71.
[17] LaGraff JE, Ashpis DE, Oldfield ML, Gostelow JP. Minnowbrook V: Schölkopf B, Smola AJ, Bach F. Learning with kernels: support vector machines, regularization, optimization, and beyond. MIT press; 2002.
[18] Kim J, Cheon S, Jin Z. Bayesian multiple change-points estimation for hazard with censored survival data from exponential distributions. Journal of the Korean Statistical Society. 2020 Jan 1:1-8.
[19] Fan Y, Lu X. An online Bayesian approach to change-point detection for categorical data. Knowledge-Based Systems. 2020 Mar 29:105792.
[20] Li Q, Yao K, Zhang X. A change-point detection and clustering method in the recurrent-event context. Journal of Statistical Computation and Simulation. 2020 Apr 12;90(6):1131-49.
[21] Mollakazemi MJ, Asadi F. Real Time Adaptive Obstacle Avoidance in Dynamic Environments with Different DS. International Journal of Mechanical and Mechatronics Engineering. 2015 Jan 1;8(10):1794-9.
[22] Kim J, Cheon S, Jin Z. Bayesian multiple change-points estimation for hazard with censored survival data from exponential distributions. Journal of the Korean Statistical Society. 2020 Jan 1:1-8.