dNSP: a biologically inspired dynamic Neural network approach to Signal Processing
- PMID: 18579344
- DOI: 10.1016/j.neunet.2008.03.015
dNSP: a biologically inspired dynamic Neural network approach to Signal Processing
Abstract
The arriving order of data is one of the intrinsic properties of a signal. Therefore, techniques dealing with this temporal relation are required for identification and signal processing tasks. To perform a classification of the signal according with its temporal characteristics, it would be useful to find a feature vector in which the temporal attributes were embedded. The correlation and power density spectrum functions are suitable tools to manage this issue. These functions are usually defined with statistical formulation. On the other hand, in biology there can be found numerous processes in which signals are processed to give a feature vector; for example, the processing of sound by the auditory system. In this work, the dNSP (dynamic Neural Signal Processing) architecture is proposed. This architecture allows representing a time-varying signal by a spatial (thus statical) vector. Inspired by the aforementioned biological processes, the dNSP performs frequency decomposition using an analogical parallel algorithm carried out by simple processing units. The architecture has been developed under the paradigm of a multilayer neural network, where the different layers are composed by units whose activation functions have been extracted from the theory of Neural Dynamic [Grossberg, S. (1988). Nonlinear neural networks principles, mechanisms and architectures. Neural Networks, 1, 17-61]. A theoretical study of the behavior of the dynamic equations of the units and their relationship with some statistical functions allows establishing a parallelism between the unit activations and correlation and power density spectrum functions. To test the capabilities of the proposed approach, several testbeds have been employed, i.e. the frequencial study of mathematical functions. As a possible application of the architecture, a highly interesting problem in the field of automatic control is addressed: the recognition of a controlled DC motor operating state.
Similar articles
-
dFasArt: dynamic neural processing in FasArt model.Neural Netw. 2009 May;22(4):479-87. doi: 10.1016/j.neunet.2008.09.018. Epub 2008 Nov 24. Neural Netw. 2009. PMID: 19128936
-
Robust time delay estimation of bioelectric signals using least absolute deviation neural network.IEEE Trans Biomed Eng. 2005 Mar;52(3):454-62. doi: 10.1109/TBME.2004.843287. IEEE Trans Biomed Eng. 2005. PMID: 15759575
-
Neural network approach to continuous-time direct adaptive optimal control for partially unknown nonlinear systems.Neural Netw. 2009 Apr;22(3):237-46. doi: 10.1016/j.neunet.2009.03.008. Epub 2009 Mar 26. Neural Netw. 2009. PMID: 19362449
-
Nonlinear complex-valued extensions of Hebbian learning: an essay.Neural Comput. 2005 Apr;17(4):779-838. doi: 10.1162/0899766053429381. Neural Comput. 2005. PMID: 15829090 Review.
-
Motor control in a meta-network with attractor dynamics.Prog Brain Res. 2007;165:395-410. doi: 10.1016/S0079-6123(06)65025-5. Prog Brain Res. 2007. PMID: 17925260 Review.
Cited by
-
Persistence and storage of activity patterns in spiking recurrent cortical networks: modulation of sigmoid signals by after-hyperpolarization currents and acetylcholine.Front Comput Neurosci. 2012 Jun 29;6:42. doi: 10.3389/fncom.2012.00042. eCollection 2012. Front Comput Neurosci. 2012. PMID: 22754524 Free PMC article.
-
The Embodied Brain of SOVEREIGN2: From Space-Variant Conscious Percepts During Visual Search and Navigation to Learning Invariant Object Categories and Cognitive-Emotional Plans for Acquiring Valued Goals.Front Comput Neurosci. 2019 Jun 25;13:36. doi: 10.3389/fncom.2019.00036. eCollection 2019. Front Comput Neurosci. 2019. PMID: 31333437 Free PMC article. Review.
MeSH terms
LinkOut - more resources
Full Text Sources
Research Materials