Bio-Inspired Temporal-Decoding Network Topologies for the Accurate Recognition of Spike Patterns

Journal Title: Transactions on Machine Learning and Artificial Intelligence - Year 2015, Vol 3, Issue 4

Abstract

In this paper will be presented simple and effective temporal-decoding network topologies, based on a neuron model similar to the classic Leaky Integrate-and-Fire, but including the spike latency effect, a neuron property able to take into account that the firing of a given neuron is not instantaneous, but it occurs after a continuous-time delay depending on the inner state. These structures are able to detect spike sequences composed of pulses belonging to neuron ensembles, exploiting basic biological neuron mechanisms. According to the biological counterpart, with these structures is possible to achieve a high temporal accuracy, but also deal with the natural variability present in spike trains. In addition, the connection of these neural structures at a higher level make possible to afford some pattern recognition problems, operating a distributed and parallel input data processing.

Authors and Affiliations

Gianluca Susi

Keywords

Related Articles

Temperature, Precipitation and Relative Humidity Fluctuation of Makkah Al Mukarramah, Kingdom of Saudi Arabia (1985-2016)

The study presents the temperature, rainfall and relative humidity fluctuation of Makkah Al Mukarramah, Saudi Arabia for a time period of 1985-2016 in terms of general climatology, climate change, seasonal pattern and ex...

The GeoRSS Model and the Design of a Ranking Algorithm in Semantic Web

Ecommerce has become nowadays an influential actor in the international trade industry and has greatly contributed in the economic development of nations. The fact of dealing with this field along with the evolution of t...

IoT Middleware Architecture based on Ontologies to Model Logistic Process

In recent years, the Internet of Things (IoT) become a promising topic of technical social and economic significance, especially with the high number of developed sensors and technologies. Logistic applications are a per...

Accuracy of the Java Simulation for the Charge Motion in Electric and Magnetic Fields

The accuracy of the Java simulation by the Runge-Kutta method for the charge motion in electric and magnetic fields has been investigated in comparison with the analytical solution. The error of the simulation depends on...

Authorship Identification using Generalized Features and Analysis of Computational Method

Authorship Identification is being used for forensics analysis and humanities to identify the author of anonymous text used for communication. Authorship Identification can be achieved by selecting the textual features o...

Download PDF file
  • EP ID EP278836
  • DOI 10.14738/tmlai.34.1438
  • Views 37
  • Downloads 0

How To Cite

Gianluca Susi (2015). Bio-Inspired Temporal-Decoding Network Topologies for the Accurate Recognition of Spike Patterns. Transactions on Machine Learning and Artificial Intelligence, 3(4), 27-41. https://europub.co.uk/articles/-A-278836