DocumentCode
3013648
Title
ATM data classification with an artificial neural network
Author
Sundstrom, K. ; Rueda, A. ; McLeod, R.D.
Author_Institution
Telecommun. Res. Lab., Canada
fYear
1997
fDate
22-23 May 1997
Firstpage
276
Lastpage
279
Abstract
The ability to classify different data types in real time has many potential applications. Implemented in a switching element, data recognized to be time sensitive, such as voice, could be given higher priority or other special handling. Using competitive learning, it is possible to train a network to distinguish between audio, video and FTP data without an external supervisor. Unprocessed audio, video and FTP data exhibit strong linear trends which make it impossible for the neural network to learn the subtle variations in the data. Noticing that the three data types could be distinguished by their degree of correlation, a simple method of detrending was devised which allowed the data to be prepared for presentation to the neural network in real time. For this problem, the architecture best suited to classify the data types was determined to be an unsupervised, feed forward network. Using a competitive learning algorithm, the network was able to learn to classify the different input patterns without an external supervisor
Keywords
asynchronous transfer mode; correlation methods; data communication; feedforward neural nets; neural net architecture; pattern classification; telecommunication computing; unsupervised learning; visual communication; ATM data classification; FTP data; artificial neural network; audio; competitive learning algorithm; correlation; data types; neural network architecture; switching element; unsupervised feedforward network; video; voice; Artificial neural networks; Asynchronous transfer mode; Computer languages; Equations; Feeds; Least mean squares methods; Mathematical model; Neural networks; Speech recognition; Telecommunication switching;
fLanguage
English
Publisher
ieee
Conference_Titel
WESCANEX 97: Communications, Power and Computing. Conference Proceedings., IEEE
Conference_Location
Winnipeg, Man.
Print_ISBN
0-7803-4147-3
Type
conf
DOI
10.1109/WESCAN.1997.627153
Filename
627153
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