ScienceDirect® Home Skip Main Navigation Links
You have guest access to ScienceDirect. Find out more.
 
Home
Browse
My Settings
Alerts
Help
 Quick Search
 Search tips (Opens new window)
    Clear all fields    
Neural Networks
Volume 4, Issue 1, 1991, Pages 103-121
 
Font Size: Decrease Font Size  Increase Font Size
 Abstract - selected
Purchase PDF (1681 K)

 
 
 
Related Articles in ScienceDirect
View More Related Articles
 
View Record in Scopus
 
doi:10.1016/0893-6080(91)90036-5    How to Cite or Link Using DOI (Opens New Window)
Copyright © 1991 Published by Elsevier Science Ltd.

Original contribution

Pattern recognition by a distributed neural network: An industrial application

Yong Yao, Walter J. FreemanCorresponding Author Contact Information, Brian Burke and Qing Yang

University of California at Berkeley, USA

Received 20 November 1989; 
accepted 13 June 1990. ;
Available online 19 March 2003.

Purchase the full-text article



References and further reading may be available for this article. To view references and further reading you must purchase this article.

Abstract

In this report, a distributed neural network of coupled oscillators is applied to an industrial pattern recognition problem. The network stems from the study of the neurophysiology of the olfactory system. It is shown that the network serves as an associative memory, which possesses chaotic dynamics. The problem addressed is machine recognition of industrial screws, bolts, etc. in simulated real time in accordance with tolerated deviations from manufacturing specifications. After preprocessing, inputs are represented as 1 × 64 binary vectors. We show that our chaotic neural network can accomplish this pattern recognition task better than a standard Bayesian statistical method, a neural network binary autoassociator, a three-layer feedforward network under back propagation learning, and our earlier olfactory bulb model that relies on a Hopf bifurcation from equilibrium to limit cycle. The existence of the chaotic dynamics provides the network with its capability to suppress noise and irrelevant information with respect to the recognition task. The collective effectiveness of the “cell-assemblies” and the threshold function of each individual channel enhance the quality of the network as an associative memory. The network classifies an uninterrupted sequence of objects at 200 ms of simulated real time for each object. It reliably distinguishes the unacceptable objects (i.e., 100% correct classification), which is a crucial requirement for this specific application. The effectiveness of the chaotic dynamics may depend on the broad spectrum of the oscillations, which may force classification by spatial rather than temporal characteristics of the operation. Further study of this biologically derived model is needed to determine whether its chaotic dynamics rather than other as yet unidentified attributes is responsible for the superior performance, and, if so, how it contributes to that end.

Author Keywords: Autoassociator; Back propagation; Chaos; Collective effectiveness; Distributed neural network; Feature enhancement; Neural network industrial application; Minimum distance classifier; Nonlinear dynamics; Olfactory system; Pattern recognition

Article Outline

• References

Neural Networks
Volume 4, Issue 1, 1991, Pages 103-121
 
Home
Browse
My Settings
Alerts
Help
Elsevier.com (Opens new window)
About ScienceDirect  |  Contact Us  |  Information for Advertisers  |  Terms & Conditions  |  Privacy Policy
Copyright © 2008 Elsevier B.V. All rights reserved. ScienceDirect® is a registered trademark of Elsevier B.V.