Title :
Working memory networks for learning multiple groupings of temporally ordered events: applications to 3-D visual object recognition
Author :
Bradski, Gary ; Carpenter, Gail A. ; Grossberg, Stephen
Author_Institution :
Boston Univ., MA, USA
Abstract :
Working memory neural networks which encode the invariant temporal order of sequential events that may be presented at widely differing speeds, durations, and interstimulus intervals are characterized. Working memory, a kind of short-term memory, can be quickly erased by a distracting event, unlike long-term memory. The authors describe a working memory architecture for the storage of temporal order information across a series of item representations. This temporal order code is designed to enable all possible groupings of sequential events to be stably learned and remembered in real time, even as new events perturb the system. Such a competence is needed in neural architectures which self-organize learned codes. Using such a working memory, a self-organizing architecture for invariant 3D visual object recognition, based on the model of M. Siebert and A.M. Waxman (1990), is described
Keywords :
computer vision; computerised pattern recognition; learning systems; neural nets; self-adjusting systems; durations; events presentation speed; interstimulus intervals; invariant 3D visual object recognition; item representations; learned codes; multiple groupings; real-time memorization; self-organizing architecture; sequential events; short-term memory; temporally ordered events; working memory neural networks; Adaptive filters; Adaptive systems; Memory architecture; Neural networks; Object recognition; Psychology; Real time systems; Speech coding; Telephony;
Conference_Titel :
Neural Networks, 1991., IJCNN-91-Seattle International Joint Conference on
Conference_Location :
Seattle, WA
Print_ISBN :
0-7803-0164-1
DOI :
10.1109/IJCNN.1991.155269