VLSI Implementation of Neural Classifiers
Keyword(s):
The embedding of neural networks in real-time systems performing classification and clustering tasks requires that models be implemented in hardware. A flexible, pipelined associative memory capable of operating in real-time is proposed as a hardware substrate for the emulation of neural fixed-radius clustering and binary classification schemes. This paper points out several important considerations in the development of hardware implementations. As a specific example, it is shown how the ART1 paradigm can be functionally emulated by the limited resolution pipelined architecture, in the absence of full parallelism.
2020 ◽
Vol 50
(9)
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pp. 1760-1777
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Keyword(s):
Keyword(s):
2014 ◽
Vol 5
(1)
◽
pp. 37-60
2000 ◽
Vol 25
(5)
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pp. 86-95
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