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Fault tolerance and redundancy of a neural net for the classification of acoustic data

Fault tolerance and redundancy of a neural net for the classification of acoustic data
Fault tolerance and redundancy of a neural net for the classification of acoustic data
1061-1064
Emmerson, M. D.
98374280-664f-4efd-91ee-817a8c8f03a0
Damper, R. I.
6e0e7fdc-57ec-44d4-bc0f-029d17ba441d
Hey, A. J. G.
1e410ccc-7356-4694-89eb-f84410675416
Upstill, C.
43e54278-486b-40e4-9ca1-c63aa8afae19
Emmerson, M. D.
98374280-664f-4efd-91ee-817a8c8f03a0
Damper, R. I.
6e0e7fdc-57ec-44d4-bc0f-029d17ba441d
Hey, A. J. G.
1e410ccc-7356-4694-89eb-f84410675416
Upstill, C.
43e54278-486b-40e4-9ca1-c63aa8afae19

Emmerson, M. D., Damper, R. I., Hey, A. J. G. and Upstill, C. (1991) Fault tolerance and redundancy of a neural net for the classification of acoustic data. IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP '91), Toronto, Canada. pp. 1061-1064 .

Record type: Conference or Workshop Item (Paper)

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More information

Published date: 1991
Additional Information: Organisation: IEEE Address: Toronto, Canada
Venue - Dates: IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP '91), Toronto, Canada, 1991-01-01
Organisations: Electronics & Computer Science, IT Innovation, Southampton Wireless Group

Identifiers

Local EPrints ID: 250276
URI: http://eprints.soton.ac.uk/id/eprint/250276
PURE UUID: a933d996-ea58-4dbd-adb2-25632a9038b4

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Date deposited: 27 Jun 2003
Last modified: 24 Mar 2020 17:36

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Contributors

Author: M. D. Emmerson
Author: R. I. Damper
Author: A. J. G. Hey
Author: C. Upstill

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