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Winner-take-all (computing)
Winner-take-all is a computational principle applied in computational models of neural networks by which neurons in a layer compete with each other…
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Related topics
Related topics
10 relations
Artificial neural network
CMOS
Competitive learning
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Papers overview
Semantic Scholar uses AI to extract papers important to this topic.
2013
2013
Very high-resolution satellite data for improved land cover extraction of Larsemann Hills, Eastern Antarctica
S. Jawak
,
A. J. Luis
2013
Corpus ID: 121463803
Abstract We compared four different image classification methods to improve the accuracy of cryospheric land cover mapping from…
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2012
2012
Cellular Neural Networks with Switching Connections
Malcom W Devoe
,
Malcom W Devoe
2012
Corpus ID: 15386237
Artificial neural networks are widely used for parallel processing of data analysis and visual information. The most prominent…
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2010
2010
Memristor based STDP learning network for position detection
Idongesit E. Ebong
,
P. Mazumder
International Congress of Mathematicans
2010
Corpus ID: 36287344
Most neural networks have a basic competitive learning rule on top of a more involved processing algorithm. This work highlights…
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2006
2006
Palmprint Recognition Using ICA Based on Winner-Take-All Network and Radial Basis Probabilistic Neural Network
L. Shang
,
De-shuang Huang
,
Jixiang Du
,
Zhi-Kai Huang
International Symposium on Neural Networks
2006
Corpus ID: 206597899
This paper proposes a novel method for recognizing palmprint using the winner-take-all (WTA) network based independent component…
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2003
2003
Fusion techniques for automatic target recognition
Syed A. Rizvi
,
N. Nasrabadi
32nd Applied Imagery Pattern Recognition Workshop…
2003
Corpus ID: 38151984
In this paper, we investigate several fusion techniques for designing a composite classifier to improve the performance…
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1999
1999
Synchronization via multiplex pulse trains
H. Torikai
,
Toshimichi Saito
,
Wolfgang Schwarz
1999
Corpus ID: 15782525
The master-slave synchronization of a complex chaotic system using multiplex pulse trains is considered. Each master outputs a…
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1999
1999
High speed and high resolution WTA circuit
S. Vlassis
,
S. Siskos
ISCAS'99. Proceedings of the IEEE International…
1999
Corpus ID: 26420053
The winner-takes-all (WTA) circuits are very common elements in the VLSI implementation of neural networks, fuzzy systems and…
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1999
1999
Design of complementary low-power CMOS architectures for looser-take-all and winner-take-all
N. Donckers
,
C. Dualibe
,
M. Verleysen
Proceedings of the Seventh International…
1999
Corpus ID: 15821694
A novel architecture for winner-take-all (WTA) and looser-take-all (LTA) circuits is proposed. As compared with other…
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1999
1999
A mixture of local PCA learning algorithm for adaptive transform coding
Bai-ling Zhang
,
Q. Huang
,
Tom Gedeon
ICONIP'99. ANZIIS'99 & ANNES'99 & ACNN'99. 6th…
1999
Corpus ID: 120015288
Karhunen-Loeve transform (KLT) is the optimal linear transform for coding images under the assumption of stationarity. For images…
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Highly Cited
1993
Highly Cited
1993
Regulating innovative activity: The role of a public firm
Flavio Delbono
,
V. Denicoló
1993
Corpus ID: 152433158
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