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Feature guided biased gaussian mixture model for image matching
Journal article
Kun Sun, Peiran Li, Wenbing Tao, Yuanyan Tang. Feature guided biased gaussian mixture model for image matching[J]. Information Sciences, 2015, 295, 323-336.
Authors:
Kun Sun
;
Peiran Li
;
Wenbing Tao
;
Yuanyan Tang
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TC[WOS]:
21
TC[Scopus]:
22
IF:
0
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0
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Submit date:2019/02/11
Annealing
Biased
Deterministic
Em
Feature
Gmm
Guided
Image Matching
Tps
Robust learning of mixture models and its application on trial pruning for EEG signal analysis
Conference paper
Boyu Wang, Feng Wan, Peng Un Mak, Pui In Mak, Mang I Vai. Robust learning of mixture models and its application on trial pruning for EEG signal analysis[C], 2012, 408-419.
Authors:
Boyu Wang
;
Feng Wan
;
Peng Un Mak
;
Pui In Mak
;
Mang I Vai
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TC[Scopus]:
0
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Submit date:2018/12/24
Deterministic Annealing
Eeg Signals
Mixture Models
Robust Learning
Trial Pruning