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Kekeç et al., 2014 - Google Patents

Contextually constrained deep networks for scene labeling

Kekeç et al., 2014

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Document ID
5153692572302031740
Author
Kekeç T
Emonet R
Fromont E
Trémeau A
Wolf C
Publication year
Publication venue
British Machine Vision Conference, 2014

External Links

Snippet

Learning using deep learning architectures is a difficult problem: the complexity of the prediction model and the difficulty of solving non-convex optimization problems inherent to most learning algorithms can both lead to overfitting phenomena and bad local optima. To …
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