i-RevNet: Deep Invertible Networks
Document type :
Communication dans un congrès avec actes
Title :
i-RevNet: Deep Invertible Networks
Author(s) :
Jacobsen, Jörn-Henrik [Auteur]
Instituut voor Informatica [IvI]
Smeulders, Arnold [Auteur]
Instituut voor Informatica [IvI]
Oyallon, Edouard [Auteur]
Centre de vision numérique [CVN]
Organ Modeling through Extraction, Representation and Understanding of Medical Image Content [GALEN]
Sequential Learning [SEQUEL]
Département d'informatique - ENS-PSL [DI-ENS]
Organ Modeling through Extraction, Representation and Understanding of Medical Image Content [GALEN-POST]
Instituut voor Informatica [IvI]
Smeulders, Arnold [Auteur]
Instituut voor Informatica [IvI]
Oyallon, Edouard [Auteur]
Centre de vision numérique [CVN]
Organ Modeling through Extraction, Representation and Understanding of Medical Image Content [GALEN]
Sequential Learning [SEQUEL]
Département d'informatique - ENS-PSL [DI-ENS]
Organ Modeling through Extraction, Representation and Understanding of Medical Image Content [GALEN-POST]
Conference title :
ICLR 2018 - International Conference on Learning Representations
City :
Vancouver
Country :
Canada
Start date of the conference :
2018-04-30
Publication date :
2018-04
English keyword(s) :
analyzing CNNs
deep learning
invertible CNNs
deep learning
invertible CNNs
HAL domain(s) :
Informatique [cs]/Intelligence artificielle [cs.AI]
Statistiques [stat]/Machine Learning [stat.ML]
Statistiques [stat]/Machine Learning [stat.ML]
English abstract : [en]
It is widely believed that the success of deep convolutional networks is based on progressively discarding uninformative variability about the input with respect to the problem at hand. This is supported empirically by the ...
Show more >It is widely believed that the success of deep convolutional networks is based on progressively discarding uninformative variability about the input with respect to the problem at hand. This is supported empirically by the difficulty of recovering images from their hidden representations, in most commonly used network architectures. In this paper we show via a one-to-one mapping that this loss of information is not a necessary condition to learn representations that generalize well on complicated problems, such as ImageNet. Via a cascade of homeomorphic layers, we build the i-RevNet, a network that can be fully inverted up to the final projection onto the classes, i.e. no information is discarded. Building an invertible architecture is difficult, for one, because the local inversion is ill-conditioned, we overcome this by providing an explicit inverse. An analysis of i-RevNets learned representations suggests an alternative explanation for the success of deep networks by a progressive contraction and linear separation with depth. To shed light on the nature of the model learned by the i-RevNet we reconstruct linear interpolations between natural image representations.Show less >
Show more >It is widely believed that the success of deep convolutional networks is based on progressively discarding uninformative variability about the input with respect to the problem at hand. This is supported empirically by the difficulty of recovering images from their hidden representations, in most commonly used network architectures. In this paper we show via a one-to-one mapping that this loss of information is not a necessary condition to learn representations that generalize well on complicated problems, such as ImageNet. Via a cascade of homeomorphic layers, we build the i-RevNet, a network that can be fully inverted up to the final projection onto the classes, i.e. no information is discarded. Building an invertible architecture is difficult, for one, because the local inversion is ill-conditioned, we overcome this by providing an explicit inverse. An analysis of i-RevNets learned representations suggests an alternative explanation for the success of deep networks by a progressive contraction and linear separation with depth. To shed light on the nature of the model learned by the i-RevNet we reconstruct linear interpolations between natural image representations.Show less >
Language :
Anglais
Peer reviewed article :
Oui
Audience :
Internationale
Popular science :
Non
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