Combining generative and discriminative representation learning for lung CT analysis with convolutional restricted Boltzmann machines

Research output: Contribution to journalJournal articleResearchpeer-review

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Combining generative and discriminative representation learning for lung CT analysis with convolutional restricted Boltzmann machines. / van Tulder, Gijs; de Bruijne, Marleen.

In: IEEE Transactions on Medical Imaging, Vol. 35, No. 5, 2016, p. 1262-1272.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

van Tulder, G & de Bruijne, M 2016, 'Combining generative and discriminative representation learning for lung CT analysis with convolutional restricted Boltzmann machines', IEEE Transactions on Medical Imaging, vol. 35, no. 5, pp. 1262-1272. https://doi.org/10.1109/TMI.2016.2526687

APA

van Tulder, G., & de Bruijne, M. (2016). Combining generative and discriminative representation learning for lung CT analysis with convolutional restricted Boltzmann machines. IEEE Transactions on Medical Imaging, 35(5), 1262-1272. https://doi.org/10.1109/TMI.2016.2526687

Vancouver

van Tulder G, de Bruijne M. Combining generative and discriminative representation learning for lung CT analysis with convolutional restricted Boltzmann machines. IEEE Transactions on Medical Imaging. 2016;35(5):1262-1272. https://doi.org/10.1109/TMI.2016.2526687

Author

van Tulder, Gijs ; de Bruijne, Marleen. / Combining generative and discriminative representation learning for lung CT analysis with convolutional restricted Boltzmann machines. In: IEEE Transactions on Medical Imaging. 2016 ; Vol. 35, No. 5. pp. 1262-1272.

Bibtex

@article{3c84f42e283f4cb189ec6fbf9560badd,
title = "Combining generative and discriminative representation learning for lung CT analysis with convolutional restricted Boltzmann machines",
abstract = "The choice of features greatly influences the performance of a tissue classification system. Despite this, many systems are built with standard, predefined filter banks that are not optimized for that particular application. Representation learning methods such as restricted Boltzmann machines may outperform these standard filter banks because they learn a feature description directly from the training data. Like many other representation learning methods, restricted Boltzmann machines are unsupervised and are trained with a generative learning objective; this allows them to learn representations from unlabeled data, but does not necessarily produce features that are optimal for classification. In this paper we propose the convolutional classification restricted Boltzmann machine, which combines a generative and a discriminative learning objective. This allows it to learn filters that are good both for describing the training data and for classification. We present experiments with feature learning for lung texture classification and airway detection in CT images. In both applications, a combination of learning objectives outperformed purely discriminative or generative learning, increasing, for instance, the lung tissue classification accuracy by 1 to 8 percentage points. This shows that discriminative learning can help an otherwise unsupervised feature learner to learn filters that are optimized for classification.",
author = "{van Tulder}, Gijs and {de Bruijne}, Marleen",
year = "2016",
doi = "10.1109/TMI.2016.2526687",
language = "English",
volume = "35",
pages = "1262--1272",
journal = "I E E E Transactions on Medical Imaging",
issn = "0278-0062",
publisher = "Institute of Electrical and Electronics Engineers",
number = "5",

}

RIS

TY - JOUR

T1 - Combining generative and discriminative representation learning for lung CT analysis with convolutional restricted Boltzmann machines

AU - van Tulder, Gijs

AU - de Bruijne, Marleen

PY - 2016

Y1 - 2016

N2 - The choice of features greatly influences the performance of a tissue classification system. Despite this, many systems are built with standard, predefined filter banks that are not optimized for that particular application. Representation learning methods such as restricted Boltzmann machines may outperform these standard filter banks because they learn a feature description directly from the training data. Like many other representation learning methods, restricted Boltzmann machines are unsupervised and are trained with a generative learning objective; this allows them to learn representations from unlabeled data, but does not necessarily produce features that are optimal for classification. In this paper we propose the convolutional classification restricted Boltzmann machine, which combines a generative and a discriminative learning objective. This allows it to learn filters that are good both for describing the training data and for classification. We present experiments with feature learning for lung texture classification and airway detection in CT images. In both applications, a combination of learning objectives outperformed purely discriminative or generative learning, increasing, for instance, the lung tissue classification accuracy by 1 to 8 percentage points. This shows that discriminative learning can help an otherwise unsupervised feature learner to learn filters that are optimized for classification.

AB - The choice of features greatly influences the performance of a tissue classification system. Despite this, many systems are built with standard, predefined filter banks that are not optimized for that particular application. Representation learning methods such as restricted Boltzmann machines may outperform these standard filter banks because they learn a feature description directly from the training data. Like many other representation learning methods, restricted Boltzmann machines are unsupervised and are trained with a generative learning objective; this allows them to learn representations from unlabeled data, but does not necessarily produce features that are optimal for classification. In this paper we propose the convolutional classification restricted Boltzmann machine, which combines a generative and a discriminative learning objective. This allows it to learn filters that are good both for describing the training data and for classification. We present experiments with feature learning for lung texture classification and airway detection in CT images. In both applications, a combination of learning objectives outperformed purely discriminative or generative learning, increasing, for instance, the lung tissue classification accuracy by 1 to 8 percentage points. This shows that discriminative learning can help an otherwise unsupervised feature learner to learn filters that are optimized for classification.

U2 - 10.1109/TMI.2016.2526687

DO - 10.1109/TMI.2016.2526687

M3 - Journal article

C2 - 26886968

VL - 35

SP - 1262

EP - 1272

JO - I E E E Transactions on Medical Imaging

JF - I E E E Transactions on Medical Imaging

SN - 0278-0062

IS - 5

ER -

ID: 162034567