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  End-to-end Learning for Graph Decomposition

Song, J., Andres, B., Black, M., Hilliges, O., & Tang, S. (2018). End-to-end Learning for Graph Decomposition. Retrieved from http://arxiv.org/abs/1812.09737.

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 Creators:
Song, Jie1, Author
Andres, Bjoern2, Author           
Black, Michael1, Author
Hilliges, Otmar1, Author
Tang, Siyu1, Author           
Affiliations:
1External Organizations, ou_persistent22              
2Computer Vision and Multimodal Computing, MPI for Informatics, Max Planck Society, ou_1116547              

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Free keywords: Computer Science, Computer Vision and Pattern Recognition, cs.CV
 Abstract: We propose a novel end-to-end trainable framework for the graph decomposition
problem. The minimum cost multicut problem is first converted to an
unconstrained binary cubic formulation where cycle consistency constraints are
incorporated into the objective function. The new optimization problem can be
viewed as a Conditional Random Field (CRF) in which the random variables are
associated with the binary edge labels of the initial graph and the hard
constraints are introduced in the CRF as high-order potentials. The parameters
of a standard Neural Network and the fully differentiable CRF are optimized in
an end-to-end manner. Furthermore, our method utilizes the cycle constraints as
meta-supervisory signals during the learning of the deep feature
representations by taking the dependencies between the output random variables
into account. We present analyses of the end-to-end learned representations,
showing the impact of the joint training, on the task of clustering images of
MNIST. We also validate the effectiveness of our approach both for the feature
learning and the final clustering on the challenging task of real-world
multi-person pose estimation.

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Language(s): eng - English
 Dates: 2018-12-232018
 Publication Status: Published online
 Pages: -
 Publishing info: -
 Table of Contents: -
 Rev. Type: -
 Identifiers: arXiv: 1812.09737
URI: http://arxiv.org/abs/1812.09737
BibTex Citekey: Song_arXiv1812.09737
 Degree: -

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