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master thesis

Learning Separable Filters with Shared Parts

Tekin, Bugra  
2013

Learned image features can provide great accuracy in many Computer Vision tasks. However, when the convolution filters used to learn image features are numerous and not separable, feature extraction becomes computationally demanding and impractical to use in real-world situations. In this thesis work, a method for learning a small number of separable filters to approximate an arbitrary non-separable filter bank is developed. In this approach, separable filters are learned by grouping the arbitrary filters into a tensor and optimizing a tensor decomposition problem. The separable filter learning with tensor decomposition is general and can be applied to generic filter banks to reduce the computational burden of convolutions without a loss in performance. Moreover, the proposed approach is orders of magnitude faster than the approach of a recent studies based on l1-norm minimization.

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Type
master thesis
Author(s)
Tekin, Bugra  
Advisors
Fua, Pascal  
•
Lepetit, Vincent  
Date Issued

2013

Subjects

Convolutional sparse coding

•

filter learning

•

features extraction

•

separable convolution

•

segmentation of linear structures

•

image denoising

•

convolutional neural networks

•

tensor decomposition

Written at

EPFL

EPFL units
CVLAB  
Available on Infoscience
July 10, 2014
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/104996
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