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Leveraging seed dictionaries to improve dictionary learning

Publication ,  Conference
Reichman, D; Malof, JM; Collins, LM
Published in: Proceedings International Conference on Image Processing Icip
August 3, 2016

Most state-of-the-art dictionary learning algorithms (DLAs) are iterative, and must begin with an initial estimate of the dictionary, referred to as the seed. A seed can be generated randomly, but it has been shown that choosing a more intelligent seed often yields a better solution. For example, a seed inferred using data from a related problem, or one handcrafted based on a priori knowledge of the problem at hand can yield better solutions. Seed dictionaries appear to encode valuable a priori information however, most DLAs discard the seed after initialization. This work investigates the questions of whether the information encoded in a good seed can be leveraged further, by potentially using the seed to influence learning after initialization. This is achieved by modifying the popular DLA K-SVD to use the seed as a prior during learning, by penalizing differences between the learned dictionary and the seed. The resulting algorithm, referred to as Seed Shrinkage Dictionary Learning (SSDL), is examined against K-SVD on image denoising experiments using several benchmark images. The results indicate that utilizing the seed as a prior in this way consistently yields improved denoising performance in our experiments. This simple approach motivates the development of more sophisticated approaches that leverage a priori information in useful seeds.

Duke Scholars

Published In

Proceedings International Conference on Image Processing Icip

DOI

ISSN

1522-4880

Publication Date

August 3, 2016

Volume

2016-August

Start / End Page

3723 / 3727
 

Citation

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Reichman, D., Malof, J. M., & Collins, L. M. (2016). Leveraging seed dictionaries to improve dictionary learning. In Proceedings International Conference on Image Processing Icip (Vol. 2016-August, pp. 3723–3727). https://doi.org/10.1109/ICIP.2016.7533055
Reichman, D., J. M. Malof, and L. M. Collins. “Leveraging seed dictionaries to improve dictionary learning.” In Proceedings International Conference on Image Processing Icip, 2016-August:3723–27, 2016. https://doi.org/10.1109/ICIP.2016.7533055.
Reichman D, Malof JM, Collins LM. Leveraging seed dictionaries to improve dictionary learning. In: Proceedings International Conference on Image Processing Icip. 2016. p. 3723–7.
Reichman, D., et al. “Leveraging seed dictionaries to improve dictionary learning.” Proceedings International Conference on Image Processing Icip, vol. 2016-August, 2016, pp. 3723–27. Scopus, doi:10.1109/ICIP.2016.7533055.
Reichman D, Malof JM, Collins LM. Leveraging seed dictionaries to improve dictionary learning. Proceedings International Conference on Image Processing Icip. 2016. p. 3723–3727.

Published In

Proceedings International Conference on Image Processing Icip

DOI

ISSN

1522-4880

Publication Date

August 3, 2016

Volume

2016-August

Start / End Page

3723 / 3727