| Literature DB >> 32313415 |
Il Yong Chun1, David Hong1, Ben Adcock2, Jeffrey A Fessler1.
Abstract
Convolutional analysis operator learning (CAOL) enables the unsupervised training of (hierarchical) convolutional sparsifying operators or autoencoders from large datasets. One can use many training images for CAOL, but a precise understanding of the impact of doing so has remained an open question. This paper presents a series of results that lend insight into the impact of dataset size on the filter update in CAOL. The first result is a general deterministic bound on errors in the estimated filters, and is followed by a bound on the expected errors as the number of training samples increases. The second result provides a high probability analogue. The bounds depend on properties of the training data, and we investigate their empirical values with real data. Taken together, these results provide evidence for the potential benefit of using more training data in CAOL.Entities:
Year: 2019 PMID: 32313415 PMCID: PMC7170269 DOI: 10.1109/lsp.2019.2921446
Source DB: PubMed Journal: IEEE Signal Process Lett ISSN: 1070-9908 Impact factor: 3.109