Authors
Hanbaek Lyu, Georg Menz, Deanna Needell, Christopher Strohmeier
Publication date
2020/2/2
Conference
2020 Information Theory and Applications Workshop (ITA)
Pages
1-9
Publisher
IEEE
Description
Online nonnegative matrix factorization (ONMF) is a matrix factorization technique in the online setting where data are acquired in a streaming fashion and the matrix factors are updated each time. This enables factor analysis to be performed concurrently with the arrival of new data samples. In this article, we demonstrate how one can use online nonnegative matrix factorization algorithms to learn joint dictionary atoms from an ensemble of correlated data sets. We propose a temporal dictionary learning scheme for time-series data sets, based on ONMF algorithms. We demonstrate our dictionary learning technique in the application contexts of historical temperature data, video frames, and color images.
Total citations
2020202120222023131
Scholar articles
H Lyu, G Menz, D Needell, C Strohmeier - 2020 Information Theory and Applications Workshop …, 2020