Home // MMEDIA 2017, The Ninth International Conferences on Advances in Multimedia // View article
Extraction of Periodic Features from Video Signals
Authors:
Davide Alinovi
Riccardo Raheli
Keywords: features extraction; periodicity analysis; video processing; maximum likelihood estimation
Abstract:
In a number of application scenarios, proper video signals may exhibit simultaneous correlation characteristics over the space and time dimensions which jointly describe periodic features or behaviors. Examples of such scenarios may be found in video monitoring of physical systems, sport and athlete coaching with automatic video supervision, biomedical applications to newborn video monitoring for the detection of epileptic seizures or apnea episodes, surveillance systems and others. A general Maximum Likelihood (ML) approach to the detection of common periodic features possibly present in a set of video signals and the estimation of their characteristics, such as the fundamental frequency and the local amplitude, is proposed. Application examples in various scenarios are presented and the performance of the proposed ML solutions is shown to be effective.
Pages: 95 to 100
Copyright: Copyright (c) IARIA, 2017
Publication date: April 23, 2017
Published in: conference
ISSN: 2308-4448
ISBN: 978-1-61208-548-7
Location: Venice, Italy
Dates: from April 23, 2017 to April 27, 2017