You are currently logged in as an
Institutional Subscriber.
If you would like to logout,
please click on the button below.
Home / Publications / E-library page
Only AES members and Institutional Journal Subscribers can download
A method for automatic recognition of hazardous acoustic events operating on a super computing cluster is introduced. The methods employed for detecting and classifying the acoustic events are outlined. The evaluation of the recognition engine is provided: both on the training set and using real-life signals. The algorithms yield sufficient performance in practical conditions to be employed in security surveillance systems. The specialized framework for parallel processing of multimedia data streams KASKADA, in which the methods are implemented, is briefly introduced. An experiment intended to assess outcomes of parallel processing of audio data on a supercomputing cluster is featured. It is shown that by employing supercomputing services the time needed to analyze the data is greatly reduced.
Author (s): Lopatka, Kuba; Czyzewski, Andrzej
Affiliation:
Gdansk University of Technology, Gdansk, Poland
(See document for exact affiliation information.)
AES Convention: 138
Paper Number:9301
Publication Date:
2015-05-06
Import into BibTeX
Session subject:
Applications in Audio
Permalink: https://aes2.org/publications/elibrary-page/?id=17725
(504KB)
Click to purchase paper as a non-member or login as an AES member. If your company or school subscribes to the E-Library then switch to the institutional version. If you are not an AES member Join the AES. If you need to check your member status, login to the Member Portal.
Lopatka, Kuba; Czyzewski, Andrzej; 2015; Recognition of Hazardous Acoustic Events Employing Parallel Processing on a Supercomputing Cluster [PDF]; Gdansk University of Technology, Gdansk, Poland; Paper 9301; Available from: https://aes2.org/publications/elibrary-page/?id=17725
Lopatka, Kuba; Czyzewski, Andrzej; Recognition of Hazardous Acoustic Events Employing Parallel Processing on a Supercomputing Cluster [PDF]; Gdansk University of Technology, Gdansk, Poland; Paper 9301; 2015 Available: https://aes2.org/publications/elibrary-page/?id=17725