Journal of
Systemics, Cybernetics and Informatics
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ISSN: 1690-4524 (Online)


Peer Reviewed Journal via three different mandatory reviewing processes, since 2006, and, from September 2020, a fourth mandatory peer-editing has been added.

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Published by
The International Institute of Informatics and Cybernetics


Re-Published in
Academia.edu
(A Community of about 40.000.000 Academics)


Honorary Editorial Advisory Board's Chair
William Lesso (1931-2015)

Editor-in-Chief
Nagib C. Callaos


Sponsored by
The International Institute of
Informatics and Systemics

www.iiis.org
 

Editorial Advisory Board

Quality Assurance

Editors

Journal's Reviewers
Call for Special Articles
 

Description and Aims

Submission of Articles

Areas and Subareas

Information to Contributors

Editorial Peer Review Methodology

Integrating Reviewing Processes


Editorial Introduction – Sustainable, Smart and Systemic Design Post-Anthropocene: Through a Transdisciplinary Lens
Marie Davidová, Susu Nousala, Thomas J. Marlowe
(pages: 1-10)

Systems Changes Learning: Recasting and Reifying Rhythmic Shifts for Doing, Alongside Thinking and Making
David Ing
(pages: 11-73)

Evaluating the Impact of Preconditions for Systemic Human and Non-human Communities
Susu Nousala
(pages: 74-91)

Post-Anthropocene_2.0: Alternative Scenarios through Nature/Computing Coalition Applicable in Architecture
Yannis Zavoleas
(pages: 92-120)

Applying a Systemic Approach for Sustainable Urban Hillside Landscape Design and Planning: The Case Study City of Chongqing in China
Xiao Hu, Magda Sibley, Marie Davidová
(pages: 121-153)

Rethinking Sustainability: Mapping Microclimatic Conditions on Buildings as a Regenerative Design Strategy
Ana Zimbarg
(pages: 154-172)


 

Abstracts

 


ABSTRACT


Video Summarization Using Deep Action Recognition Features and Robust Principal Component Analysis

Daniel M. Claborne, Karl T. Pazdernik, Steven J. Rysavy, Michael J. Henry


In an instance where desired pre-defined actions, behaviors, or other categories are known a priori, various video classification and recognition models can be trained to discover those classifications and their location within the video. Absent that information, one might still be tasked with identifying interesting portions within a video, a process which—if done manually—is onerous and time-consuming as it requires manual inspection of the video itself. Recognizing high-level interesting segments within a whole video has been a general area of interest due to the ubiquity of video data. However the size of the data makes storage, retrieval, and inspection of large collections of videos cumbersome. This problem motivates the task of generating shortened clips highlighting the primary content of a video, relieving the burden of having to watch the entire video. This paper presents an unsupervised method of creating shortened clips of videos, enabling the rapid review of the most interesting content within a video. Our method uses features extracted from pre-trained action recognition models as input to online moving window robust principal component analysis to generate summaries. The procedure is tested on a publicly available video summarization dataset and demonstrates comparable performance to state-of-the-art in an un-augmented setting while requiring no training.

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