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Action-02MCF: A Robust Space-Time Correlation Filter for Action Recognition in Clutter and Adverse Lighting Conditions

conference contribution
posted on 2024-11-03, 14:29 authored by Anwaar Ulhaq, Xiaoxia Yin, Yunchan Zhang, Iqbal GondalIqbal Gondal
Human actions are spatio-temporal visual events and recognizing human actions in different conditions is still a challenging computer vision problem. In this paper, we introduce a robust feature based space-time correlation filter, called Action-02MCF (0’zero-aliasing’ 2M’ Maximum Margin’) for recognizing human actions in video sequences. This filter combines (i) the sparsity of spatio-temporal feature space, (ii) generalization of maximum margin criteria, (iii) enhanced aliasing free localization performance of correlation filtering using (iv) rich context of maximally stable space-time interest points into a single classifier. Its rich multi-objective function provides robustness, generalization and recognition as a single package. Action-02MCF can simultaneously localize and classify actions of interest even in clutter and adverse imaging conditions. We evaluate the performance of our proposed filter for challenging human action datasets. Experimental results verify the performance potential of our action-filter compared to other correlation filtering based action recognition approaches.

History

Related Materials

  1. 1.
    DOI - Is published in 10.1007/978-3-319-48680-2_41
  2. 2.
    ISBN - Is published in 9783319486796 (urn:isbn:9783319486796)

Start page

465

End page

476

Total pages

12

Outlet

Proceedings of the 17th International Conference of Advanced Concepts for Intelligent Vision System (ACIVS 2016)

Editors

Jacques Blanc-Talon, Cosimo Distante, Wilfried Philips, Dan Popescu, Paul Scheunders

Name of conference

ACIVS 2016: LNCS 10016

Publisher

Springer Nature

Place published

Cham, Switzerland

Start date

2016-10-24

End date

2016-10-27

Language

English

Copyright

© Springer International Publishing AG 2016

Former Identifier

2006109970

Esploro creation date

2021-10-13