Human action recognition using trajectory-based representation

Haiam Adel Abdul-Azim; Elsayed E Hemayed;

Abstract


Recognizing human actions in video sequences has been a challenging problem in the last few years due to its real-world applications. A lot of action representation approaches have been proposed to improve the action recognition performance. Despite the popularity of local features-based approaches together with “Bag-of-Words” model for action representation, it fails to capture adequate spatial or temporal relationships. In an attempt to overcome this problem, a trajectory-based local representation approaches have been proposed to capture the temporal information. This paper introduces an improvement of trajectory-based human action recognition approaches to capture discriminative temporal relationships. In our approach, we extract trajectories by tracking the detected spatio-temporal interest points named “cuboid features” with matching its SIFT descriptors over the consecutive frames. We, also, propose a linking and exploring method to obtain efficient trajectories for motion representation in realistic conditions. Then the volumes around the trajectories’ points are described to represent human actions based on the Bag-of-Words (BOW) model. Finally, a support vector machine is used to classify human actions. The effectiveness of the proposed approach was evaluated on three popular datasets (KTH, Weizmann and UCF sports). Experimental results showed that the proposed approach yields considerable performance improvement over the state-of-the-art approaches.


Other data

Title Human action recognition using trajectory-based representation
Authors Haiam Adel Abdul-Azim ; Elsayed E Hemayed 
Keywords Human action recognitionSpatio-temporal featuresCuboid detectorTrajectory-based feature descriptionBag-of-Words
Issue Date 1-Jul-2015
Publisher Elsevier
Journal Egyptian Informatics Journal 
DOI https://www.sciencedirect.com/science/article/pii/S1110866515000201?via%3Dihub

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