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A Novel Human Action Recognition and Behaviour Analysis Technique using SWFHOG

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TLDR
The proposed SWFHOG method shows promising results as compared to earlier methods, and is tested against Camera view angle change and imperfect actions using Weizmann robustness testing datasets.
Abstract
In this paper, a new local feature, called, Salient Wavelet Feature with Histogram of Oriented Gradients (SWFHOG) is introduced for human action recognition and behaviour analysis. In the proposed approach, regions having maximum information are selected based on their entropies. The SWF feature descriptor is formed by using the wavelet sub-bands obtained by applying wavelet decomposition to selected regions. To improve the accuracy further, the SWF feature vector is combined with the Histogram of Oriented Gradient global feature descriptor to form the SWFHOG feature descriptor. The proposed algorithm is evaluated using publicly available KTH, Weizmann, UT Interaction, and UCF Sports datasets for action recognition. The highest accuracy of 98.33% is achieved for the UT interaction dataset. The proposed SWFHOG feature descriptor is tested for behaviour analysis to identify the actions as normal or abnormal. The actions from SBU Kinect and UT Interaction dataset are divided into two sets as Normal Behaviour and Abnormal Behaviour. For the application of behaviour analysis, 95% recognition accuracy is achieved for the SBU Kinect dataset and 97% accuracy is obtained for the UT Interaction dataset. Robustness of the proposed SWFHOG algorithm is tested against Camera view angle change and imperfect actions using Weizmann robustness testing datasets. The proposed SWFHOG method shows promising results as compared to earlier methods.

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References
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Journal ArticleDOI

Video-based human activity recognition using multilevel wavelet decomposition and stepwise linear discriminant analysis.

TL;DR: The weighted average recognition rate for the WS-HAR was 97% across the two different datasets that is a significant improvement in classication accuracy compared to the existing well-known statistical and state-of-the-art methods.
Book ChapterDOI

Spatio-Temporal VLAD Encoding for Human Action Recognition in Videos

TL;DR: This work proposes Spatio-temporal VLAD (ST-VLAD), an extended encoding method which incorporates spatio-tem temporal information within the encoding process by proposing a video division and extracting specific information over the feature group of each video split.
Journal ArticleDOI

Human action recognition with salient trajectories

TL;DR: Two kinds of trajectory saliency values, appearance and motion saliency, are calculated and combined to capture complementary information and the combined saliency is utilized to prune redundant trajectories, and a compact and discriminating set of trajectories is obtained.
Journal ArticleDOI

Online Human Interaction Detection and Recognition With Multiple Cameras

TL;DR: The approach holds promise to become an effective building block for the analysis of real-time human behavior from multiple cameras, and is extensively evaluate on four single view publicly available data sets.
Journal ArticleDOI

Human activity recognition using mixture of heterogeneous features and sequential minimal optimization

TL;DR: By employing the time efficiency and optimality of SMO to train SVM, the system is trained for both single person and multi-human action classification with improved accuracy and a generalized hierarchy of actions has been presented in this paper to demonstrate the extension of the methodology.
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