2015 International Conference on Digital Image Computing: Techniques and Applications (DICTA) 2015
DOI: 10.1109/dicta.2015.7371320
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Violent Scene Detection Using a Super Descriptor Tensor Decomposition

Abstract: This article presents a new method for violent scene detection using super descriptor tensor decomposition. Multi-modal local features comprising auditory and visual features are extracted from Mel-frequency cepstral coefficients (including first and second order derivatives) and refined dense trajectories. There is usually a large number of dense trajectories extracted from a video sequence; some of these trajectories are unnecessary and can affect the accuracy. We propose to refine the dense trajectories by … Show more

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Cited by 4 publications
(1 citation statement)
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References 30 publications
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“…For the VSD2014H-subj.seg and VSD2014YT-subj.seg data sets, we have selected 5 approaches that stood out due to their diversity. They were proposed by Khokher et al [92], Ali et al [93], Lam et al [94], [95], Sarman et al [96], and Acar et al [97]. From the aforementioned, the approach proposed by Khokher et al [92] is the only one to surpass the best run at MediaEval.…”
Section: Benckmarking Of the State-of-the-art Methodsmentioning
confidence: 99%
“…For the VSD2014H-subj.seg and VSD2014YT-subj.seg data sets, we have selected 5 approaches that stood out due to their diversity. They were proposed by Khokher et al [92], Ali et al [93], Lam et al [94], [95], Sarman et al [96], and Acar et al [97]. From the aforementioned, the approach proposed by Khokher et al [92] is the only one to surpass the best run at MediaEval.…”
Section: Benckmarking Of the State-of-the-art Methodsmentioning
confidence: 99%