2005
DOI: 10.1109/tpami.2005.213
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Bayesian modeling of dynamic scenes for object detection

Abstract: Accurate detection of moving objects is an important precursor to stable tracking or recognition. In this paper, we present an object detection scheme that has three innovations over existing approaches.Firstly, the model of the intensities of image pixels as independent random variables is challenged and it is asserted that useful correlation exists in intensities of spatially proximal pixels. This correlation is exploited to sustain high levels of detection accuracy in the presence of dynamic backgrounds. By… Show more

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Cited by 586 publications
(439 citation statements)
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References 38 publications
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“…Elgammal et al proposed to model both background and foreground pixel intensities by a nonparametric kernel density estimation [6]. In [7], Sheikh and Shah proposed to model the full background with a single distribution, instead of one distribution per pixel, and to include location into the model. Because these methods do not decouple illumination from other causes of background changes, they are more sensitive to drastic light effects than our approach.…”
Section: Related Workmentioning
confidence: 99%
“…Elgammal et al proposed to model both background and foreground pixel intensities by a nonparametric kernel density estimation [6]. In [7], Sheikh and Shah proposed to model the full background with a single distribution, instead of one distribution per pixel, and to include location into the model. Because these methods do not decouple illumination from other causes of background changes, they are more sensitive to drastic light effects than our approach.…”
Section: Related Workmentioning
confidence: 99%
“…In the proposed approach we use a uniform distribution to model the foreground process (as proposed in [27]): p(x s |c%) = J. w .…”
Section: Foreground Modelingmentioning
confidence: 99%
“…Such layered representation facilitates detecting the foreground under static or dynamic background and in the presence of nominal camera motion. In [49] KDE was used in a joint domain-range representation of image pixel (r,g,b,x,y), which exploits the spatial correlation between neighboring pixels. Parag et al [41] proposed an approach for feature selection for the KDE framework where boosting based ensemble learning was used to combine different features.…”
Section: Kde-background Practice and Other Nonparametric Modelsmentioning
confidence: 99%