Learning background statistics is an essential task for several visual surveillance applications such as incident detection and traffic management. In this paper, we propose a new method for modeling background statistics of dynamic scene. Each pixel is represented with layers of Gaus-sian distributions. Using recursive Bayesian learning, we estimate the probability distribution of mean and covariance of each Gaussian. The proposed algorithm preserves the multimodality of the background and estimates the number of necessary layers for representing each pixel. We compare our results with the Gaussian mixture background model. Experiments conducted on synthetic and video data demonstrate the superior performance of the proposed approach
Many motion detection and tracking algorithms rely on the process of background subtraction, a techn...
AbstractBackground subtraction models based on mixture of Gaussians have been extensively used for d...
Abstract—For better background modeling in scenes with nonstationary background, a background modeli...
We propose a Bayesian learning method to capture the background statistics of a dynamic scene. We mo...
Background modeling and subtraction is a fundamental task in many computer vision and video processi...
Gaussian mixture models (GMM) is used to represent the dynamic background in a surveillance video to...
Gaussian mixture models (GMM) is used to represent the dynamic background in a surveillance video to...
Abstract—Video analysis often begins with background subtraction. This problem is often approached i...
In this paper a new probabilistic method for background modelling is proposed, aimed at the applicat...
Detection and tracking of foreground objects in a video scene requires a robust technique for backgr...
Usually, background subtraction is approached as a pixel-based process, and the output is (a possibl...
Background subtraction is a method commonly used to segment objects of interest in image sequences. ...
Background subtraction models based on mixture of Gaussians have been extensively used for detecting...
This work deals with the problems of performance evaluation and background modelling for the detecti...
Abstract—Adaptive Gaussian mixtures have been used for modeling nonstationary temporal distributions...
Many motion detection and tracking algorithms rely on the process of background subtraction, a techn...
AbstractBackground subtraction models based on mixture of Gaussians have been extensively used for d...
Abstract—For better background modeling in scenes with nonstationary background, a background modeli...
We propose a Bayesian learning method to capture the background statistics of a dynamic scene. We mo...
Background modeling and subtraction is a fundamental task in many computer vision and video processi...
Gaussian mixture models (GMM) is used to represent the dynamic background in a surveillance video to...
Gaussian mixture models (GMM) is used to represent the dynamic background in a surveillance video to...
Abstract—Video analysis often begins with background subtraction. This problem is often approached i...
In this paper a new probabilistic method for background modelling is proposed, aimed at the applicat...
Detection and tracking of foreground objects in a video scene requires a robust technique for backgr...
Usually, background subtraction is approached as a pixel-based process, and the output is (a possibl...
Background subtraction is a method commonly used to segment objects of interest in image sequences. ...
Background subtraction models based on mixture of Gaussians have been extensively used for detecting...
This work deals with the problems of performance evaluation and background modelling for the detecti...
Abstract—Adaptive Gaussian mixtures have been used for modeling nonstationary temporal distributions...
Many motion detection and tracking algorithms rely on the process of background subtraction, a techn...
AbstractBackground subtraction models based on mixture of Gaussians have been extensively used for d...
Abstract—For better background modeling in scenes with nonstationary background, a background modeli...