Adaptive Gaussian mixtures are widely used to model the dynamic background for real-time object detection. Recently the convergence speed of this approach is improved and a relatively robust statistical framework is proposed by Lee (PAMI, 2005). However, object quality still remains unacceptable due to poor Gaussian mixture quality, susceptibility to background/foreground data proportion, and inability to handle intrinsic background motion. This paper proposes an effective technique to eliminate these drawbacks by modifying the new model induction logic and using intensity difference thresholding to detect objects from one or more believe-to-be backgrounds. Experimental results on two benchmark datasets confirm that the object quality of th...
In this paper, we conduct an investigation into back-ground subtraction techniques using Gaussian Mi...
In this study, one adaptive spatiotemporal background modelling algorithm is proposed for robust and...
Abstract—Adaptive Gaussian mixtures have been used for modeling nonstationary temporal distributions...
Adaptive Gaussian mixtures are widely used to model the dynamic background for real-time object de-t...
Adaptive background modelling based object detection techniques are widely used in machine vision ap...
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...
In this paper, we propose a new background subtraction technique based on perceptual mixture-of-Gaus...
We present an adaptive and efficient background modeling strategy for real-time object detection in ...
[[abstract]]In this paper, we integrate shadow information into the background model of a scene in a...
Background subtraction is a method commonly used to segment objects of interest in image sequences. ...
Gaussian Mixture Model (GMM) is an effective method for extracting foreground objects from video seq...
Background subtraction methods are widely exploited for moving object detection in many applications...
Moving object detection becomes the important task in the video surveilance system. Defining the thr...
The 2014 Special Issue of Machine Vision and Applications discuss papers on the background modeling ...
In this paper, we conduct an investigation into back-ground subtraction techniques using Gaussian Mi...
In this study, one adaptive spatiotemporal background modelling algorithm is proposed for robust and...
Abstract—Adaptive Gaussian mixtures have been used for modeling nonstationary temporal distributions...
Adaptive Gaussian mixtures are widely used to model the dynamic background for real-time object de-t...
Adaptive background modelling based object detection techniques are widely used in machine vision ap...
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...
In this paper, we propose a new background subtraction technique based on perceptual mixture-of-Gaus...
We present an adaptive and efficient background modeling strategy for real-time object detection in ...
[[abstract]]In this paper, we integrate shadow information into the background model of a scene in a...
Background subtraction is a method commonly used to segment objects of interest in image sequences. ...
Gaussian Mixture Model (GMM) is an effective method for extracting foreground objects from video seq...
Background subtraction methods are widely exploited for moving object detection in many applications...
Moving object detection becomes the important task in the video surveilance system. Defining the thr...
The 2014 Special Issue of Machine Vision and Applications discuss papers on the background modeling ...
In this paper, we conduct an investigation into back-ground subtraction techniques using Gaussian Mi...
In this study, one adaptive spatiotemporal background modelling algorithm is proposed for robust and...
Abstract—Adaptive Gaussian mixtures have been used for modeling nonstationary temporal distributions...