In this study, one adaptive spatiotemporal background modelling algorithm is proposed for robust and reliable moving object detection in dynamic scene. First, a modified adaptive Gaussian mixture model (GMM) is presented to describe the temporal distribution of each pixel, based on which the spatial distribution of background is constructed by using non-parametric density estimation. By fusing the temporal and spatial distribution model, a heuristic strategy is presented for background subtraction. To reduce the computational cost, a novel criterion for adaptively determining the components number of GMM and the integral image method for calculating the spatial distribution model are proposed. Several experiments show that the proposed meth...
[[abstract]]Background subtraction is commonly used to detect foreground objects in video surveillan...
Modeling background and segmenting moving objects are significant techniques for video surveillance ...
Abstract: Detection is an inherent part of every advanced automatic tracking system. In this work we...
Abstract—For better background modeling in scenes with nonstationary background, a background modeli...
Traditional background subtraction methods model only tem-poral variation of each pixel. However, th...
This paper proposes a new background subtraction method for detecting moving objects from a time-var...
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...
Detection of moving foreground in video is very important for many applications, such as visual surv...
Gaussian mixture models (GMM) is used to represent the dynamic background in a surveillance video to...
Obtaining a dynamically updated background reference image is an important and challenging task for ...
We present an adaptive and efficient background modeling strategy for real-time object detection in ...
Adaptive background modelling based object detection techniques are widely used in machine vision ap...
Background subtraction models based on mixture of Gaussians have been extensively used for detecting...
AbstractBackground subtraction models based on mixture of Gaussians have been extensively used for d...
[[abstract]]Background subtraction is commonly used to detect foreground objects in video surveillan...
Modeling background and segmenting moving objects are significant techniques for video surveillance ...
Abstract: Detection is an inherent part of every advanced automatic tracking system. In this work we...
Abstract—For better background modeling in scenes with nonstationary background, a background modeli...
Traditional background subtraction methods model only tem-poral variation of each pixel. However, th...
This paper proposes a new background subtraction method for detecting moving objects from a time-var...
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...
Detection of moving foreground in video is very important for many applications, such as visual surv...
Gaussian mixture models (GMM) is used to represent the dynamic background in a surveillance video to...
Obtaining a dynamically updated background reference image is an important and challenging task for ...
We present an adaptive and efficient background modeling strategy for real-time object detection in ...
Adaptive background modelling based object detection techniques are widely used in machine vision ap...
Background subtraction models based on mixture of Gaussians have been extensively used for detecting...
AbstractBackground subtraction models based on mixture of Gaussians have been extensively used for d...
[[abstract]]Background subtraction is commonly used to detect foreground objects in video surveillan...
Modeling background and segmenting moving objects are significant techniques for video surveillance ...
Abstract: Detection is an inherent part of every advanced automatic tracking system. In this work we...