Foreground detection has been used extensively in many applications such as people counting, traffic monitoring and face recognition. However, most of the existing detectors can only work under limited conditions. This happens because of the inability of the detector to distinguish foreground and background pixels, especially in complex situations. Our aim is to improve the robustness of foreground detection under sudden and gradual illumination change, colour similarity issue, moving background and shadow noise. Since it is hard to achieve robustness using a single model, we have combined several methods into an integrated system. The masked grey world algorithm is introduced to handle sudden illumination change. Colour co-occurrence model...
International audienceBackground modeling has emerged as a popular foreground detection technique fo...
The work described here aims at improving the performance of three building blocks of visual surveil...
Robust foreground object segmentation via background modelling is a difficult problem in cluttered e...
Foreground detection has been used extensively in many applications such as people counting, traffic...
Foreground detection has been used extensively in many applications such as people counting, traffic...
Abstract. Foreground detection is one of the most important and chal-lenging problems in computer vi...
Foreground detection is an essential preprocessing step for many image processing applications such ...
The 2014 Special Issue of Machine Vision and Applications discuss papers on the background modeling ...
We propose a region-based foreground object segmentation method capable of dealing with image sequen...
Foreground segmentation is an essential task in many image processing applications and a commonly us...
A robust foreground object segmentation technique is proposed, capable of dealing with image sequenc...
This paper presents a robust foreground detection method capable of adapting to different motion spe...
The problem of foreground detection in real-time video surveillance applications is addressed. Propo...
Background subtraction is a fundamental low-level processing task in numerous computer vision applic...
This paper presents a novel method of foreground segmentation that distinguishes moving objects from...
International audienceBackground modeling has emerged as a popular foreground detection technique fo...
The work described here aims at improving the performance of three building blocks of visual surveil...
Robust foreground object segmentation via background modelling is a difficult problem in cluttered e...
Foreground detection has been used extensively in many applications such as people counting, traffic...
Foreground detection has been used extensively in many applications such as people counting, traffic...
Abstract. Foreground detection is one of the most important and chal-lenging problems in computer vi...
Foreground detection is an essential preprocessing step for many image processing applications such ...
The 2014 Special Issue of Machine Vision and Applications discuss papers on the background modeling ...
We propose a region-based foreground object segmentation method capable of dealing with image sequen...
Foreground segmentation is an essential task in many image processing applications and a commonly us...
A robust foreground object segmentation technique is proposed, capable of dealing with image sequenc...
This paper presents a robust foreground detection method capable of adapting to different motion spe...
The problem of foreground detection in real-time video surveillance applications is addressed. Propo...
Background subtraction is a fundamental low-level processing task in numerous computer vision applic...
This paper presents a novel method of foreground segmentation that distinguishes moving objects from...
International audienceBackground modeling has emerged as a popular foreground detection technique fo...
The work described here aims at improving the performance of three building blocks of visual surveil...
Robust foreground object segmentation via background modelling is a difficult problem in cluttered e...