Better Foreground Segmentation for Static Cameras via New Energy Form and Dynamic Graph-cut
2006pp. 49–52
Citations Over TimeTop 10% of 2006 papers
Abstract
In this paper, we propose a new foreground segmentation method for applications using static cameras. It formulates foreground segmentation as an energy minimization problem, and produces much better results than conventional background subtraction methods. Due to the integration of better likelihood term, shadow elimination term and contrast term into energy function, it also achieves more accurate segmentation than existing method of the same type. Furthermore, real-time performance is made possible by employing dynamic graph-cut algorithm. Quantitative and qualitative experiments on real videos demonstrate our improvements
Related Papers
- → Fast Background Subtraction Using Improved GMM and Graph Cut(2008)18 cited
- An Effective Shadow Elimination Method Using Adaptive Parameters Update(2008)
- → Robust shadow removal algorithm for accurate object detection based on background subtraction method(2012)1 cited
- Moving shadow detection by integrating multiple features(2011)
- → A Multilayer-Based Framework for Online Background Subtraction with Freely Moving Cameras(2017)5 cited