Publication | Open Access
Robust Background Subtraction with Foreground Validation for Urban Traffic Video
255
Citations
21
References
2005
Year
Motion DetectionMachine VisionImage AnalysisForeground ValidationEngineeringPattern RecognitionVideo ProcessingEye TrackingVideo Content AnalysisMoving Object TrackingComputer ScienceVideo SurveillanceForeground Validation AlgorithmMedian FilterForeground MaskComputer VisionVisual Surveillance
Identifying moving objects in a video sequence is a fundamental and critical task in many computer-vision applications. Background subtraction techniques are commonly used to separate foreground moving objects from the background. Most background subtraction techniques assume a single rate of adaptation, which is inadequate for complex scenes such as a traffic intersection where objects are moving at different and varying speeds. In this paper, we propose a foreground validation algorithm that first builds a foreground mask using a slow-adapting Kalman filter, and then validates individual foreground pixels by a simple moving object model built using both the foreground and background statistics as well as the frame difference. Ground-truth experiments with urban traffic sequences show that our proposed algorithm significantly improves upon results using only Kalman filter or frame-differencing, and outperforms other techniques based on mixture of Gaussians, median filter, and approximated median filter.
| Year | Citations | |
|---|---|---|
Page 1
Page 1