Publication | Closed Access
On Stable Dynamic Background Generation Technique Using Gaussian Mixture Models for Robust Object Detection
49
Citations
11
References
2008
Year
Unknown Venue
Motion DetectionImage AnalysisMachine VisionMachine LearningEngineeringPattern RecognitionObject DetectionVideo ProcessingGaussian Mixture ModelsVideo Content AnalysisRobust Object DetectionComputer ScienceVideo SurveillanceDeep LearningDynamic BackgroundBasic Background SubtractionComputer VisionImage Sequence Analysis
Gaussian mixture models (GMM) is used to represent the dynamic background in a surveillance video to detect the moving objects automatically. All the existing GMM based techniques inherently use the proportion by which a pixel is going to observe the background in any operating environment. In this paper we first show that such a proportion not only varies widely across different scenarios but also forbids using very fast learning rate. We then propose a dynamic background generation technique in conjunction with basic background subtraction which detected moving objects with improved stability and superior detection quality on a wide range of operating environments in two sets of benchmark surveillance sequences.
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