Layered RC Circuit Model for Background Subtraction

作者: Karel Mozdřeň , Eduard Sojka , Radovan Fusek , Milan Šurkala

DOI: 10.1007/978-3-642-41939-3_20

关键词: Video sequenceObject detectionComputer visionComputer scienceBackground subtractionArtificial intelligenceLevel crossingTree (data structure)RC circuit

摘要: The background subtraction is a technique widely used for video analysis, mainly moving object detection surveillance systems. Such algorithms must be robust, fast and it has to able deal with dynamic backgrounds like water surface or tree branches. Also, they should illumination changes objects casted shadows. Generally, in computer vision the physical have best performance. We propose an algorithm based on model of layered RC circuits. tested our method sequences acquired from level crossing commonly datasets. Finally, we compared proposed other frequently methods.

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