2021
DOI: 10.1155/2021/3515512
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Traffic Foreground Detection at Complex Urban Intersections Using a Novel Background Dictionary Learning Model

Abstract: In complex urban intersection scenarios, due to heavy traffic and signal control, there are many slow-moving or temporarily stopped vehicles behind the stop lines. At these intersections, it is difficult to extract traffic parameters, such as delay and queue length, based on vehicle detection and tracking due to the dense and severe occlusion of vehicles. In this study, a novel background subtraction algorithm based on sparse representation is proposed to detect the traffic foreground at complex intersections … Show more

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