Title
Temporarily static object detection in surveillance video using double foregrounds and superpixels
Abstract
In surveillance video applications, temporarily static regions indicate move-then-stop objects, such as the abandoned/removed objects, parked vehicles. This paper presents an approach using both pixel-level and region-level analysis together. In the pixel-level foreground extraction process, two improved Gaussian Mixture Model(GMM) are adopted to obtain the binary foreground mask. A residence map is also set to measure the lasting time for an abandoned/removed object. In the region-level analysis, we apply a superpixel-based method, which could refine the foreground extraction result and further generate the output of exact object regions instead of only bounding boxes in other related works. Experimental results show the proposed method could detect the temporarily static objects effectively and accurately.
Year
DOI
Venue
2014
10.1109/VCIP.2014.7051602
VCIP
Keywords
Field
DocType
double foreground,pixel-level foreground extraction process,superpixel,double superpixel,temporarily static object detection,region-level analysis,mixture models,surveillance video,feature extraction,improved gmm,gaussian processes,object detection,improved gaussian mixture model,temporarily static object,background subtraction,binary foreground mask,video surveillance
Background subtraction,Object detection,Computer vision,Pattern recognition,Computer science,Artificial intelligence,Mixture model,Bounding overwatch,Binary number
Conference
Citations 
PageRank 
References 
0
0.34
0
Authors
4
Name
Order
Citations
PageRank
Wan Liu100.34
Aidong Men212038.69
Yuanyuan Cui300.34
Bo Yang46713.56