DocumentCode
3295153
Title
Learning Detectors from Large Datasets for Object Retrieval in Video Surveillance
Author
Feris, Rogerio ; Pankanti, Sharath ; Siddiquie, Behjat
fYear
2012
fDate
9-13 July 2012
Firstpage
284
Lastpage
289
Abstract
We address the problem of learning robust and efficient multi-view object detectors for surveillance video indexing and retrieval. Our philosophy is that effective solutions for this problem can be obtained by learning detectors from huge amounts of training data. Along this research direction, we propose a novel approach that consists of strategically partitioning the training set and learning a large array of complementary, compact, deep cascade detectors. At test time, given a video sequence captured by a fixed camera, a small number of detectors is automatically selected per image location. We demonstrate our approach on the problem of vehicle detection in challenging surveillance scenarios, using a large training dataset composed of around one million images. Our system runs at an impressive average rate of 125 frames per second on a conventional laptop computer.
Keywords
image retrieval; image sensors; image sequences; object detection; video surveillance; fixed camera; image location; laptop computer; large datasets; learning detectors; object detectors; object retrieval; vehicle detection; video indexing; video retrieval; video sequence; video surveillance; Cameras; Detectors; Lighting; Streaming media; Surveillance; Training; Vehicles; Large-scale learning; object retrieval; video surveillance;
fLanguage
English
Publisher
ieee
Conference_Titel
Multimedia and Expo (ICME), 2012 IEEE International Conference on
Conference_Location
Melbourne, VIC
ISSN
1945-7871
Print_ISBN
978-1-4673-1659-0
Type
conf
DOI
10.1109/ICME.2012.132
Filename
6298411
Link To Document