Title :
Large-Scale Vehicle Detection, Indexing, and Search in Urban Surveillance Videos
Author :
Feris, Rogerio Schmidt ; Siddiquie, Behjat ; Petterson, James ; Zhai, Yun ; Datta, Ankur ; Brown, Lisa M. ; Pankanti, Sharath
Author_Institution :
IBM T. J. Watson Center, Hawthorne, NY, USA
Abstract :
We present a novel approach for visual detection and attribute-based search of vehicles in crowded surveillance scenes. Large-scale processing is addressed along two dimensions: 1) large-scale indexing, where hundreds of billions of events need to be archived per month to enable effective search and 2) learning vehicle detectors with large-scale feature selection, using a feature pool containing millions of feature descriptors. Our method for vehicle detection also explicitly models occlusions and multiple vehicle types (e.g., buses, trucks, SUVs, cars), while requiring very few manual labeling. It runs quite efficiently at an average of 66 Hz on a conventional laptop computer. Once a vehicle is detected and tracked over the video, fine-grained attributes are extracted and ingested into a database to allow future search queries such as “Show me all blue trucks larger than 7 ft. length traveling at high speed northbound last Saturday, from 2 pm to 5 pm”. We perform a comprehensive quantitative analysis to validate our approach, showing its usefulness in realistic urban surveillance settings.
Keywords :
feature extraction; indexing; object detection; video surveillance; attribute-based vehicle search; crowded surveillance scenes; feature descriptor; feature pool; feature selection; fine-grained attribute extraction; frequency 66 Hz; large-scale indexing; large-scale processing; learning vehicle detector; manual labeling; occlusion; quantitative analysis; urban surveillance videos; vehicle detection; visual detection; Detectors; Feature extraction; Indexing; Surveillance; Vehicle detection; Vehicles; Videos; Large-scale learning; large-scale video collections; vehicle search; video surveillance;
Journal_Title :
Multimedia, IEEE Transactions on
DOI :
10.1109/TMM.2011.2170666