Title :
Pyramid Coding for Functional Scene Element Recognition in Video Scenes
Author :
Swears, Eran ; Hoogs, Anthony ; Boyer, Kim
Abstract :
Recognizing functional scene elements in video scenes based on the behaviors of moving objects that interact with them is an emerging problem of interest. Existing approaches have a limited ability to characterize elements such as cross-walks, intersections, and buildings that have low activity, are multi-modal, or have indirect evidence. Our approach recognizes the low activity and multi-model elements (crosswalks/intersections) by introducing a hierarchy of descriptive clusters to form a pyramid of codebooks that is sparse in the number of clusters and dense in content. The incorporation of local behavioral context such as person-enter-building and vehicle-parking nearby enables the detection of elements that do not have direct motion-based evidence, e.g. buildings. These two contributions significantly improve scene element recognition when compared against three state-of-the-art approaches. Results are shown on typical ground level surveillance video and for the first time on the more complex Wide Area Motion Imagery.
Keywords :
image motion analysis; object recognition; video coding; video surveillance; buildings; codebook pyramid; cross-walks; descriptive cluster hierarchy; direct motion-based evidence; element detection; functional scene element recognition; intersections; local behavioral context incorporation; low-activity element characterization; moving object behaviour; multimodel element characterization; person-enter-building; pyramid coding; scene element recognition; typical ground level surveillance video; vehicle-parking; video scenes; wide area motion imagery; Clustering algorithms; Context; Detectors; Encoding; Histograms; Training; Vehicles; functional learning; functional recognition; functional scene element; pyramid coding; scene learning; scene understanding;
Conference_Titel :
Computer Vision (ICCV), 2013 IEEE International Conference on
Conference_Location :
Sydney, NSW
DOI :
10.1109/ICCV.2013.50