Title
The Influence of Multi-Sensor Video Fusion on Object Tracking Using a Particle Filter
Abstract
This paper investigates how the object tracking performance is affected by the fusion quality of videos from visible (VIZ) and infrared (IR) surveillance cameras, as compared to tracking in single modality videos. The videos have been fused us- ing the simple averaging, and various multiresolution techniques. Tracking has been accomplished by means of a particle filter using colour and edge cues. The highest tracking accuracy has been obtained in IR sequences, whereas the VIZ video was af- fected by many artifacts and showed the worst tracking performance. Among the fused videos, the complex wavelet and the averaging techniques, offered the best tracking performance, comparable to that of IR. Thus, of all the methods investigated, the fused videos, containing complementary contextual information from both single modality input videos, are the best source for further analysis by a human observer or a computer program.
Year
Venue
Keywords
2006
GI-Jahrestagung
particle filter,infrared,object tracking
Field
DocType
Citations 
Computer vision,Contextual information,Computer science,Particle filter,Video tracking,Computer program,Artificial intelligence,Observer (quantum physics),Video fusion,Wavelet
Conference
6
PageRank 
References 
Authors
0.58
5
9
Name
Order
Citations
PageRank
Lyudmila Mihaylova162375.41
Artur Łoza21409.92
Stavri G. Nikolov324612.64
John J. Lewis42269.44
Eduardo Fernández Canga5101.84
jiafang li660.58
Timothy D. Dixon7131.93
Cedric Nishan Canagarajah815418.85
David R. Bull91736189.86