Tracking Small Targets in Video
Video-based tracking of small targets in a dense environment of clutter is very difficult, because the image resolution of the target is too low to provide reliable information for matching, and in turn the clutter generates a large number of false positive matches and distractions. Most traditional methods attempt to oppose the target to the environment, and are thus confronted in handling the enormous distractions. In fact, a target is rarely isolated and independent to the environment, e.g., when persistent disturbances are present in the vicinity of the target. Therefore, there may exist some objects that exhibit short-term or even longer-term motion correlation to the target. They constitute a very useful spatial contexts of the target. Thus, taking the advantage of the contextual information in an efficient way can improve the robustness of target tracking, as the spatial contexts provide extra constraints in target matching and additional verification in data association. This paper presents a new approach of context-aware tracking for small targets, in which a set of motion-correlated auxiliary objects are automatically discovered on-the-fly. The image region of one such auxiliary object generates a specific spatial context of the target, and leads to an individual contextual constraint to the motion of the target. Under the small motion assumption on two consecutive frames, these individual contextual constraints have linear forms. The collection of all such individual contextual constraints gives a contextual system, based on which the target motion can be accurately estimated so that the association of the target over consecutive image frames can be reliably constructed. This new approach is computationally efficient.


Demo Sequences   (Click images to play the viedo. If video does not play, please install DivX video codec.)
 
A car in traffic flow A car in another traffic flow A plane in a formation flying
The ball in a soccer filed A persion in a parade A car in a street traffic
Note: the target is indicated by red bounding boxes, and the contextual objects by blue boxes.
A person in a parade


Publication:

  1. Jialue Fan, Jiang Xu and Ying Wu, "Context-aware Tracking of Small Targets in Video", in Proc. SPIE Conf. on Signal and Data Processing of Small Targets, in SPIE Symposium on Optical Engineering and Applications, San Diego, CA, August 2009. [PDF]
Return to Tracking Research
Updated 7/2009. Copyright © 2001-2010 Ying Wu