Title :
Context-aided tracking with an adaptive hyperspectral sensor
Author :
Rice, Andrew ; Vasquez, Juan
Author_Institution :
Numerica Corp., Dayton, OH, USA
Abstract :
A methodology for the context-aided-tracking of ground vehicles in remote airborne imagery is presented in which a background model is inferred from hyperspectral imagery. The functional materials in a scene are determined and become a background model. Here, a manual method of forming the model is presented, as well as a novel autonomous method which exploits the emerging class of adaptive multiple-object-spectrometer instruments. A multiple-hypothesis-tracker is introduced, which relies on background statistics to form track costs and associated track maintenance thresholds. These statistics include detectability, track density, and false measurement density. Traditionally, these statistics are uniform constants, but the advent of the background model allows for spatially-varying statistics. The context-aided-tracker, which uses these statistics, is shown to achieve an increase in performance.
Keywords :
object tracking; remote sensing; road vehicles; adaptive hyperspectral sensor; adaptive multiple-object-spectrometer instruments; autonomous method; background model; background statistics; context-aided tracking; context-aided-tracker; detectability; false measurement density; ground vehicles; hyperspectral imagery; multiple-hypothesis-tracker; remote airborne imagery; spatially-varying statistics; track costs; track density; track maintenance thresholds; Adaptation models; Atmospheric modeling; Degradation; Indexes; Insulation life; Materials; Pixel; Kalman filtering; Tracking; adaptive sensing; context aiding; data association; estimation; hypersectral; multiple object spectrometer; track maintenance;
Conference_Titel :
Information Fusion (FUSION), 2011 Proceedings of the 14th International Conference on
Conference_Location :
Chicago, IL
Print_ISBN :
978-1-4577-0267-9