Title :
Information measures for object recognition accommodating signature variability
Author :
Cooper, Matthew L. ; Miller, Michael I.
Author_Institution :
Dept. of Electr. Eng., Washington Univ., St. Louis, MO, USA
fDate :
8/1/2000 12:00:00 AM
Abstract :
This paper presents measures characterizing the information content of remote observations of ground scenes imaged via optical and infrared sensors. Object recognition is posed in the context of deformable templates; the special Euclidean group is used to accommodate geometric variation of object pose. Principal component analysis of object signatures is used to represent and efficiently accommodate variation in object signature due to changes in the thermal state of the object surface. Mutual information measures, which are independent of the recognition system, are calculated quantifying both the information gain due to remote observations of the scene and the information loss due to signature variability. Signature model mismatch is quantitatively examined using the Kullback-Leibler divergence. Expressions are derived quadratically approximating the posterior conditional entropy on the orthogonal group for high signal-to-noise ratio. It is demonstrated that quadratic modules accurately characterize the posterior entropy for broad ranges of signal-to-mise ratio. Information gain in multiple-sensor scenarios is quantified, and it is demonstrated that the cost of signature uncertainty for the Comanche series of FLIR images collected by the US Army Night Vision Electronic Sensors Directorate is approximately 0.8 bits with an associated near doubling of mean-squared error uncertainty in pose
Keywords :
entropy; infrared imaging; noise; object recognition; optical sensors; principal component analysis; remote sensing; sensor fusion; Comanche; Comanche series; Euclidean group; FLIR images; Information measures; Kullback-Leibler divergence; Night Vision Electronic Sensors Directorate; US Army; deformable templates; geometric variation; ground scenes; high signal-to-noise ratio; information content; information gain; information loss due; infrared sensors; mean-squared error uncertainty; multiple-sensor scenarios; mutual information measures; object pose; object recognition; object surface; optical sensors; orthogonal group; posterior conditional entropy; principal component analysis; quadratic modules; remote observations; sensor fusion; signature model mismatch; signature uncertainty; signature variability; thermal state; Entropy; Gain measurement; Geometrical optics; Infrared sensors; Layout; Mutual information; Object recognition; Optical sensors; Principal component analysis; Uncertainty;
Journal_Title :
Information Theory, IEEE Transactions on