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35th Applied Imagery and Pattern Recognition Workshop (AIPR'06)
An Image Metric-Based ATR Performance Prediction Testbed
Washington, DC, USA
October 11-October 13
ISBN: 0-7695-2739-6
Scott K. Ralph, Charles River Analytics, Cambridge, MA
John Irvine, SAIC, Burlington, MA
Magn? Snorrason, Charles River Analytics, Cambridge, MA
Steve Vanstone, AMRDEC, Redstone Arsenal, AL
Automatic target detection (ATD) systems process imagery to detect and locate targets in imagery in support of a variety of military missions. Accurate prediction of ATD performance would assist in system design and trade stud-ies, collection management, and mission planning. A need exists for ATD performance prediction based exclusively on information available from the imagery and its associated metadata. We present a predictor based on image measures quantifying the intrinsic ATD difficulty on an image. The modeling effort consists of two phases: a learn-ing phase, where image measures are computed for a set of test images, the ATD performance is measured, and a prediction model is developed; and a second phase to test and validate performance prediction. The learning phase produces a mapping, valid across various ATR algorithms, which is even applicable when no image truth is avail-able (e.g., when evaluating denied area imagery). The testbed has plug-in capability to allow rapid evaluation of new ATR algorithms. The image measures employed in the model include: statistics derived from a constant false alarm rate (CFAR) processor, the Power Spectrum Signature, and others. We present a performance predictor using a trained classifier ATD that was constructed using GENIE, a tool developed at Los Alamos National Laboratory. The paper concludes with a discussion of future research.
Citation:
Scott K. Ralph, John Irvine, Magn? Snorrason, Steve Vanstone, "An Image Metric-Based ATR Performance Prediction Testbed," aipr, pp.33, 35th Applied Imagery and Pattern Recognition Workshop (AIPR'06), 2006
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