Image analysis – Applications – Target tracking or detecting
Reexamination Certificate
2007-05-01
2007-05-01
Mancuso, Joseph (Department: 2624)
Image analysis
Applications
Target tracking or detecting
Reexamination Certificate
active
10463800
ABSTRACT:
A method detects a moving object in a temporal sequence of images. Images are selected from the temporally ordered sequence of images. A set of functions is applied to the selected images to generate a set of combined images. A linear combination of filters is applied to a detection window in the set of combined images to determine motion and appearance features of the detection window. The motion and appearance features are summed to determine a cumulative score, which enables a classification of the detection window as including the moving object.
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Jones Michael J.
Viola Paul A.
Allison Andrae
Brinkman Dirk
Mancuso Joseph
Mitsubishi Electric Research Laboratories Inc.
Mueller Clifton D.
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