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This paper presents a trainable object detection architecture that is applied to detecting people in static images of cluttered scenes. This problem poses several challenges. People are highly non-rigid objects with a high degree of variability in size, shape, color, and texture. Unlike previous approaches, this system learns from examples and does not rely on any a priori (hand-crafted) models or on motion. The detection technique is based on the novel idea of the wavelet template that defines the shape of an object in terms of a subset of the wavelet coefficients of the image. It is invariant to changes in color and texture and can be used to robustly define a rich and complex class of objects such as people. We show how the invariant properties and computational efficiency of the wavelet template make it an effective tool for object detection.
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Michael B. Oren
Ben-Gurion University of the Negev
C. Papageorgiou
Laiko General Hospital of Athens
Pavel Sinha
McGill University
Massachusetts Institute of Technology
Intel (United States)
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Oren et al. (Fri,) studied this question.
synapsesocial.com/papers/6a18942e9b18e8e1efcf7da8 — DOI: https://doi.org/10.1109/cvpr.1997.609319