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Robust Real-time Object Detection (2001)

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by Paul Viola , Michael Jones
Venue:International Journal of Computer Vision
Citations:570 - 4 self
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BibTeX

@INPROCEEDINGS{Viola01robustreal-time,
    author = {Paul Viola and Michael Jones},
    title = {Robust Real-time Object Detection},
    booktitle = {International Journal of Computer Vision},
    year = {2001}
}

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Abstract

This paper describes a visual object detection framework that is capable of processing images extremely rapidly while achieving high detection rates. There are three key contributions. The first is the introduction of a new image representation called the “Integral Image ” which allows the features used by our detector to be computed very quickly. The second is a learning algorithm, based on AdaBoost, which selects a small number of critical visual features and yields extremely efficient classifiers [6]. The third contribution is a method for combining classifiers in a “cascade ” which allows background regions of the image to be quickly discarded while spending more computation on promising object-like regions. A set of experiments in the domain of face detection are presented. The system yields face detection performace comparable to the best previous systems [18, 13, 16, 12, 1]. Implemented on a conventional desktop, face detection proceeds at 15 frames per second. 1.

Citations

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182 Summed-Area Tables for Texture Mapping - Crow - 1984
98 A SNoW-Based Face Detector - Yang, Roth, et al. - 2000
69 Coarse-to-Fine Face Detection - Fleuret, Geman - 2001
66 Joint Induction of Shape Features and Tree Classifiers - Amit, Geman, et al. - 1997
48 Overcomplete steerable pyramid filters and rotation invariance - Greenspan, Belongie, et al. - 1994
27 Example-based learning for viewbased face detection - Sung, Poggio - 1998
12 Boxlets: a fast convolution algorithm for signal processing and neural networks - Simard, Bottou, et al. - 1999
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