A Multi-Stage Approach to Fast Face Detection(Image Recognition, Computer Vision)
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概要
- 論文の詳細を見る
A multi-stage approach -which is fast, robust and easy to train- for a face-detection system is proposed. Motivated by the work of Viola and Jones, this approach uses a cascade of classifiers to yield a coarse-to-fine strategy to reduce significantly detection time while maintaining a high detection rate. However, it is distinguished from previous work by two features. First, a new stage has been added to detect face candidate regions more quickly by using a larger window size and larger moving step size. Second, support vector machine (SVM) classifiers are used instead of AdaBoost classifiers in the last stage, and Haar wavelet features selected by the previous stage are reused for the SVM classifiers robustly and efficiently. By combining AdaBoost and SVM classifiers, the final system can achieve both fast and robust detection because most non-face patterns are rejected quickly in earlier layers, while only a small number of promising face patterns are classified robustly in later layers. The proposed multi-stage-based system has been shown to run faster than the original AdaBoost-based system while maintaining comparable accuracy.
- 社団法人電子情報通信学会の論文
- 2006-07-01
著者
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Satoh Shin'ichi
Graduate University For Advanced Studies (sokendai):national Institute Of Informatics (nii)
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Le Duy-dinh
Graduate University For Advanced Studies (sokendai)
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Le Duy-dinh
The Graduate University For Advanced Studies (sokendai)
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Satoh Shin'ichi
The Graduate University For Advanced Studies (sokendai)
関連論文
- A Multi-Stage Approach to Fast Face Detection(Image Recognition, Computer Vision)
- An Efficient Feature Selection Method For Object Detection