Viola-Jones Based Detectors: How Much Affects the Training Set?
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چکیده
This paper presents a study on the facial feature detection performance achieved using the Viola-Jones framework. A set of classifiers using two different focuses to gather the training samples is created and tested on four different datasets covering a wide range of possibilities. The results achieved should serve researchers to choose the classifier that better fits their demands.
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تاریخ انتشار 2011