2013
DOI: 10.1007/978-3-642-38886-6_40
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Exploiting Object Characteristics Using Custom Features for Boosting-Based Classification

Abstract: Abstract. Typical feature pools used to train boosted object detectors contain various redundant and unspecific information which often yield less discriminative detectors. In this paper we introduce a feature mining algorithm taking domain specific knowledge into account. Our proposed feature pool contains rectangular shaped features generated from an image clustering algorithm applied on the mean image of the object training set. A combination of two such spatially separated rectangular regions yields a set … Show more

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“…The concept of Haar-like features was firstly proposed by Papageorgiou et al in 1998 [12] and then widely used in object recognition [12][13][14][15]. They intended to adopt Haar wavelet transfer algorithms to deal with the facial detection of upright faces but found there were certain limitations existing in the application.…”
Section: Haar-like Facial Detectionmentioning
confidence: 99%
“…The concept of Haar-like features was firstly proposed by Papageorgiou et al in 1998 [12] and then widely used in object recognition [12][13][14][15]. They intended to adopt Haar wavelet transfer algorithms to deal with the facial detection of upright faces but found there were certain limitations existing in the application.…”
Section: Haar-like Facial Detectionmentioning
confidence: 99%