Face detection based on multilayer feed‐forward neural network and Haar features
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Software - Practice and Experience
Abstract
Fast and accurate detection of a facial data is crucial for both face and
facial expression recognition systems. These systems include internet protocol
video surveillance systems, crime scene photographs systems, and criminals'
databases. The aim for this study is both improvement of accuracy and speed.
The salient facial features are extracted through Haar techniques. The sizes of
the images are reduced by Bessel down-sampling algorithm. This method pre-
served the details and perceptual quality of the original image. Then, image
normalization was done by anisotropic smoothing. Multilayer feed-forward
neural network with a back-propagation algorithm was used as classifier. A
detection accuracy of 98.5% with acceptable false positives was registered with
test sets from FDDB, CMU-MIT, and Champions databases. The speed of exe-
cution was also promising. An evaluation of the proposed method with other
popular detectors on the FDDB set shows great improvement.