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  • Broschiertes Buch

Robust face recognition is a challenging goal because of the gross similarity in shape and configuration of all human faces accompanied by the large differences between face images of the same person due to variations in lighting conditions, view points, head poses and facial expressions. This problem is further exacerbated when only one image is available per person for registration and matching. This book reviews the state of the art face recognition methods and analyzes challenging face variations in illuminance and expression. We also propose in this book a discriminative principal…mehr

Produktbeschreibung
Robust face recognition is a challenging goal because of the gross similarity in shape and configuration of all human faces accompanied by the large differences between face images of the same person due to variations in lighting conditions, view points, head poses and facial expressions. This problem is further exacerbated when only one image is available per person for registration and matching. This book reviews the state of the art face recognition methods and analyzes challenging face variations in illuminance and expression. We also propose in this book a discriminative principal component analysis method that can simultaneously deal with these variations using only a single image per person. This approach is further extended by combining multile classifiers to enhance the borustness and discrimination.
Autorenporträt
Shaokang Chen received his B.A.(Honors) from South China University of Technology in 1999. He received Ph.D. from the University of Queensland in 2005. From 2006 to 2008, Dr. Chen was on the faculty of the School of ITEE at the University of Queensland. In 2009, he joined NICTA as a research scientist.