A Feature-level Fusion of Appearance and Passive Depth Information for Face Recognition

@inproceedings{Wang2007AFF,
  title={A Feature-level Fusion of Appearance and Passive Depth Information for Face Recognition},
  author={Jian-Gang Wang and Kar-Ann Toh and Eric Sung and Wei-Yun Yau},
  year={2007}
}
Face recognition using 2D intensity/colour images have been extensively researched over the past two decades (Zhao et al., 2003). More recently, some in-roads into 3D recognition have been investigated by others (Bowyer et al., 2006). However, both the 2D and 3D face recognition paradigm have their respective strengths and weaknesses. 2D face recognition methods suffer from variability in pose and illumination. Intuitively, a 3-D representation provides an added dimension to the useful… CONTINUE READING

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