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Keywords
(9)
3d reconstruction
cumulant
Face Alignment
Face Recognition
Feature Extraction
Graph Cut
Image Color Analysis
Three Dimensional
Long Distance
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Face recognition at-a-distance using texture, Sparse-Stereo, and Dense-Stereo
Face recognition at-a-distance using texture, Sparse-Stereo, and Dense-Stereo,10.1109/ICMT.2011.6001979,Mostafa Abdelrahman,Shireen Elhabian,Asem Ali,
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Face recognition at-a-distance using texture, Sparse-Stereo, and Dense-Stereo
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Mostafa Abdelrahman
,
Shireen Elhabian
,
Asem Ali
,
Aly A. Farag
This paper proposes a framework for
face recognition
at a distance based on texture, Sparse-Stereo, and Dense-stereo reconstruction. We develop a 3D acquisition system that consists of two CCD stereo cameras mounted on pan-tilt units with adjustable baseline. In this paper we introduce our stereo-based indoor/outdoor environment and different ranges human faces database. Also, we propose a front-to-end system of 3D face reconstruction and recognition. We first detect the facial region and extract its landmark points, which are used to initialize the
face alignment
algorithm. The fitted mesh vertices, generated from the
face alignment
process, provide point correspondences between the left and right images of a stereo pair; stereo-based reconstruction is then used to infer the 3D information of the mesh vertices. Also the dense 3D is reconstructed for the cropped stereo pair based on
graph cut
approach. We perform experiments regarding the use of different features extracted from these vertices for face recognition. The cumulative rank curves (CMC), which are generated using the proposed framework, confirm the feasibility of the proposed work for
long distance
recognition of human faces.
Conference:
International Conference on Multimedia Technology - ICMT
, 2011
DOI:
10.1109/ICMT.2011.6001979
Cumulative
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References
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International Journal of Computer Vision - IJCV
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(
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Conference:
Neural Information Processing Systems - NIPS
, 2004