1 November 2002 Invariant face recognition using a neural network based on the fringe-adjusted joint transform correlator
A. F. Alsamman, Mohammad S. Alam
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In this paper, we propose an optoelectronic two-layer neural network based on the fringe-adjusted joint transform correlator for invariant face recognition accommodating in-plane and out-of-plane 3-D distortions. The neural network is utilized in the training stage for a sequence of facial images and for supervised learning in order to create composite images that are invariant to 3-D distortions. The proposed technique is implemented by using the fringe-adjusted joint transform correlator. Simulation results are presented to verify the performance of the proposed technique. These results are then compared with those obtained using other techniques such as the synthetic discriminant function.
©(2002) Society of Photo-Optical Instrumentation Engineers (SPIE)
A. F. Alsamman and Mohammad S. Alam "Invariant face recognition using a neural network based on the fringe-adjusted joint transform correlator," Optical Engineering 41(11), (1 November 2002). https://doi.org/10.1117/1.1510538
Published: 1 November 2002
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Cited by 7 scholarly publications.
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KEYWORDS
Composites

Neural networks

Facial recognition systems

Image processing

Optical correlators

Joint transforms

Neurons

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