Subspace-Based Face Recognition in Analog VLSI
Carvajal, Gonzalo, Valenzuela, Waldo, Figueroa, Miguel
–Neural Information Processing Systems
We describe an analog-VLSI neural network for face recognition based on subspace methods. The system uses a dimensionality-reduction network whose coefficients can be either programmed or learned on-chip to perform PCA, or programmed to perform LDA. A second network with user-programmed coefficients performs classification with Manhattan distances. The system uses on-chip compensation techniques to reduce the effects of device mismatch. Using the ORL database with 12x12-pixel images, our circuit achieves up to 85% classification performance (98% of an equivalent software implementation).
Neural Information Processing Systems
Dec-31-2008