6533b7d9fe1ef96bd126c2dd

RESEARCH PRODUCT

Machine Learning VS Transfer Learning - Smart Camera Implementation for Face Authentication

Pierre BonazzaJulien DuboisDominique GinhacJohel Miteran

subject

AuthenticationComputer sciencebusiness.industry05 social sciencesContext (language use)Access controlMachine learningcomputer.software_genre050105 experimental psychologyRandom forest03 medical and health sciences0302 clinical medicineFace (geometry)0501 psychology and cognitive sciencesArtificial intelligenceBiometric dataSmart camerabusinessTransfer of learningcomputer[SPI.SIGNAL]Engineering Sciences [physics]/Signal and Image processing030217 neurology & neurosurgeryComputingMilieux_MISCELLANEOUS[SPI.SIGNAL] Engineering Sciences [physics]/Signal and Image processing

description

The aim of this paper is to highlight differences between classical machine learning and transfer learning applied to low cost real-time face authentication. Furthermore, in an access control context, the size of biometric data should be minimized so it can be stored on a remote personal media. These constraints have led us to compare only lightest versions of these algorithms. Transfer learning applied on Mobilenet v1 raises to 85% of accuracy, for a 457Ko model, with 3680s and 1.43s for training and prediction tasks. In comparison, the fastest integrated method (Random Forest) shows accuracy up to 90% for a 7,9Ko model, with a fifth of a second to be trained and a hundred of microseconds for the prediction, enabling embedded real-time face authentication at 10 fps.

https://u-bourgogne.hal.science/hal-02766840