By David Zhang, Fengxi Song, Yong Xu, Zhizhen Liang
With the expanding issues on safeguard breaches and transaction fraud, hugely trustworthy and handy own verification and identity applied sciences are increasingly more needful in our social actions and nationwide providers. Biometrics, used to acknowledge the identification of someone, are gaining ever-growing recognition in an intensive array of governmental, army, forensic, and advertisement protection functions.
Advanced trend reputation applied sciences with purposes to Biometrics specializes in forms of complicated biometric attractiveness applied sciences, biometric facts discrimination and multi-biometrics, whereas systematically introducing fresh examine in constructing powerful biometric acceptance applied sciences. equipped into 3 major sections, this state of the art publication explores complex biometric facts discrimination applied sciences, describes tensor-based biometric facts discrimination applied sciences, and develops the elemental notion and different types of multi-biometrics applied sciences.
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Extra resources for Advanced pattern recognition technologies with applications to biometrics
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