Title :
Embedded processor optimised for vascular pattern recognition
Author :
Gi-Tae Park ; Soo-won Kim
Author_Institution :
Dept. of Electr. Eng., Korea Univ., Seoul, South Korea
Abstract :
In this study, the authors propose an efficient embedded processing architecture that uses the vascular pattern extraction (VPE) algorithm to authenticate a user to an embedded system. This study first considers the use of direction-based vascular pattern extraction (DBVPE), and analyses the computational workload involved in running software implementations on an embedded processor. The authors then present a comprehensive performance analysis of the VPE algorithm and examine in detail the various factors that contribute to processing latencies, including VPE recognition processing. In order to improve the efficiency of VPE processing in embedded devices, the authors offer details regarding the process needed to create a highly efficient application-specific processor and extend the base instruction set of the processor by using custom instructions for recognition processing. The authors implemented our proposed methodology in the context of a commercial extensible processor design flow using the Xtensa platform from Tensilica Inc. Our experiments show that our proposed methodology achieves a 3.95-fold increase in the vascular pattern recognition speed. Hence, the authors consider our technique to be efficient.
Keywords :
blood vessels; feature extraction; instruction sets; microprocessor chips; vein recognition; DBVPE; Tensilica Inc; VPE algorithm; VPE recognition processing; Xtensa platform; application-specific processor; base instruction set; custom instruction; direction-based vascular pattern extraction; embedded processing architecture; embedded processor; processing latency; software implementation; vascular pattern recognition algorithm; vascular pattern recognition speed;
Journal_Title :
Circuits, Devices & Systems, IET
DOI :
10.1049/iet-cds.2012.0192