A Comparison of Hand-Geometry Recognition Methods Based on Low- and High-Level Features
نویسندگان
چکیده
This paper compares the performance of handgeometry recognition based on high-level features and on low-level features. The difference between highand lowlevel features is that the former are based on interpreting the biometric data, e.g. by locating a finger and measuring its dimensions, whereas the latter are not. The low-level features used here are landmarks on the contour of the hand. The high-level features are a standard set of geometrical features such as widths and lengths of fingers and angles, measured at preselected locations. Keywords— Biometric verification, hand geometry, hand contour, landmarks.
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