Combining 3D and 2D for less constrained periocular recognition

Lulu Chen, J. Ferryman
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引用次数: 3

Abstract

Periocular recognition has recently become an active topic in biometrics. Typically it uses 2D image data of the periocular region. This paper is the first description of combining 3D shape structure with 2D texture. A simple and effective technique using iterative closest point (ICP) was applied for 3D periocular region matching. It proved its strength for relatively unconstrained eye region capture, and does not require any training. Local binary patterns (LBP) were applied for 2D image based periocular matching. The two modalities were combined at the score-level. This approach was evaluated using the Bosphorus 3D face database, which contains large variations in facial expressions, head poses and occlusions. The rank-1 accuracy achieved from the 3D data (80%) was better than that for 2D (58%), and the best accuracy (83%) was achieved by fusing the two types of data. This suggests that significant improvements to periocular recognition systems could be achieved using the 3D structure information that is now available from small and inexpensive sensors.
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结合3D和2D进行较少约束的眼周识别
眼周识别是近年来生物识别领域研究的热点。它通常使用眼周区域的二维图像数据。本文首次将三维形状结构与二维纹理相结合。迭代最近点(ICP)是一种简单有效的三维眼周区域匹配方法。证明了它在相对不受约束的眼睛区域捕获方面的优势,并且不需要任何训练。采用局部二值模式(LBP)进行二维图像的眼周匹配。两种方式在评分水平上结合。该方法使用博斯普鲁斯3D面部数据库进行评估,该数据库包含面部表情、头部姿势和咬合的巨大变化。3D数据获得的rank-1精度(80%)优于2D数据(58%),两种数据融合获得的精度最高(83%)。这表明,使用现在可以从小型和廉价的传感器获得的3D结构信息,可以对眼周识别系统进行重大改进。
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