一种基于局部二值模式的人脸外观描述符

Shihu Zhu, Jufu Feng
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引用次数: 8

摘要

人脸识别的关键挑战之一是找到有效和有区别的面部外观描述符,这些描述符可以抵抗光照、姿势、面部表情、衰老、面部错位和其他变化的大变化。本文提出了一种新的基于局部二值模式(LBP)的面部外观描述符,该描述符具有几个优点。(1)更具歧视性。(2)对光照、姿态、面部表情、年龄、面部错位等变化不敏感。(3)计算效率高,特征集低维。在FERET数据库上的实验表明,该算子显著优于其他特征描述符。
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A Novel Facial Appearance Descriptor Based on Local Binary Pattern
One of the key challenges for face recognition is finding efficient and discriminative facial appearance descriptors that are resistant to large variations in illumination, pose, face expression, ageing, face misalignment and other changes. In this paper, we propose a novel facial appearance descriptor based on local binary pattern (LBP), which presents several advantages. (1) It is more discriminative. (2) It is not sensitive to variations in illumination, pose, face expression, ageing and face misalignment. (3) It can be computed very efficiently and the feature sets are low-dimensional. Experiments on FERET database show that the proposed operator significantly outperforms other feature descriptors.
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