Facial biometry by stimulating salient singularity masks

G. Lefebvre, Christophe Garcia
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引用次数: 2

Abstract

We present a novel approach for face recognition based on salient singularity descriptors. The automatic feature extraction is performed thanks to a salient point detector, and the singularity information selection is performed by a SOM region-based structuring. The spatial singularity distribution is preserved in order to activate specific neuron maps and the local salient signature stimuli reveals the individual identity. This proposed method appears to be particularly robust to facial expressions and facial poses, as demonstrated in various experiments on well-known databases.
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通过刺激显著奇点面具进行面部生物识别
提出了一种基于显著奇异描述符的人脸识别新方法。通过显著点检测器实现特征的自动提取,通过基于区域的SOM结构实现奇异点信息的选择。保留空间奇异分布以激活特定的神经元图,局部显著特征刺激揭示个体身份。在知名数据库上进行的各种实验表明,该方法对面部表情和面部姿势具有特别的鲁棒性。
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