IEEE Trans Pattern Anal Mach Intell. 2017 May;39(5):995-1007. doi: 10.1109/TPAMI.2016.2565473. Epub 2016 May 10.
The potential of the nasal region for expression robust 3D face recognition is thoroughly investigated by a novel five-step algorithm. First, the nose tip location is coarsely detected and the face is segmented, aligned and the nasal region cropped. Then, a very accurate and consistent nasal landmarking algorithm detects seven keypoints on the nasal region. In the third step, a feature extraction algorithm based on the surface normals of Gabor-wavelet filtered depth maps is utilised and, then, a set of spherical patches and curves are localised over the nasal region to provide the feature descriptors. The last step applies a genetic algorithm-based feature selector to detect the most stable patches and curves over different facial expressions. The algorithm provides the highest reported nasal region-based recognition ranks on the FRGC, Bosphorus and BU-3DFE datasets. The results are comparable with, and in many cases better than, many state-of-the-art 3D face recognition algorithms, which use the whole facial domain. The proposed method does not rely on sophisticated alignment or denoising steps, is very robust when only one sample per subject is used in the gallery, and does not require a training step for the landmarking algorithm.
一种新颖的五步算法彻底研究了鼻腔区域在表达强大的 3D 人脸识别方面的潜力。首先,粗略地检测鼻尖位置,并分割、对齐人脸并裁剪鼻区。然后,一个非常准确和一致的鼻地标检测算法检测七个关键点在鼻区。在第三步中,利用基于 Gabor 小波滤波深度图的表面法向量的特征提取算法,然后在鼻区定位一组球形补丁和曲线以提供特征描述符。最后一步应用基于遗传算法的特征选择器来检测不同面部表情下最稳定的补丁和曲线。该算法在 FRGC、Bosphorus 和 BU-3DFE 数据集上提供了基于鼻腔区域的最高识别排名。该算法的结果与许多使用整个面部区域的最先进的 3D 人脸识别算法相当,在许多情况下甚至更好。所提出的方法不依赖于复杂的对齐或去噪步骤,在图库中每个主题只有一个样本时非常稳健,并且不需要地标算法的训练步骤。