Zhou Haowen, Sui Xiaomeng, Cao Liangcai, Banerjee Partha P
Appl Opt. 2019 Dec 1;58(34):G177-G186. doi: 10.1364/AO.58.00G177.
Three-dimensional (3D) face recognition has been a crucial task in human biometric verification and identification. A digital correlation method of a computer-generated hologram (CGH) for 3D face recognition is proposed, which encodes 3D data into a 2D hologram for recognition. The 3D face models are preprocessed and compressed to into groups of feature points. The CGH templates corresponding to the 3D feature points are generated by point- and layer-oriented algorithms based on three different numerical algorithms to encode depth values into 2D holograms. A 2D digital correlation is performed between the CGH templates. It is demonstrated that the generated CGHs templates could be effectively classified based on the correlation performance metrics of discrimination ratio, peak-to-correlation plane energy, and peak-to-noise ratio. With the essence of the CGH algorithm being the conversion of 3D data to a 2D hologram, the proposed encoding and decoding method has great advantages in reducing computational efforts and potential applications in 3D face recognition, storage, and display.
三维(3D)人脸识别一直是人类生物特征验证和识别中的一项关键任务。提出了一种用于3D人脸识别的计算机生成全息图(CGH)的数字相关方法,该方法将3D数据编码到2D全息图中进行识别。对3D人脸模型进行预处理并压缩成特征点组。基于三种不同的数值算法,通过面向点和层的算法生成与3D特征点对应的CGH模板,将深度值编码到2D全息图中。在CGH模板之间进行二维数字相关。结果表明,基于鉴别率、峰值与相关平面能量以及峰值与噪声比等相关性能指标,可以有效地对生成的CGH模板进行分类。由于CGH算法的本质是将3D数据转换为2D全息图,因此所提出的编码和解码方法在减少计算量以及在3D人脸识别、存储和显示方面的潜在应用中具有很大优势。