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Comparative analysis of 3D face recognition using 2D-PCA and 2D-LDA approaches

机译:使用2D-PCA和2D-LDA方法进行3D人脸识别的比较分析

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Even if, most of 2D face recognition approaches reached recognition rate more than 90% in controlled environment, current days face recognition systems degrade their performance in case of uncontrolled environment which includes pose variations, illumination variations, expression variations and ageing effect etc. Inclusion of 3D face analysis gives an age over 2D face recognition as they give vital informations such as 3D shape, texture and depth which improve discrimination power of an algorithm. In this paper, we have investigated different 3D face recognition approaches that are robust to changes in facial expressions and illumination variations. 2D-PCA and 2D-LDA approaches have been extended to 3D face recognition because they can directly work on 2D depth image matrices rather than 1D vectors without need for transformations before feature extraction. In turn, this reduces storage space and time required for computations. 2D depth image is extracted from 3D face model and nose region from depth mapped image has been detected as a reference point for cropping stage to convert model into a standard size. Two Dimensional Principal Component Analysis (2D-PCA) and Two Dimensional Linear Discriminant analysis (2D-LDA) are employed to obtain feature vectors globally compared to feature vectors obtained locally using PCA or LDA. Finally, euclidean distance classifier is applied for comparison of extracted features. A set of experiments on GavabDB 3D face database, which has 61 individuals in total, demonstrated that 3D face recognition using 2D-LDA method has achieved recognition accuracy of 93.3% and EER of 8.96% over database, which is higher compared to 2D-PCA. So, more optimized performance has been achieved using 2D-LDA for 3D face recognition analysis.
机译:即使大多数2D人脸识别方法在受控环境中的识别率超过90%,但当今的人脸识别系统在不受控制的环境(包括姿势变化,光照变化,表情变化和衰老效果等)的情况下也会降低其性能。 3D人脸分析可提供超过2D人脸识别的年龄,因为3D人脸分析可提供诸如3D形状,纹理和深度之类的重要信息,从而提高了算法的识别能力。在本文中,我们研究了不同的3D人脸识别方法,这些方法对于面部表情和照明变化的变化均具有较强的鲁棒性。 2D-PCA和2D-LDA方法已扩展到3D人脸识别,因为它们可以直接在2D深度图像矩阵而不是1D向量上工作,而无需在特征提取之前进行转换。反过来,这减少了计算所需的存储空间和时间。从3D面部模型中提取2D深度图像,并检测到深度映射图像的鼻子区域作为裁剪阶段的参考点,以将模型转换为标准尺寸。与使用PCA或LDA局部获取的特征向量相比,采用二维主成分分析(2D-PCA)和二维线性判别分析(2D-LDA)全局获取特征向量。最后,将欧氏距离分类器用于提取特征的比较。在GavabDB 3D人脸数据库上进行的一组实验(总共有61个个体)表明,使用2D-LDA方法进行3D人脸识别的识别精度比数据库高93.3%,EER达到8.96%,这比2D-PCA更高。因此,使用2D-LDA进行3D人脸识别分析可实现更优化的性能。

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