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Heterogeneous Specular and Diffuse 3-D Surface Approximation for Face Recognition Across Pose

机译:跨姿势的人脸识别的异构镜面和漫射3D表面逼近

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摘要

This paper proposes a novel heterogeneous specular and diffuse (HSD) 3-D surface approximation which considers spatial variability of specular and diffuse reflections in face modelling and recognition. Traditional 3-D face modelling and recognition methods constrain human faces with either the Lambertian assumption or the homogeneity assumption, resulting in suboptimal shape and texture models. The proposed HSD approach allows both specular and diffuse reflectance coefficients to vary spatially to better accommodate surface properties of real human faces. From a small number of face images of a person under different lighting conditions, 3-D shape and surface reflectivity property are estimated using a localized stochastic optimization method. The resultant personalized 3-D face model is used to render novel gallery views under different poses for recognition across pose. The proposed approach is evaluated on both synthetic and real face datasets and benchmarked against the state-of-the-art approaches. Experimental results demonstrated that it can achieve a higher level of performances in modelling accuracy, algorithm reliability, and recognition accuracy, which suggests that face modelling and recognition beyond the Lambertian and homogeneity assumptions is a feasible and better solution towards pose-invariant face recognition.
机译:本文提出了一种新颖的异质镜面和漫反射(HSD)3-D表面近似方法,该方法在人脸建模和识别中考虑了镜面反射和漫反射的空间变异性。传统的3-D人脸建模和识别方法使用Lambertian假设或同质性假设来约束人脸,从而导致形状和纹理模型不理想。所提出的HSD方法允许镜面反射系数和漫反射系数在空间上变化,以更好地适应真实人脸的表面特性。使用局部随机优化方法,根据在不同光照条件下的少量人脸图像,估计3D形状和表面反射率属性。生成的个性化3-D人脸模型用于在不同姿势下渲染新颖的画廊视图,以便跨姿势识别。在合成和真实人脸数据集上评估提出的方法,并以最新方法为基准。实验结果表明,该算法可以在建模精度,算法可靠性和识别精度上达到更高的性能水平,这表明超越Lambertian和同质性假设的人脸建模和识别是一种可行的,更好的姿态不变人脸识别解决方案。

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