分析形状和上下文对深度网络人脸识别性能的影响

Sandipan Banerjee, W. Scheirer, K. Bowyer, P. Flynn
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引用次数: 1

摘要

在本文中,我们分析了改变人脸图像中基础身份的底层3D形状如何扭曲其整体外观,特别是从深度人脸识别的角度。与流行的训练数据增强方案一样,我们使用随机选择或最佳拟合的3D人脸模型图形化地呈现真实和合成的人脸图像,以生成基本身份的新视图。我们比较从这些图像生成的深度特征,以评估这些渲染引入原始身份的扰动。我们在不同程度的面部偏斜和不同性别和种族的基本身份下进行分析。此外,我们还研究了在这些渲染图像中添加某种形式的上下文和背景像素,当用作训练数据时,是否会进一步提高人脸识别模型的下游性能。我们的实验证明了面部形状在准确的面部匹配中的重要性,并支持了上下文数据对网络训练的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing the Impact of Shape & Context on the Face Recognition Performance of Deep Networks
In this article, we analyze how changing the underlying 3D shape of the base identity in face images can distort their overall appearance, especially from the perspective of deep face recognition. As done in popular training data augmentation schemes, we graphically render real and synthetic face images with randomly chosen or best-fitting 3D face models to generate novel views of the base identity. We compare deep features generated from these images to assess the perturbation these renderings introduce into the original identity. We perform this analysis at various degrees of facial yaw with the base identities varying in gender and ethnicity. Additionally, we investigate if adding some form of context and background pixels in these rendered images, when used as training data, further improves the downstream performance of a face recognition model. Our experiments demonstrate the significance of facial shape in accurate face matching and underpin the importance of contextual data for network training.
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