视频中的3d辅助人脸识别

Baptiste Chu, S. Romdhani, Liming Chen
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引用次数: 2

摘要

部署用于安全控制的摄像机允许视频流用作面部识别(FR)的输入。然而,大多数最先进的人脸识别sdk通常专门用于处理正面和中性的人脸图像,而表情和姿势的变化,通常发生在无约束的环境中,例如视频图像,仍然是可靠的人脸识别的主要挑战。在本文中,我们的目标是赋予最先进的人脸识别sdk在视频中识别人脸的能力。为此,给定一个人的视频序列,使用扩展的3D变形模型(3DMM)来生成这个人的新视图,其中姿势被纠正,表情被中和。我们提出了一种专门为视频设计的3DMM拟合方法,考虑到时间属性,利用多帧进行拟合。此外,为了更好地估计其三维形状,并将其表达分量与恒等分量分离,采用了一些光滑性约束。最后,我们在《越狱》电视连续剧中评估了所提出的方法,并使用标准的商业FR SDK验证了其有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3D-aided face recognition from videos
The deployment of cameras for security control allows for video stream to be used as input for face recognition (FR). However, most state of the art FR SDKs are generally specifically tuned for dealing with frontal and neutral face images, whereas expression and pose variations, which typically occur in unconstrained settings, e.g., video images, are still major challenges for reliable FR. In this paper, we aim to endow the state of the art FR SDKs with the capabilities to recognize faces in videos. For this purpose, given a video sequence of a person, an extended 3D Morphable Model (3DMM) is used to generate a novel view of this person where the pose is rectified and the expression neutralized. We present a 3DMM fitting method specifically designed for videos to take into account the temporal properties, making use of multiple frames for fitting. Moreover, some constraints of smoothness are used to get a better estimation of its 3D shape and to separate its expression component from its identity component. Finally, we evaluate the proposed method on the Prison Break TV serial and demonstrate its effectiveness using a standard commercial FR SDK.
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