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Multi-dim: A multi-dimensional face database towards the application of 3D technology in real-world scenarios

机译:Multi-dim:面向3D技术在现实场景中的应用的多维面部数据库

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摘要

Three-dimensional (3D) faces are increasingly utilized in many face-related tasks. Despite the promising improvement achieved by 3D face technology, it is still hard to thoroughly evaluate the performance and effect of 3D face technology in real-world applications where variations frequently occur in pose, illumination, expression and many other factors. This is due to the lack of benchmark databases that contain both high precision full-view 3D faces and their 2D face images/videos under different conditions. In this paper, we present such a multi-dimensional face database (namely Multi-Dim) of high precision 3D face scans, high definition photos, 2D still face images with varying pose and expression, low quality 2D surveillance video clips, along with ground truth annotations for them. Based on this Multi-Dim face database, extensive evaluation experiments have been done with state-of-the-art baseline methods for constructing 3D morphable model, reconstructing 3D faces from single images, 3D-assisted pose normalization for face verification, and 3D-rendered multiview gallery for face identification. Our results show that 3D face technology does help in improving unconstrained 2D face recognition when the probe 2D face images are of reasonable quality, whereas it deteriorates rather than improves the face recognition accuracy when the probe 2D face images are of poor quality. We will make Multi-Dim freely available to the community for the purpose of advancing the 3D-based unconstrained 2D face recognition and related techniques towards real-world applications.
机译:三维(3D)面孔在许多与面孔有关的任务中得到越来越多的利用。尽管3D脸部技术取得了令人鼓舞的改进,但仍很难在实际应用中彻底评估3D脸部技术的性能和效果,在现实应用中,姿势,照明,表情和许多其他因素经常发生变化。这是由于缺乏包含不同条件下的高精度全视角3D人脸及其2D人脸图像/视频的基准数据库。在本文中,我们介绍了这样的多维面部数据库(即Multi-Dim),其中包括高精度3D面部扫描,高清照片,具有不同姿势和表情的2D静态面部图像,低质量的2D监视视频剪辑以及地面为他们提供真相注释。基于此Multi-Dim人脸数据库,我们已经使用最新的基线方法进行了广泛的评估实验,这些方法用于构建3D变形模型,从单个图像重建3D人脸,用于人脸验证的3D辅助姿势归一化以及3D-渲染的多视图图库用于人脸识别。我们的结果表明,当探头2D面部图像质量合理时,3D面部技术确实有助于改善不受约束的2D面部识别,而当探头2D面部图像质量较差时,3D面部技术会恶化而不是提高面部识别精度。我们将向社区免费提供Multi-Dim,以将基于3D的无约束2D人脸识别和相关技术推向实际应用。

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