3D face recognition based on RGB-D data: a  survey

Junhao Liu
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Abstract

Face recognition, as a convenient, natural, and widely applied emerging technology, has achieved many significant research results in recent years. 2D face recognition has drawn extensive studies, while previously,2D face recognition is too sensitive to variations in features like facial expressions. To avoid the shortcoming, more attention was paid to the optimization of algorithms, stronger computational capabilities, and fusion strategies, which contributed greatly to the accuracy of face recognition and made it more outstanding. Compared to existing methods, RGB-D images tend to be more robust and reliable. Based on different processing methods of RGB-D 3D face data, researchers have proposed numerous 3D face recognition methods, such as 3D reconstruction methods from monocular RGB-D images, methods based on point cloud data, and methods based on image depth map data. This paper focuses mainly on the image depth map data method, analyzing its rich development history and its unique advantages and disadvantages in RGB-D 3D face recognition. Additionally, we introduced some common RGB-D face datasets, analyzing data collection methods.
基于 RGB-D 数据的 3D 人脸识别:一项调查
人脸识别作为一种便捷、自然、应用广泛的新兴技术,近年来取得了许多重大研究成果。二维人脸识别引起了广泛的研究,而以前的二维人脸识别对面部表情等特征的变化过于敏感。为了避免这一缺陷,人们更加关注算法的优化、更强的计算能力和融合策略,这极大地提高了人脸识别的准确性,使其更加出色。与现有方法相比,RGB-D 图像往往更加稳健可靠。根据 RGB-D 三维人脸数据的不同处理方法,研究人员提出了许多三维人脸识别方法,如单目 RGB-D 图像的三维重建方法、基于点云数据的方法和基于图像深度图数据的方法。本文主要关注图像深度图数据方法,分析其丰富的发展历程及其在 RGB-D 3D 人脸识别中的独特优缺点。此外,我们还介绍了一些常见的 RGB-D 人脸数据集,分析了数据收集方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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