基于深度数据的人脸配准与特征定位

S. R. Bodhi, S. Naveen, R. Moni
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引用次数: 0

摘要

在实时人脸识别与认证系统中,对输入数据进行适当的预处理是提高系统性能的关键。所涉及的必要步骤取决于输入数据的性质。本文重点研究了人脸深度数据的人脸配准和人脸特征定位等预处理步骤。人脸配准算法基于传统的ICP算法。选择面点进行ICP,可以提高效率。因此,考虑了三维面角点的ICP配准参数。眼角定位基于曲率分析,鼻尖检测基于其在所有面部成分中具有最高深度值的原则。实验采用两种不同的数据库,RGB-D FACE数据库的低质量深度数据和高质量的FRAV3D数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face registration and feature localization on depth data
Proper pre-processing of input data is a critical requirement in real time face identification and authentication systems that can improve its performance. Necessary steps involved depends on the nature input data. This paper focuses on pre-processing steps such as face registration and facial feature localization for facial depth data. Face registration algorithm is based on conventional ICP algorithm. Doing ICP with selected facial points can improve its efficiency. So corner points from 3D faces are considered for ICP to obtain registration parameters. Eye corner localization is based on the curvature analysis and nose tip detection is based on the principle that it is having highest depth value among all other facial components. Experiments are done with two different databases, low quality depth data from RGB-D FACE database and better quality FRAV3D.
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