RGB-D传感器在性别识别中的机器感知

Safaa Azzakhnini, Lahoucine Ballihi, D. Aboutajdine
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引用次数: 3

摘要

基于人脸图像的性别自动识别在各种生物识别应用中发挥着重要作用。这项任务不仅引起了计算机视觉研究者的兴趣,也引起了许多心理学家的兴趣。受心理学结果的启发,对人类的性别认知。这项工作有两个主要目的。第一个;它的目的是找出哪些面部部位最能有效地区分男性和女性。第二个;它试图通过投票系统将这些部分的决策结合起来,以提高识别质量。近年来,随着深度传感技术的出现;尤其是像微软kinect这样的低成本设备;包含颜色和深度信息的高质量图像可以很容易地获得。这使我们有机会将深度信息与标准视觉系统相结合,以提供更好的识别质量。本文提出了一种基于面部部分分离的RGB-D数据的性别分类方法。实验结果表明,该方法提高了性别分类的识别准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine perception in gender recognition using RGB-D sensors
Automatic gender recognition, from face images, plays an important role in various biometric applications. This task has attracted the interest of not only computer vision researchers, but also of many psychologists. Inspired by the psychological results for human gender perception. There are two main purposes for this work. First; it aims at finding out which facial parts are most effective at making the difference between men and women. Second; it tries to combine the decisions of these parts using a voting system to improve the recognition quality. Recently, with the appearance of depth sensing technology; especially the low cost devices such as the Microsoft kinect; high quality images containing color and depth information can easily be acquired. This gives us the opportunity to combine depth information with standard vision systems in order to offer a better recognition quality. In this paper, we propose an approach for classifying gender using RGB-D data based on the separation of facial parts. The experimental results show that the proposed approach improves the recognition accuracy for gender classification.
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