机器人视觉人脸识别的设计与实现

Akshay Krishnan, Ananya Hs
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引用次数: 1

摘要

机器人视觉是许多机器人平台的理想传感器。通过让机器人完成不利的任务,工程师们正在朝着让机器人更接近人类生活的永恒目标努力。其中一项任务是识别或认证一个人,这在社会和工业领域都是必不可少的。一旦发现人脸,人脸识别机器人要么将其识别为数据库中的人脸,要么将其添加到数据库中,如果是新人的话。事实上,有许多现有的算法已经被用来实现这一目标。对于动态域的基于视觉的自主机器人,除鲁棒性外,处理算法的快速性至关重要。本文比较了特征面、渔场面和局部二值模式直方图三种算法的效率。它还比较了这些算法在树莓派和PC上的实现。实验结果证明了机器人平台在各种情况下进行人脸识别,证明了所提出的人脸识别机器人设计的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and implementation of robotic vision for face recognition
Robotic vision is an ideal sensor for many robot platforms. By making robots perform adverse tasks, engineers today are working towards the eternal goal of bringing robots closer to human life. One such task is recognition or authentication of a person which is essential in both social and industrial domains. Upon finding a face, the face recognition robot either recognizes it to be one from the database, or in case of a new person, adds it to the database. Indeed, there are a number of existing algorithms that have been used to achieve this goal. For vision-based autonomous robots in dynamic domain it is crucial that the processing algorithms are fast in addition to being robust. This paper compares the efficiency of three algorithms - Eigenfaces, Fisherfaces and Local Binary Patterns Histograms. It also compares the implementation of these algorithms on a Raspberry Pi against that on a PC. Empirical results demonstrating the robotic platform performing face recognition under various circumstances, justify the validity of the proposed design of a face recognition robot.
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