基于眼睛和其他面部特征运动监测的可疑人脸检测

Chandan Tiwari, M. Hanmandlu, S. Vasikarla
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引用次数: 9

摘要

由于恐怖主义威胁日益严重,视觉监视和安全应用从未像现在这样重要。到目前为止,大型视频监控系统大多是被动系统,视频只是简单地存储而不被监控。该系统将有助于事后调查。为了使系统能够进行实时监控,我们需要开发能够分析和理解被监控场景的算法。一般来说,人类通过面部表情、语言、眼球运动和手势来明确表达自己的意图。根据认知视觉运动理论,人眼运动是人类意图和行为的丰富信息来源。如果我们监测一个人的眼球运动,我们就能把他描述成一个不正常的可疑的人或一个正常的人。我们跟踪他/她的眼睛,并基于眼睛的非线性熵在输入视频的连续帧中的眼球运动。实验结果表明,正常人眼睛的非线性熵远高于正常人眼睛的非线性熵。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Suspicious Face Detection based on Eye and other facial features movement monitoring
Visual surveillance and security applications were never more important than now more so due to the overwhelming ever-growing threat of terrorism. Till date the large scale video surveillance systems mostly work as a passive system in which the videos are simply stored without being monitored. Such system will be useful for post event investigation. In order to make a system that is capable of real-time monitoring, we need to develop algorithms which can analyze and understand the scene that is being monitored. Generally, humans express their intention explicitly through facial expressions, speech, eye movement, and hand gesture. According to cognitive visiomotor theory, the human eye movements are rich source of information about the human intention and behavior. If we monitor the eye movement of a person, we will be able to describe him as an abnormal suspicious person or a normal person. We track his/her Eyes and based upon the eye movement in successive frames of the input videos using the Non-linear Entropy of eyes. Results of our experiments show that Non-linear Entropy of Eyes of an abnormal person is much higher than the eye's entropy of any normal person.
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