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A Smart Security System Using Multimodal Features from Videos

机译:一种使用来自视频的多模式特征的智能安全系统

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摘要

Multi-modal biometric authentication system uses more than one biometric feature and the use of multi-modal biometrics improves security by making the system invulnerable to spoofing attacks. The proposed system uses face and gait biometrics for authentication and identification. The authentication is done in an unobtrusive manner without the knowledge and co-ordination of the user with the help of surveillance cameras. The videos are captured from two surveillance cameras, placed at fronto-parallel and fronto-normal views are given as input to the system. The gait system uses the video from fronto-parallel view and uses a model free approach to extract a spatio temporal motion summary of the gait cycle. The gait features has been compared by calculating the Euclidean distance between them. The face system uses the video from fronto normal view and uses an appearance based approach to extract features from the face of the user. The face features has been compared by calculating Chi-Square dissimilarity between them. The score level fusion is performed to provide an enhanced security system. A threshold value is kept and it is compared with the scores to authenticate the person. The Minimum Distance Classifier is used to identify the person by fusing the multimodal features.
机译:多模态生物识别身份验证系统使用多个生物识别功能,使用多模态生物识别性通过使系统无懈可击的欺骗攻击来提高安全性。所提出的系统使用面部和步态生物识别来认证和识别。该身份验证以不引人注目的方式完成,无需在监控摄像机的帮助下提供用户的知识和协调。视频从两个监控摄像头捕获,放置在前平行中,普遍正常视图被给出为系统的输入。步态系统使用来自俯视视图的视频,并使用模型的自由方法提取步态周期的时空时间运动摘要。通过计算它们之间的欧几里德距离来比较步态特征。面部系统使用来自普通视图的视频,并使用基于外观的方法来从用户的面部提取特征。通过计算它们之间的Chi-Square异化来比较面部特征。进行得分水平融合以提供增强的安全系统。保留阈值,并将其与分数进行比较以验证该人。最小距离分类器用于通过融合多模峰特征来识别该人。

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