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An automated multimodal face recognition system based on fusion of face and ear

机译:基于人脸和耳朵融合的自动多模式人脸识别系统

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摘要

This thesis presents an automated system for the detection and recognition of humans using a multimodal approach. Face recognition is a biometric method which has in recent years become more relevant and needed. With heavy research, it is achieving respectable recognition rates and is becoming more mature as a technology. It is even being deployed in certain situations such as with passports and credit cards. Our multimodal biometric system uses both a person's face and ear to improve the recognition rate of individuals. By combining these two biometric systems we are able to achieve significantly improved recognition rates, as compared to using a unimodal biometric system. The system is totally automated, with a trained detection system for face and one for ear. We look at recognition rates for both face and ear, and then at combined recognition rates, and see that we have significant performance gains from the multimodal approach. We also discuss many existing methods of combining biometric input and the recognition rates that each achieves. Experimental results indicate that a multimodal biometric system has higher recognition rates than unimodal systems. This type of automated biometric recognition system can easily be used in installations requiring person identification such as person recognition in mugshots. It can also be used by security agencies and intelligence agencies requiring robust person identification systems.
机译:本文提出了一种使用多模式方法检测和识别人类的自动化系统。人脸识别是一种生物识别方法,近年来已变得越来越重要和需要。经过大量的研究,它已经达到了可观的识别率,并且作为一种技术变得越来越成熟。它甚至可以在某些情况下被部署,例如使用护照和信用卡。我们的多模式生物特征识别系统使用人的脸部和耳朵来提高个人的识别率。通过结合使用这两种生物识别系统,与使用单峰生物识别系统相比,我们能够显着提高识别率。该系统是完全自动化的,具有训练有素的面部检测系统和耳朵检测系统。我们先看一下面部和耳朵的识别率,然后再看合并的识别率,并发现通过多模式方法可以显着提高性能。我们还将讨论将生物识别输入和每种识别输入率结合起来的许多现有方法。实验结果表明,多峰生物识别系统比单峰系统具有更高的识别率。这种类型的自动生物识别系统可以轻松地用于需要人像识别的设备中,例如面部照片中的人像识别。需要强大的人员识别系统的安全机构和情报机构也可以使用它。

著录项

  • 作者

    Luciano Lorenzo;

  • 作者单位
  • 年度 2009
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类

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