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Analysis of parallel SOC architectural characteristics for accelerating face identification.

机译:分析用于加速人脸识别的并行SOC架构特征。

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摘要

Growing worldwide concerns about terrorism have increased interest in rapidly and accurately identifying individuals such as potential terrorists. The ability to quickly screen an individual against the more than one million entries on the Terrorist Watch List using face identification could significantly improve national security and other security screening applications.;Top accuracy face identification algorithms are not real-time. The top face identification algorithms evaluated in National Institutes of Standards (NIST) testing achieve 95% or greater identification accuracy but require several minutes to complete identification on a 1,196 member gallery set of 100 kilopixel resolution images. Recent testing shows that face identification algorithms are significantly slower for current NIST test sets with a 14,365 member gallery set of 4 megapixel images. Significant performance improvement is needed to match a one million member gallery set.;The International Technology Roadmap for Semiconductors projects Systems on a Chip with more than one thousand processors will be available within ten years. However, it’s not clear how face identification algorithms can use these massively parallel SOCs to improve performance or which architectural characteristics are important for these algorithms.;This research specifies key architectural characteristics for a massively parallel SOC to enable real-time face identification. A set of face identification benchmarks has been created to guide this research and includes small and large image data sets. This research contributes a method to explore the SOC design space to evaluate the final SOC performance. Specifically, this research is focused on the impact of processor instruction set architecture performance, the external memory bandwidth, the quantity of processing cores, the on-chip communication network, and the mapping of the face identification benchmarks.
机译:全球范围内对恐怖主义日益关注的问题引起了人们对迅速准确地识别潜在恐怖分子等个人的兴趣。使用人脸识别功能,可以针对恐怖分子监视列表中超过一百万个条目快速筛选个人的能力,可以显着改善国家安全和其他安全筛选应用程序。最高精确度的人脸识别算法不是实时的。在美国国家标准研究院(NIST)测试中评估的顶脸识别算法可达到95%或更高的识别准确度,但需要几分钟才能完成对1,196个成员画廊的100千像素分辨率图像的识别。最近的测试表明,对于具有14个365个成员画廊的4百万像素图像的当前NIST测试集而言,人脸识别算法的速度要慢得多。要匹配一百万个成员画廊,需要显着提高性能。半导体项目国际技术路线图将在十年内推出具有1000多个处理器的片上系统。但是,尚不清楚人脸识别算法如何使用这些大规模并行SOC来提高性能,或者哪些体系结构特征对于这些算法很重要。;这项研究指定了大规模并行SOC的关键体系结构特征以实现实时人脸识别。已经创建了一组面部识别基准来指导这项研究,其中包括大小图像数据集。这项研究为探索SOC设计空间以评估最终SOC性能提供了一种方法。具体来说,这项研究集中在处理器指令集架构性能,外部存储器带宽,处理内核数量,片上通信网络以及人脸识别基准的映射等方面。

著录项

  • 作者

    Sprang, Ralph.;

  • 作者单位

    University of Pittsburgh.;

  • 授予单位 University of Pittsburgh.;
  • 学科 Engineering Computer.;Engineering Electronics and Electrical.;Computer Science.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 207 p.
  • 总页数 207
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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