Memory-based face recognition for visitor identification

T. Sim, R. Sukthankar, M. D. Mullin, S. Baluja
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引用次数: 87

Abstract

We show that a simple, memory-based technique for appearance-based face recognition, motivated by the real-world task of visitor identification, can outperform more sophisticated algorithms that use principal components analysis (PCA) and neural networks. This technique is closely related to correlation templates; however, we show that the use of novel similarity measures greatly improves performance. We also show that augmenting the memory base with additional, synthetic face images results in further improvements in performance. Results of extensive empirical testing on two standard face recognition datasets are presented, and direct comparisons with published work show that our algorithm achieves comparable (or superior) results. Our system is incorporated into an automated visitor identification system that has been operating successfully in an outdoor environment since January 1999.
基于记忆的人脸识别访客身份
我们展示了一种简单的,基于记忆的基于外观的人脸识别技术,受现实世界访客识别任务的激励,可以胜过使用主成分分析(PCA)和神经网络的更复杂的算法。该技术与相关模板密切相关;然而,我们表明使用新的相似度量大大提高了性能。我们还表明,使用额外的合成人脸图像来增强记忆基础可以进一步提高性能。在两个标准人脸识别数据集上进行了广泛的实证测试,并与已发表的工作进行了直接比较,结果表明我们的算法达到了相当(或更好)的结果。自一九九九年一月起,我们的系统已并入一套自动访客身份识别系统,在户外环境下成功运作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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