学习使用大型特征向量来散列人脸

C. E. Santos, Ewa Kijak, G. Gravier, W. R. Schwartz
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引用次数: 10

摘要

在过去的几年里,人脸识别得到了大量的研究。然而,大多数相关工作都集中在提高测试单个对探针主体的准确性和/或速度上。在这项工作中,我们提出了一种新的方法,灵感来自于局部感知哈希(LSH)应用于大型通用数据集的成功,以及偏最小二乘(PLS)分析在应用于人脸识别的大型特征向量集时提供的鲁棒性。结果是一种与特征组合兼容的鲁棒哈希方法,用于快速计算大型主题库中的候选短列表。我们为所提出的方法提供了理论支持和实践原则,这些方法可以在应用于人脸库的哈希函数的进一步开发中重用。该方法在FERET和FRGCv1数据集上进行了评估,并与文献中的其他方法进行了比较。实验结果表明,与对人脸库中的所有受试者进行扫描相比,该方法的速度提高了16倍。
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Learning to hash faces using large feature vectors
Face recognition has been largely studied in past years. However, most of the related work focus on increasing accuracy and/or speed to test a single pair probe-subject. In this work, we present a novel method inspired by the success of locality sensing hashing (LSH) applied to large general purpose datasets and by the robustness provided by partial least squares (PLS) analysis when applied to large sets of feature vectors for face recognition. The result is a robust hashing method compatible with feature combination for fast computation of a short list of candidates in a large gallery of subjects. We provide theoretical support and practical principles for the proposed method that may be reused in further development of hash functions applied to face galleries. The proposed method is evaluated on the FERET and FRGCv1 datasets and compared to other methods in the literature. Experimental results show that the proposed approach is able to speedup 16 times compared to scanning all subjects in the face gallery.
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