人脸识别领域具有里程碑意义的论文

G. M. Beumer, Q. Tao, A. Bazen, R. Veldhuis
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引用次数: 62

摘要

良好的配准(与参考点对齐)对于准确的人脸识别至关重要。研究了标记数对平均定位误差和识别性能的影响。为此,我们探索并比较了两种地标定位方法:(1)基于最大似然比的最可能地标定位器(MLLL)和(2)Viola-Jones检测。两者都使用面部特征(眼睛、鼻子、嘴巴等)的位置作为地标。在此基础上,提出了一种基于子空间投影的地标校正方法(BILBO)。MLLL已经被训练定位17个地标,Viola-Jones方法被训练定位5个地标。测量了平均定位误差及其对验证性能的影响。研究发现,在眼睛上,Viola-Jones探测器比mll - bilbo组合的眼间距离精度提高了约1%。在鼻子和嘴巴上,MLLL-BILBO组合比Viola-Jones检测器的眼间距离精确约0.5%。使用更多的地标将导致更低的等错误率,即使地标不是那么准确。如果使用相同的地标,最精确的地标方法可以提供最佳的验证性能
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A landmark paper in face recognition
Good registration (alignment to a reference) is essential for accurate face recognition. The effects of the number of landmarks on the mean localization error and the recognition performance are studied. Two landmarking methods are explored and compared for that purpose: (1) the most likely-landmark locator (MLLL), based on maximizing the likelihood ratio, and (2) Viola-Jones detection. Both use the locations of facial features (eyes, nose, mouth, etc) as landmarks. Further, a landmark-correction method (BILBO) based on projection into a subspace is introduced. The MLLL has been trained for locating 17 landmarks and the Viola-Jones method for 5. The mean localization errors and effects on the verification performance have been measured. It was found that on the eyes, the Viola-Jones detector is about 1% of the interocular distance more accurate than the MLLL-BILBO combination. On the nose and mouth, the MLLL-BILBO combination is about 0.5% of the inter-ocular distance more accurate than the Viola-Jones detector. Using more landmarks will result in lower equal-error rates, even when the landmarking is not so accurate. If the same landmarks are used, the most accurate landmarking method gives the best verification performance
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