一种新的基于复合向量的眼睛检测偏置判别分析。

Chunghoon Kim, Sang-Il Choi, M Turk, Chong-Ho Choi
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引用次数: 16

摘要

提出了一种新的基于复合向量的有偏判别分析(BDA)方法。复合向量由图像窗口内的几个像素组成。复合向量的协方差是由它们的内积得到的,可以看作是像素协方差的泛化。本文提出的复合BDA (C-BDA)方法是一种利用复合向量协方差的BDA方法。我们构建了一个用于眼部检测的混合级联检测器,前期使用Haar-like特征,后期使用C-BDA获得的复合特征。该检测器实时运行;在一台典型的PC上,它的执行时间是5.5 ms。CMU PIE数据库和我们自己的真实世界数据集的实验结果表明,所提出的检测器对面部姿势、光照、眼镜和部分遮挡等多种变化具有鲁棒性。总体而言,CMU PIE数据库的3604张人脸图像每双眼睛的检测率为98.0%,真实数据集的2331张人脸图像每双眼睛的检测率为95.1%。特别是对于2120 CMU无眼镜的PIE图像,其检测率高达99.7%。利用所提出的检测器的眼睛坐标对人脸识别性能进行了研究。对真实数据集的识别结果表明,所提出的检测器与手动定位眼睛坐标的方法具有相似的性能,表明所提出的眼睛检测器的精度与地面真实数据的精度相当。
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A New Biased Discriminant Analysis Using Composite Vectors for Eye Detection.

We propose a new biased discriminant analysis (BDA) using composite vectors for eye detection. A composite vector consists of several pixels inside a window on an image. The covariance of composite vectors is obtained from their inner product and can be considered as a generalization of the covariance of pixels. The proposed composite BDA (C-BDA) method is a BDA using the covariance of composite vectors. We construct a hybrid cascade detector for eye detection, using Haar-like features in the earlier stages and composite features obtained from C-BDA in the later stages. The proposed detector runs in real time; its execution time is 5.5 ms on a typical PC. The experimental results for the CMU PIE database and our own real-world data set show that the proposed detector provides robust performance to several kinds of variations such as facial pose, illumination, eyeglasses, and partial occlusion. On the whole, the detection rate per pair of eyes is 98.0% for the 3604 face images of the CMU PIE database and 95.1% for the 2331 face images of the real-world data set. In particular, it provides a 99.7% detection rate for the 2120 CMU PIE images without glasses. Face recognition performance is also investigated using the eye coordinates from the proposed detector. The recognition results for the real-world data set show that the proposed detector gives similar performance to the method using manually located eye coordinates, showing that the accuracy of the proposed eye detector is comparable with that of the ground-truth data.

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