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Color Face Recognition by Auto-regressive Moving Averaging

机译:通过自动回归移动平均来识别彩色人脸

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摘要

Human face identification is a main computational step for many information-processing applications including security checkpoints, surveillance systems, video conferencing, and picture telephony. A new approach is presented for recognizing human faces and discriminating expressions associated with them in color images. It is a statistical technique based on the process of drawing facial silhouettes and characterizing them by auto-regressive moving average (ARMA), which, is, in turn, infinite impulse response (IIR) filtering. First, a facial image is transformed from its (R, G, B) space to its principal component representation. A line-drawing profile of the face image is created from its principal component using the zero-crossings of a Laplacian of Gaussian (LoG) filter. The face line-silhouette is then partitioned into 5 x 5 non-overlapping blocks, each of which is filtered by a non-causal IIR filter. The IIR coefficients are approximated by the ARMA parameter vector a. By computing the ensample average of a over the whole image area, we obtain the ARMA feature vector of the facial pattern. Face discrimination is achieved by the non-metric similarity measure S = ∣cos Z(a.b)∣ for two face patterns whose feature vectors (a and b) consist of the aforementioned ARMA coefficients. Experimental results obtained from a small database indicate that the ARMA modeling is capable of discriminating facial color images, and has the ability of distinguishing facial expressions.
机译:人脸识别是许多信息处理应用程序(包括安全检查点,监视系统,视频会议和图片电话)的主要计算步骤。提出了一种新方法,用于识别人脸并区分彩色图像中与他们相关的表情。它是一种统计技术,它基于绘制脸部轮廓并通过自动回归移动平均值(ARMA)对其进行特征化的过程,而后者又是无限脉冲响应(IIR)滤波。首先,将面部图像从其(R,G,B)空间转换为其主要成分表示。使用高斯拉普拉斯算子(LoG)滤镜的零交叉从其主要成分创建面部图像的线条轮廓。然后将面线轮廓划分为5 x 5个非重叠的块,每个块均由非因果IIR滤波器进行过滤。 IIR系数由ARMA参数向量a近似。通过计算整个图像区域的样本平均值,我们可以获得面部图案的ARMA特征向量。对于特征向量(a和b)由上述ARMA系数组成的两个面部模式,可通过非度量相似度S = coscos Z(a.b)来实现面部识别。从一个小型数据库中获得的实验结果表明,ARMA建模能够区分面部彩色图像,并且能够区分面部表情。

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