人脸定位的n均值核滤波和归一化相关

N. N. Dawoud, B. Samir, J. Janier
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引用次数: 2

摘要

近年来,模板匹配方法被广泛应用于各种姿态、光照和杂波背景下的人脸定位。归一化互相关(NCC)是计算存储的人脸模板与输入图像的矩形块之间的相似度匹配来定位人脸位置的一种有效且简单的测量方法。然而,由于矩形块的矩阵值的影响,一些矩形块的面比正确块多,往往会产生定位误差。本文提出了一种简单的NCC使用前预处理方法。这是为了通过增加输入图像像素的值来减少此类问题的影响。结果表明,与单独使用NCC相比,定位精度有了显着提高,其精度仅为11%。使用耶鲁大学数据库对我们提出的方法进行了评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
N-mean kernel filter and normalized correlation for face localization
Recently, Template matching approach has been widely used to locate faces with various pose, illumination and clutter background. Normalized Cross-correlation (NCC) is an effective and simple measurement method to compute the similarity matching between the stored faces templates and the rectangular blocks of the input image to locate the face position. However, localization error occurs very often due to some rectangular blocks which have more face than correct blocks because of the effect of matrices values of these blocks. In this paper we proposed a simple preprocessing method before the use of NCC. This is to reduce the effects of such problems by increasing the values of the input image pixels. The result showed a significant improvement in localization accuracy compared with the use of NCC alone which is only up to 11%. Yale University database was used to evaluate our proposed method.
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