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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Robust Hausdorff distance measure for face recognition
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Robust Hausdorff distance measure for face recognition

机译:鲁棒的Hausdorff距离度量用于人脸识别

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Face is considered to be one of the biometrics in automatic person identification. The non-intrusive nature of face recognition makes it an attractive choice. For face recognition system to be practical, it should be robust to variations in illumination, pose and expression as humans recognize faces irrespective of all these variations. In this paper, an attempt to address these issues is made using a new Hausdorff distance-based measure. The proposed measure represent the gray values of pixels in face images as vectors giving the neighborhood intensity distribution of the pixels. The transformation is expected to be less sensitive to illumination variations besides preserving the appearance of face embedded in the original gray image. While the existing Hausdorff distance-based measures are defined between the binary edge images of faces which contains primarily structural information, the proposed measure gives the dissimilarity between the appearance of faces. An efficient method to compute the proposed measure is presented. The performance of the method on bench mark face databases shows that it is robust to considerable variations in pose, expression and illumination. Comparison with some of the existing Hausdorff distance-based methods shows that the proposed method performs better in many cases. (c) 2006 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:面部被认为是自动人员识别中的生物识别技术之一。人脸识别的非侵入性使其成为一个有吸引力的选择。为了使人脸识别系统切实可行,它应该对光照,姿势和表情的变化具有鲁棒性,因为无论人如何识别脸部,人都可以识别。在本文中,尝试使用基于Hausdorff距离的新量度来解决这些问题。提出的措施将人脸图像中像素的灰度值表示为矢量,从而给出像素的邻域强度分布。除了保留嵌入在原始灰度图像中的面部外观之外,预计该变换对照明变化的敏感性较低。虽然现有的基于Hausdorff距离的测度是在主要包含结构信息的人脸二值边缘图像之间定义的,但所提出的测度却给出了人脸外观之间的差异。提出了一种有效的方法来计算提出的措施。该方法在基准人脸数据库上的性能表明,它对于姿态,表情和照明的显着变化具有鲁棒性。与一些现有的基于Hausdorff距离的方法的比较表明,该方法在许多情况下表现更好。 (c)2006模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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