在Gabor滤波和神经网络之前实现肤色选择,减少人脸检测的执行时间

Mejda Chihaoui, Akram Elkefi, W. Bellil, C. Amar
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引用次数: 2

摘要

提出了一种基于肤色、Gabor滤波和神经网络的人脸检测系统。Gabor滤波器和神经网络在人脸识别中的应用并不新鲜。然而,本文的主要重点是在Gabor滤波器和神经网络之前实现肤色选择,以减少计算时间。首先,我们对皮肤颜色进行分析,提取有重要概率是人脸的皮肤区域。这种对光照变化具有鲁棒性的技术允许从图像中提取皮肤区域。我们利用这种方法避免了错误的检测,并帮助系统在正确的区域检测人脸,最大限度地减少了研究时间。其次,为了提取特征,我们提出了一种将Gabor滤波器应用于局部皮肤空间的技术。最后,将Gabor滤波器得到的人脸特征向量作为神经网络分类器的输入,该分类器将输入的图像像素分类为人脸或非人脸像素。一些结果证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of skin color selection prior to Gabor filter and neural network to reduce execution time of face detection
This paper proposes a face detection system based on the skin color, the Gabor filter and the neural network. The use of Gabor filters and neural networks for face recognition is not new. However, the principal focus of the proposed paper is the implementation of skin color selection prior to Gabor filters and neural networks on order to reduce computation time. First, we analyze the skin color to extract skin areas which have an important probability to be faces. This technique robust to the lighting variation allows extracting, from an image, skin areas. We utilize this method to avoid wrong detection and to help the system detect the face in the right areas and minimize the research time. Second, to extract features, we propose a technique using the Gabor filter applied on the localized skin space. Finally, the vectors of the face features obtained by the Gabor filter are used as the input of a neural network classifier which classifies an input image pixel as a face or nonface pixel. Some results are shown to approve our approach efficiency.
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