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Invariant Face Detection in Color Images Using Orthogonal Fourier-Mellin Moments and Support Vector Machines

机译:使用正交傅立叶梅林矩和支持向量机的彩色图像中不变的脸部检测

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This paper proposes an automatic face detection system that combines two novel methods to achieve invariant face detection and a high discrimination between faces and distractors in static color images of complex scenes. The system applies Orthogonal Fourier-Mellin Moments (OFMMs), recently developed by one of the authors [1], to achieve fully translation-, scale- and in-plane rotation-invariant face detection. Support Vector Machines (SVMs), a binary classifier based on a novel statistical learning technique that has been developed in recent years by Vapnik [2], are applied for face/non-face classification. The face detection system first performs a skin color-based image segmentation by modeling the skin chrominance distribution for several different chrominance spaces. Feature extraction of each face candidate in the segmented images is then implemented by calculating a selected number of OFMMs. Finally, the OFMMs form the input vector to the SVMs. The comparative face detection performance of the SVMs and of a multilayer perceptron Neural Network (NN) is analyzed for a set of 100 test images. For all the chrominance spaces that are used, the application of SVMs to the OFMMs yields a higher detection performance than when applying the NN. Normalized chrominance spaces produce the best segmentation results, and subsequently the highest rate of detection of faces with a large variety of poses, of skin tones and against complex backgrounds. The combination of the OFMMs and of the SVMs, and of the skin color-based image segmentation using normalized chrominance spaces, constitutes a promising approach to achieve robustness in the task of face detection.
机译:本文提出了一种自动面部检测系统,它结合了两种新方法来实现不变的面部检测和在复杂场景的静态彩色图像中的面部和分散体之间的高分辨率。该系统应用正交的傅立叶 - Mellin矩(OFMMS),最近由作者[1]之一开发,实现完全翻译,比例和面内旋转不变的面部检测。支持向量机(SVM),基于近年来由VAPNIK [2]开发的新型统计学习技术的二进制分类器用于面部/非面孔分类。面部检测系统首先通过为几个不同的色度空间建模皮肤色度分布来执行肤色的基于图像分割。然后通过计算所选择的OFMMS来实现分段图像中的每个面候选的特征提取。最后,OFMMS将输入向量形成为SVM。分析了SVMS和多层Perceptron神经网络(NN)的比较面检测性能,用于一组100个测试图像。对于所使用的所有色度空间,SVMS对OFMS的应用产生的检测性能越高,而不是应用NN时。标准化的色度空间产生了最佳的分段结果,随后具有大量姿势的面孔的最高速度,肤色和复杂的背景。使用归一化色度空间的MMS和SVM的组合和SVM的组合,以及使用归一化色度空间的基于皮肤颜色的图像分割构成了实现面部检测任务中鲁棒性的有希望的方法。

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