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Comparative performance of different skin chrominance models and chrominance spaces for the automatic detection of human faces in color images

机译:彩色图像中人脸自动检测的不同皮肤色度模型和色度空间的比较性能

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This paper presents an analysis of the performance of two different skin chrominance models and of nine different chrominance spaces for the color segmentation and subsequent detection of human faces in two-dimensional static images. For each space, we use the single Gaussian model based on the Mahalanobis metric and a Gaussian mixture density model to segment faces from scene backgrounds. In the case of the mixture density model, the skin chrominance distribution is estimated by use of the expectation-maximisation (EM) algorithm. Feature extraction is performed on the segmented images by use of invariant Fourier-Mellin moments. A multilayer perceptron neural network (NN), with the invariant moments as the input vector, is then applied to distinguish faces from distractors. With the single Gaussian model, normalized color spaces are shown to produce the best segmentation results, and subsequently the highest rate of face detection. The results are comparable to those obtained with the more sophisticated mixture density model. However, the mixture density model improves the segmentation and face detection results significantly for most of the un-normalized color spaces. Ultimately, we show that, for each chrominance space, the detection efficiency depends on the capacity of each model to estimate the skin chrominance distribution and, most importantly, on the discriminability between skin and "non-skin" distributions.
机译:本文介绍了两种不同的皮肤色度模型和九种不同的色度空间在二维静态图像中进行颜色分割和随后人脸检测的性能分析。对于每个空间,我们使用基于Mahalanobis度量的单一高斯模型和高斯混合密度模型对场景背景中的人脸进行分割。在混合物密度模型的情况下,通过使用最大期望值(EM)算法估计皮肤色度分布。通过使用不变傅立叶-梅林矩对分割后的图像执行特征提取。然后将具有不变矩作为输入向量的多层感知器神经网络(NN)应用于区分人脸和干扰物。使用单个高斯模型,显示归一化的色彩空间可产生最佳的分割结果,从而获得最高的人脸检测率。结果与使用更复杂的混合物密度模型获得的结果相当。但是,对于大多数未归一化的色彩空间,混合密度模型可以显着改善分割效果和面部检测结果。最终,我们表明,对于每个色度空间,检测效率取决于每个模型估计皮肤色度分布的能力,最重要的是取决于皮肤和“非皮肤”分布之间的可分辨性。

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