Face detection based neural networks using robust skin color segmentation

A. Mohamed, Ying Weng, Jianmin Jiang, S. Ipson
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引用次数: 35

Abstract

This paper proposes a robust schema for face detection system via Gaussian mixture model to segment image based on skin color. After skin and non skin face candidatespsila selection, features are extracted directly from discrete cosine transform (DCT) coefficients computed from these candidates. Moreover, the back-propagation neural networks are used to train and classify faces based on DCT feature coefficients in Cb and Cr color spaces. This schema utilizes the skin color information, which is the main feature of face detection. DCT feature values of faces, representing the data set of skin/non-skin face candidates obtained from Gaussian mixture model are fed into the back-propagation neural networks to classify whether the original image includes a face or not. Experimental results shows that the proposed schema is reliable for face detection, and pattern features are detected and classified accurately by the backpropagation neural networks.
基于人脸检测的神经网络鲁棒肤色分割
本文提出了一种基于高斯混合模型的人脸检测系统的鲁棒模式。在选择皮肤和非皮肤候选人脸后,直接从这些候选人脸计算的离散余弦变换(DCT)系数中提取特征。此外,基于Cb和Cr颜色空间的DCT特征系数,利用反向传播神经网络对人脸进行训练和分类。该方案利用了肤色信息,这是人脸检测的主要特征。将高斯混合模型得到的代表皮肤/非皮肤候选人脸数据集的人脸DCT特征值输入到反向传播神经网络中,对原始图像是否包含人脸进行分类。实验结果表明,所提模式用于人脸检测是可靠的,反向传播神经网络能够准确地检测和分类出模式特征。
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