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Fast enhanced face-based adaptive skin color model

机译:快速增强面基自适应肤色模型

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摘要

Man machine interface by video analysis becomes popular recently. The most typical body gesture utilized for computer interaction is hand gesture. Therefore, it is a very important topic to accurately extract hand regions from a sequence of images in real time. In this paper, we propose an adaptive skin color model which is based on detected face color. Skin colors are sampled from extracted face region where non-skin color pixels like eyebrow or glasses are excluded. Gaussian distributions of normalized RGB are then used to define the skin color model for the detected person. To demonstrate the robustness of proposed model, experiments under diversified lighting and background are tested. Traditional methods based on RGB, Normalized RGB, and YCbCr are all implemented for comparison. From experimental results, skin color pixels could be detected for each person. The accuracy rate is 95.73% on average and is superior to previously mentioned methods.
机译:Man Machine接口通过视频分析最近变得流行。用于计算机互动的最典型的身体手势是手势。因此,实时从一系列图像中精确提取手区域的一个非常重要的话题。在本文中,我们提出了一种基于检测到的面色的自适应肤色模型。从提取的面部区域采样肤色,其中排除了眉毛或玻璃等非皮肤颜色像素。然后使用归一化RGB的高斯分布来定义检测到的人的肤色模型。为了证明所提出的模型的稳健性,测试了多样化的照明和背景下的实验。基于RGB,归一化RGB和YCBCR的传统方法都实施了相比之下。从实验结果,可以为每个人检测肤色像素。精度率平均为95.73%,优于先前提到的方法。

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