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Automatic Image Grading Based on Skin Segmentation

机译:基于皮肤分割的自动图像分级

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摘要

This paper proposes an automatic image grading method, which classifies an image into three levels, i.e., Normal, Revealing Attire and Nude. First, a novel region based skin detection method, which incorporates the clues of color, shape, texture and neighborhood, is used to get the skin regions. Then a normalized mask is generated from the skin region image according to the scale and location of the face. Global and spatial features extracted based on this mask are used as the input of SVM to give the grade of an image. Besides, because false classifications of images with different grades have quite different affections, a cost-matrix is defined and the MetaCost method is used to get the minimum-risk results. Experimental results show the effectiveness of our method.
机译:本文提出了一种自动图像分级方法,该方法将图像分为正常,显露服装和裸露三个级别。首先,使用一种基于区域的新型皮肤检测方法,该方法结合了颜色,形状,纹理和邻域的线索,以获取皮肤区域。然后,根据脸部的比例和位置,从皮肤区域图像中生成标准化的蒙版。基于此蒙版提取的全局和空间特征用作SVM的输入,以给出图像的等级。此外,由于对不同等级图像的错误分类影响很大,因此定义了成本矩阵,并使用MetaCost方法获得最小风险结果。实验结果表明了该方法的有效性。

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