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Adult Image Detection using Bayesian Decision Rule weighted by SVM Probability

机译:使用SVM概率加权的贝叶斯决策规则的成人图像检测

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The SVM (support vector machine) and the SCM (skin color model) are used in detection of adult contents on images. The SVM consists of multi-class learning model and is very effective method for face detection, but complex. On the contrary, the SCM is very simple for detecting adult images using skin ratio derived from statistical characteristics of RGB color information, but less effective in close-up facial images. Hence, we propose a hybrid scheme that combines the SVM for the 1st filtering scheme using learning model (with classes of adult, benign and close-up facial images) with the SCM for the 2nd filtering scheme using skin ratio and adaptive MAP (maximum a posterior) hypothesis test based on Bayes' theorem that improves the probability of true positive detection rate of adult images.
机译:SVM(支持向量机)和SCM(肤色模型)用于检测图像上的成人内容。 SVM由多级学习模型组成,是面部检测的非常有效的方法,但复杂。相反,SCM使用来自RGB颜色信息的统计特征的皮肤比率来检测成年图像非常简单,但在特写面部图像中较少。因此,我们提出了一种混合方案,该混合方案将SVM与使用皮肤比率和自适应映射的第2滤波方案的SCM使用学习模型(具有成人,良性和特写型面部图像)的学习模型(具有类别,良性和特写面部图像)(最大a基于贝叶斯定理的后验检测,提高成人图像真正阳性检测率概率的假设检验。

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