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Robust Face Detection under Partial Occlusion

机译:部分遮挡下的稳健人脸检测

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In this paper, a robust face detection method under partial occlusion is proposed. In recent years, the effectiveness of face detection methods using support vector machines (SVM) has been reported, but in conventional algorithms, one kernel is applied to global features extracted from an image. Global features are easily influenced by partial occlusion, and therefore the conventional algorithms appear not to be robust in the presence of occlusion. Good handling of local features is necessary in order to provide robustness to partial occlusion in face detection methods based on SVM. We introduce a local kernel for good handling of local features in SVM and use summation as the integration method. In the experiment, a comparison was made with SVM based on the conventional global kernel and using face images including occlusions and face images including shadows caused by changes in the direction of the light source. The robustness of the proposed method to occlusion was demonstrated. It was also confirmed that faces could be detected from face images including practical occlusions such as sunglasses or scarves.
机译:本文提出了一种在部分遮挡下的鲁棒性人脸检测方法。近年来,已经报道了使用支持向量机(SVM)的面部检测方法的有效性,但是在传统算法中,一个内核被应用于从图像中提取的全局特征。全局特征很容易受到部分遮挡的影响,因此,常规算法在存在遮挡的情况下似乎不够鲁棒。为了在基于SVM的面部检测方法中为部分遮挡提供鲁棒性,必须对局部特征进行良好的处理。我们引入了一个本地内核来很好地处理SVM中的本地特征,并使用求和作为集成方法。在实验中,将SVM与基于常规全局内核的SVM进行了比较,并使用了包含遮挡的面部图像和包含由光源方向变化引起的阴影的面部图像。证明了该方法对遮挡的鲁棒性。还证实了可以从面部图像中检测到面部,包括诸如太阳镜或围巾的实际遮挡。

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