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Human Relative Position Detection Based on Mutual Occlusion

机译:基于互遮挡的人体相对位置检测

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In this paper, we propose, within the field of automatic social context analysis, a novel method to identify the mutual position between two persons in images. Based on the idea that mutual information of head position, body visibility and bodies' contour shapes may lead to a good estimation of mutual position between people, a predictor is constructed to classify the relative position between both subjects. We advocate the use of superpixels as the basic unit of the human analysis framework. We construct a Support Vector Machine classifier on the feature vector for each image. The results show that this combination of features, provides a significantly low error rate with low variance in our database of 366 images.
机译:在本文中,我们提出了一种在自动社会上下文分析领域中识别图像中两个人之间相互位置的新方法。基于头部位置,身体可见性和身体轮廓形状的相互信息可能导致对人与人之间相互位置的良好估计这一思想,构造了一个预测器以对两个对象之间的相对位置进行分类。我们提倡使用超像素作为人体分析框架的基本单位。我们在每个图像的特征向量上构造一个支持向量机分类器。结果表明,这些特征的组合在我们的366张图像数据库中提供了极低的错误率和低方差。

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