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Inter-occlusion reasoning for human detection based on variational mean field

机译:基于变分均值场的遮挡推理

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Detecting multiple humans in crowded scenes is challenging because the humans are often partially or even totally occluded by each other. In this paper, we propose a novel algorithm for partial inter-occlusion reasoning in human detection based on variational mean field theory. The proposed algorithm can be integrated with various part-based human detectors using different types of features, object representations, and classifiers. The algorithm takes as the input an initial set of possible human objects (hypotheses) detected using a part-based human detector. Each hypothesis is decomposed into a number of parts and the occlusion status of each part is inferred by the proposed algorithm. Specifically, initial detections (hypotheses) with spatial layout information are represented in a graphical model and the inference is formulated as an estimation of the marginal probability of the observed data in a Bayesian network. The variational mean field theory is employed as an effective estimation technique. The proposed method was evaluated on popular datasets including CAVIAR, iLIDS, and INRIA. Experimental results have shown that the proposed algorithm is not only able to detect humans under severe occlusion but also enhance the detection performance when there is no occlusion.
机译:在拥挤的场景中检测多个人是具有挑战性的,因为人经常彼此部分或什至完全被遮挡。在本文中,我们提出了一种基于变分均值场理论的新颖的部分遮挡推理算法。所提出的算法可以与使用不同类型的特征,对象表示和分类器的各种基于零件的人体检测器集成。该算法将使用基于零件的人体检测器检测到的一组可能的人体对象(假设)作为输入。将每个假设分解为多个部分,并通过所提出的算法推断每个部分的遮挡状态。具体而言,在图形模型中表示具有空间布局信息的初始检测(假设),并将推论公式化为对贝叶斯网络中观测数据的边际概率的估计。变分平均场理论被用作一种有效的估计技术。在包括CAVIAR,iLIDS和INRIA在内的流行数据集上对提出的方法进行了评估。实验结果表明,该算法不仅能够检测出严重遮挡的人,而且在没有遮挡的情况下还能提高检测性能。

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