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Posterior constraints for double-counting problem in clustered pose estimation

机译:集群姿态估计中的双重计数问题的后限约束

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In this paper, we propose a novel and integrated framework to estimate human pose. Firstly, a pose cluster of the relative location between connected parts is applied before pictorial structure modeling, which can make each model more faithful and the whole estimation more flexible to various kinds of poses. And then, different from previous single global model, we propose the mixture pictorial structure models based on the clusters to obtain the parts candidates. Furthermore, to overcome the double-counting problem, we also present a constraint function to recombine the candidates derived from the optimal clustered model. Experiments on a publicly challenging dataset show that our method is more accurate and flexible and performs effectively in tackling the double-counting phenomena.
机译:在本文中,我们提出了一种新颖的综合框架来估计人类姿势。 首先,在图案结构建模之前应用连接部件之间的相对位置的姿势簇,这可以使每个模型更忠于,并且整个估计更灵活地与各种姿势更加灵活。 然后,与先前的单一全局模型不同,我们提出了基于集群的混合图像结构模型来获得零件候选。 此外,为了克服双重计数问题,我们还提出了一个约束函数来重新组合从最佳聚类模型导出的候选者。 关于公共具有挑战性的数据集的实验表明,我们的方法更准确,灵活,有效地处理双计数现象。

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