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Multiple Metric Learning for Graph Based Human Pose Estimation

机译:基于图的人体姿势估计的多指标学习

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In this paper, a multiple metric learning scheme for human pose estimation from a single image is proposed. Here, we focused on a big challenge of this problem which is; different 3D poses might correspond to similar inputs. To address this ambiguity, some Euclidean distance based approaches use prior knowledge or pose model that can work properly, provided that the model parameters are being estimated accurately. In the proposed method, the manifold of data is divided into several clusters and then, we learn a new metric for each partition by utilizing not only input features, but also their corresponding poses. The manifold clustering allows the decomposition of multiple manifolds into a set of manifolds that are less complex. Furthermore, the input data could be mapped to a new space where the ambiguity problem is minimized. Our guiding principle for learning the distance metrics is to preserve the manifold structure of the input data. The proposed method employs Tikhonov regularization technique to obtain a smooth estimation of the labels. Experiments on the data set of human pose estimation demonstrate that the proposed multiple metric learning consistently outperforms single-metric learning method across different activities by a wide margin.
机译:在本文中,提出了一种用于从单个图像进行人体姿势估计的多度量学习方案。在这里,我们集中讨论了这个问题的一个巨大挑战。不同的3D姿势可能对应于相似的输入。为了解决这种歧义,某些基于欧几里德距离的方法使用了可以正确工作的先验知识或位姿模型,前提是要准确地估计模型参数。在提出的方法中,数据的流形被分成几个簇,然后,我们不仅利用输入特征,还利用它们的相应姿势,为每个分区学习了一个新的度量。歧管群集允许将多个歧管分解为一组不太复杂的歧管。此外,可以将输入数据映射到一个新的空间,在该空间中,模糊性问题会降至最低。我们学习距离度量的指导原则是保留输入数据的流形结构。所提出的方法采用Tikhonov正则化技术来获得标签的平滑估计。在人体姿势估计数据集上的实验表明,所提出的多度量学习在不同活动上始终远远优于单度量学习方法。

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