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Metric learning for graph based semi-supervised human pose estimation

机译:基于图的半监督人体姿势估计的度量学习

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Discriminative approaches to human pose estimation have became popular in recent years. These approaches face a big challenge: Similar inputs might correspond to very dissimilar poses. This property misleads the mapping functions which rely on the Euclidean distances in the input space. In this paper, we use the distances between the labels of the training data to learn a metric and map the input data to a space where this problem is minimized. Our mapping is linear and hence preserves the manifold structure of the input data. We benefit from the unlabeled data to estimate this manifold in the new space as a nearest neighbor graph. We finally utilize Tikhonov regularization to find a smooth estimation of the labels over this manifold. Experimental results show the superiority of the proposed method both in the amount of required training data and the performance of labeling.
机译:近年来,用于人体姿势估计的判别方法变得很流行。这些方法面临巨大挑战:相似的输入可能对应于非常不同的姿势。此属性误导了依赖于输入空间中欧几里得距离的映射函数。在本文中,我们使用训练数据的标签之间的距离来学习度量,并将输入数据映射到最小化此问题的空间。我们的映射是线性的,因此保留了输入数据的多种结构。我们将从未标记的数据中受益,以将新空间中的该流形估计为最近的邻居图。最后,我们利用Tikhonov正则化来找到该流形上标签的平滑估计。实验结果表明,该方法在所需训练数据量和标记性能方面均具有优势。

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