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MURAUER: Mapping Unlabeled Real Data for Label AUstERity

机译:Murauer:映射未标记的真实数据,用于标签紧缩

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Data labeling for learning 3D hand pose estimation models is a huge effort. Readily available, accurately labeled synthetic data has the potential to reduce the effort. However, to successfully exploit synthetic data, current state-of-the-art methods still require a large amount of labeled real data. In this work, we remove this requirement by learning to map from the features of real data to the features of synthetic data mainly using a large amount of synthetic and unlabeled real data. We exploit unlabeled data using two auxiliary objectives, which enforce that (i) the mapped representation is pose specific and (ii) at the same time, the distributions of real and synthetic data are aligned. While pose specifity is enforced by a self-supervisory signal requiring that the representation is predictive for the appearance from different views, distributions are aligned by an adversarial term. In this way, we can significantly improve the results of the baseline system, which does not use unlabeled data and outperform many recent approaches already with about 1% of the labeled real data. This presents a step towards faster deployment of learning based hand pose estimation, making it accessible for a larger range of applications.
机译:数据标注为学习3D手姿势估计模型是一个巨大的努力。一应俱全,准确地标记合成数据必须减少工作量的潜力。然而,为了成功地利用合成的数据,国家的最先进的现有方法仍然需要大量的标记的真实数据。在这项工作中,我们通过学习从实际数据主要是使用大量合成的和合成数据未标记的真实数据的特征的特征地图中删除了这一要求。我们利用使用两个辅助目标,其中执行未标记的数据(i)所述映射表示是特定的姿势和(ii)在同一时间,真实的和合成的数据的分布对准。而姿势特异性通过要求的表示是预测来自不同视图的外观的自动监视信号执行,分布是通过对抗性术语对准。这样一来,我们就可以显著提高基线系统,不使用无标签的数据,并且已经超越最近的许多方法与标记的真实数据的约1 %的结果。这礼物对学习基于手姿势估计,使之成为一个更大范围的应用程序访问的部署更快一步。

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