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Discriminative semi-supervised learning of dynamical systems for motion estimation

机译:用于运动估计的动力学系统的判别半监督学习

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摘要

We introduce novel discriminative semi-supervised learning algorithms for dynamical systems, and apply them to the problem of 3D human motion estimation. Our recent work on discriminative learning of dynamical systems has been proven to achieve superior performance than traditional generative learning approaches. However, one of the main issues of learning the dynamical systems is to gather labeled output sequences which are typically obtained from precise motion capture tools, hence expensive. In this paper we utilize a large amount of unlabeled (input) video data to improve the prediction performance of the dynamical systems significantly. We suggest two discriminative semi-supervised learning approaches that extend the well-known algorithms in static domains to the sequential, real-valued multivariate output domains: (i) self-training which we derive as coordinate ascent optimization of a proper discriminative objective over both model parameters and the unlabeled state sequences, (ii) minimum entropy approach which maximally reduces the model's uncertainty in state prediction for unlabeled data points. These approaches are shown to achieve significant improvement against the traditional generative semi-supervised learning methods. We demonstrate the benefits of our approaches on the 3D human motion estimation problems.
机译:我们介绍了用于动力系统的新颖判别式半监督学习算法,并将其应用于3D人体运动估计问题。我们最近在动力学系统的判别式学习方面的工作已经证明比传统的生成式学习方法具有更高的性能。然而,学习动力系统的主要问题之一是收集通常从精确运动捕捉工具获得的标记输出序列,因此很昂贵。在本文中,我们利用大量未标记(输入)的视频数据来显着提高动态系统的预测性能。我们建议使用两种判别性半监督学习方法,将静态域中的著名算法扩展到顺序的,实值的多元输出域:(i)自训练,我们将其作为对两个目标上正确判别目标的协调上升优化而得出模型参数和未标记状态序列;(ii)最小熵方法,可最大程度地减少模型在未标记数据点状态预测中的不确定性。与传统的生成式半监督学习方法相比,这些方法显示出了显着的改进。我们展示了我们的方法对3D人体运动估计问题的好处。

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