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Cross-View Action Recognition Using View-Invariant Pose Feature Learned from Synthetic Data with Domain Adaptation

机译:使用View-Invariant姿势特征从具有域适应的合成数据学习的视图 - 不变姿势特征的巧克力视图动作识别

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Recognizing human activities from unknown views is a challenging problem since human shapes appear quite differently from different viewpoints. In this paper, we learn a View-Invariant Pose (VIP) feature for depth-based cross-view action recognition. The proposed VIP feature encoder is a deep convolutional neural network that transfers human poses from multiple viewpoints to a shared high-level feature space. Learning such a deep model requires a large corpus of multi-view paired data which is very expensive to collect. Therefore, we generate a synthetic dataset by fitting human physical models with real motion capture data in the simulators and rendering depth images from various viewpoints. The VIP feature is learned from the synthetic data in an unsupervised way. To ensure the transferability from synthetic data to real data, domain adaptation is employed to minimize the domain difference. Moreover, an action can be considered as a sequence of poses and the temporal progress is modeled by recurrent neural network. In the experiments, our method is applied on two benchmark datasets of multi-view 3D human action and has been shown to achieve promising results when compared with the state-of-the-arts.
机译:从未知观点识别人类活动是一个具有挑战性的问题,因为人类形状与不同的观点出现完全不同。在本文中,我们学习了基于深度的跨视图动作识别的视图不变的姿势(VIP)功能。所提出的VIP特征编码器是一个深度卷积神经网络,将人类从多个观点传输到共享的高级特征空间。学习这种深度模型需要大量的多视图配对数据语料库,其收集非常昂贵。因此,我们通过使用模拟器中的实际运动捕获数据和从各种视点渲染深度图像来生成合成数据集。 VIP特征是以无人监督的方式从合成数据中学到的。为了确保从合成数据到真实数据的可转换性,采用域自适应来最小化域差。此外,可以认为动作作为姿势序列,并且通过经常性神经网络建模时间进度。在实验中,我们的方法应用于多视图3D人类行动的两个基准数据集,并且已被证明与最先进的结果相比,实现了有希望的结果。

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