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Global Regularizer and Temporal-Aware Cross-Entropy for Skeleton-Based Early Action Recognition

机译:基于骨骼的早期动作识别的全局正则化和时间感知交叉熵

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In this paper, we propose a new approach to recognize the class label of an action before this action is fully performed based on skeleton sequences. Compared to action recognition which uses fully observed action sequences, early action recognition with partial sequences is much more challenging mainly due to: (1) the global information of a long-term action is not available in the partial sequence, and (2) the partial sequences at different observation ratios of an action contain a number of sub-actions with diverse motion information. To address the first challenge, we introduce a global regularizer to learn a hidden feature space, where the statistical properties of the partial sequences are similar to those of the full sequences. We introduce a temporal-aware cross-entropy to address the second challenge and achieve better prediction performance. We evaluate the proposed method on three challenging skeleton datasets. Experimental results show the superiority of the proposed method for skeleton-based early action recognition.
机译:在本文中,我们提出了一种新方法,可在基于骨架序列完全执行此动作之前识别该动作的类标签。与使用完全观察到的动作序列的动作识别相比,采用部分序列的早期动作识别更具挑战性,这主要是因为:(1)在部分序列中无法获得长期动作的全局信息,并且(2)动作的不同观察比率下的部分序列包含多个具有不同运动信息的子动作。为了解决第一个挑战,我们引入了一个全局正则化器来学习隐藏的特征空间,其中部分序列的统计属性与完整序列的统计属性相似。我们引入了时间感知的交叉熵来解决第二个挑战,并获得更好的预测性能。我们在三个具有挑战性的骨架数据集上评估了提出的方法。实验结果表明了该方法在基于骨骼的早期动作识别中的优越性。

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