SSNet:用于在线三维动作预测的尺度选择网络

Jun Liu, Amir Shahroudy, G. Wang, Ling-yu Duan, A. Kot
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引用次数: 54

摘要

在动作预测(早期动作识别)中,目标是使用到目前为止观察到的部分来预测正在进行的动作的类标签。本文主要研究流三维骨架序列的在线动作预测。通过时间轴上的滑动窗口,引入扩展卷积网络在时间维度上对运动动力学进行建模。由于正在进行的动作的观察部分在不同的进度水平上存在显著的时间尺度变化,我们提出了一种新的窗口尺度选择方案,使我们的网络专注于正在进行的动作的执行部分,并试图在每个时间步抑制来自先前动作的噪声。此外,提出了一种激活共享方案来处理相邻步骤之间的重叠计算,从而提高了模型的运行效率。在两个具有挑战性的数据集上进行的大量实验表明了所提出的动作预测框架的有效性。
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SSNet: Scale Selection Network for Online 3D Action Prediction
In action prediction (early action recognition), the goal is to predict the class label of an ongoing action using its observed part so far. In this paper, we focus on online action prediction in streaming 3D skeleton sequences. A dilated convolutional network is introduced to model the motion dynamics in temporal dimension via a sliding window over the time axis. As there are significant temporal scale variations of the observed part of the ongoing action at different progress levels, we propose a novel window scale selection scheme to make our network focus on the performed part of the ongoing action and try to suppress the noise from the previous actions at each time step. Furthermore, an activation sharing scheme is proposed to deal with the overlapping computations among the adjacent steps, which allows our model to run more efficiently. The extensive experiments on two challenging datasets show the effectiveness of the proposed action prediction framework.
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