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Global Context-Aware Attention LSTM Networks for 3D Action Recognition

机译:用于3D动作识别的全局上下文感知LSTM网络

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Long Short-Term Memory (LSTM) networks have shown superior performance in 3D human action recognition due to their power in modeling the dynamics and dependencies in sequential data. Since not all joints are informative for action analysis and the irrelevant joints often bring a lot of noise, we need to pay more attention to the informative ones. However, original LSTM does not have strong attention capability. Hence we propose a new class of LSTM network, Global Context-Aware Attention LSTM (GCA-LSTM), for 3D action recognition, which is able to selectively focus on the informative joints in the action sequence with the assistance of global contextual information. In order to achieve a reliable attention representation for the action sequence, we further propose a recurrent attention mechanism for our GCA-LSTM network, in which the attention performance is improved iteratively. Experiments show that our end-to-end network can reliably focus on the most informative joints in each frame of the skeleton sequence. Moreover, our network yields state-of-the-art performance on three challenging datasets for 3D action recognition.
机译:长短时记忆(LSTM)网络在3D人体动作识别中表现出卓越的性能,这是因为它们可以对顺序数据的动力学和相关性进行建模。由于并非所有关节都有助于进行动作分析,并且不相关的关节通常会带来很多噪音,因此我们需要更加注意信息量大的关节。但是,原始的LSTM没有很强的注意力能力。因此,我们提出了一种新型的LSTM网络,即用于3D动作识别的全局上下文感知注意LSTM(GCA-LSTM),它可以在全局上下文信息的帮助下选择性地专注于动作序列中的信息关节。为了获得对动作序列的可靠注意力表示,我们进一步为GCA-LSTM网络提出了一种循环注意力机制,该机制反复改进了注意力表现。实验表明,我们的端到端网络可以可靠地专注于骨骼序列每一帧中信息最丰富的关节。此外,我们的网络在3个具有挑战性的数据集上可提供3D动作识别的最先进性能。

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