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Complicated human action understanding by massive-scale graph discovering technique

机译:通过大规模图形发现技术复杂的人类行动理解

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In order to solve the problem that the first frame of human motion prediction is discontinuous, we notice that the prediction time is short due to the influence of uncertain factors such as motion speed and motion amplitude. In this work, an end-to-end model based on bidirectional gating loop unit (GRU) and attention mechanism, biagru-seq2seq, is proposed. The encoder of our deep model adopts bidirectional Gru structure to input data from both positive and negative directions simultaneously. Meanwhile, the decoder part adopts unidirectional GRU structure and adds attention mechanism to encode the output of the encoder into a vector sequence containing multiple subsets. Also, a large-scale graph discovery framework is used to identify the various human action components. Subsequently, the input and output data of the decoder are fed into the residual at the same time. In the designed tensorflow framework, we use human3.6m, the largest open data set of motion capture data at present, to fulfill human motion prediction applications. Comprehensive experimental results have shown that the proposed model can not only substantially reduce the short-term motion prediction error, but also accurately predict multi frame human action recognition.
机译:为了解决人体运动预测的第一帧是不连续的问题,我们注意到由于不确定因素(例如运动速度和运动幅度)的影响,预测时间短。在这项工作中,提出了一种基于双向浇注环路单元(GRU)和注意机制的端到端模型BIAGRU-SEQ2SEQ。我们深模型的编码器采用双向GRU结构,同时输入来自正极和负方向的数据。同时,解码器部分采用单向GRU结构,并增加注意机制以将编码器的输出编码为包含多个子集的矢量序列。此外,大规模图形发现框架用于识别各种人类动作组件。随后,解码器的输入和输出数据同时馈入残差。在设计的Tensorflow框架中,我们使用Human3.6m,目前最大的开放数据集的运动捕获数据集,以满足人类运动预测应用。综合实验结果表明,所提出的模型不仅可以大大降低短期运动预测误差,而且还可以准确地预测多帧人类动作识别。

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