Qiong Liu
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Papers from this author
What and How? Jointly Forecasting Human Action and Pose
Yanjun Zhu, Yanxia Zhang, Qiong Liu, Andreas Girgensohn
Auto-TLDR; Forecasting Human Actions and Motion Trajectories with Joint Action Classification and Pose Regression
Abstract Slides Poster Similar
Forecasting human actions and motion trajectories addresses the problem of predicting what a person is going to do next and how they will perform it. This is crucial in a wide range of applications such as assisted living and future co-robotic settings. We propose to simultaneously learn actions and action-related human motion dynamics, while existing works perform them independently. In this paper, we present a method to jointly forecast categories of human action and the pose of skeletal joints in the hope that the two tasks can help each other. As a result, our system can predict not only the future actions but also the motion trajectories that will result. To achieve this, we define a task of joint action classification and pose regression. We employ a sequence to sequence encoder-decoder model combined with multi-task learning to forecast future actions and poses progressively before the action happens. Experimental results on two public datasets, IkeaDB and OAD, demonstrate the effectiveness of the proposed method.