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3D Action Recognition and Long-Term Prediction of Human Motion

机译:3D行动识别与人类运动的长期预测

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In this contribution we introduce a novel method for 3D trajectory based recognition and discrimination between different working actions and long-term motion prediction. The 3D pose of the human hand-forearm limb is tracked over time with a multi-hypothesis Kalman Filter framework using the Multiocular Contracting Curve Density algorithm (MOCCD) as a 3D pose estimation method. A novel trajectory classification approach is introduced which relies on the Levenshtein Distance on Trajectories (LDT) as a measure for the similarity between trajectories. Experimental investigations are performed on 10 real-world test sequences acquired from different viewpoints in a working environment. The system performs the simultaneous recognition of a working action and a cognitive long-term motion prediction. Trajectory recognition rates around 90% are achieved, requiring only a small number of training sequences. The proposed prediction approach yields significantly more reliable results than a Kalman Filter based reference approach.
机译:在这种贡献中,我们介绍了一种基于3D轨迹的基于3D轨迹的新方法和不同的工作作用与长期运动预测。随着多个假设Kalman滤波器框架跟踪人手前臂肢体的3D姿势,使用多个收缩曲线密度算法(MOCCD)作为3D姿势估计方法。介绍了一种新颖的轨迹分类方法,它依赖于轨迹(LDT)上的Levenshtein距离作为轨迹之间相似性的度量。对来自工作环境中不同观点获得的10个现实测试序列进行了实验研究。该系统执行对工作动作的同时识别和认知的长期运动预测。轨迹识别率约为90%,只需要少量训练序列。所提出的预测方法比基于卡尔曼滤波器的参考方法产生明显更可靠的结果。

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