The influence of labeling techniques in classifying human manipulation movement of different speed

Sadique Adnan Siddiqui, L. Gutzeit, F. Kirchner
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Abstract

In this work, we investigate the influence of labeling methods on the classification of human movements on data recorded using a marker-based motion capture system. The dataset is labeled using two different approaches, one based on video data of the movements, the other based on the movement trajectories recorded using the motion capture system. The dataset is labeled using two different approaches, one based on video data of the movements, the other based on the movement trajectories recorded using the motion capture system. The data was recorded from one participant performing a stacking scenario comprising simple arm movements at three different speeds (slow, normal, fast). Machine learning algorithms that include k-Nearest Neighbor, Random Forest, Extreme Gradient Boosting classifier, Convolutional Neural networks (CNN), Long Short-Term Memory networks (LSTM), and a combination of CNN-LSTM networks are compared on their performance in recognition of these arm movements. The models were trained on actions performed on slow and normal speed movements segments and generalized on actions consisting of fast-paced human movement. It was observed that all the models trained on normal-paced data labeled using trajectories have almost 20% improvement in accuracy on test data in comparison to the models trained on data labeled using videos of the performed experiments.
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标记技术对不同速度人体操作动作分类的影响
在这项工作中,我们研究了标记方法对使用基于标记的运动捕捉系统记录的人类运动分类的影响。数据集使用两种不同的方法进行标记,一种基于运动的视频数据,另一种基于运动捕捉系统记录的运动轨迹。数据集使用两种不同的方法进行标记,一种基于运动的视频数据,另一种基于运动捕捉系统记录的运动轨迹。数据记录于一名参与者以三种不同的速度(慢、正常、快速)进行简单的手臂运动的堆叠场景。机器学习算法包括k-最近邻、随机森林、极端梯度增强分类器、卷积神经网络(CNN)、长短期记忆网络(LSTM)以及CNN-LSTM网络的组合,比较了它们在识别这些手臂运动方面的性能。这些模型在慢速和正常速度的动作片段上进行训练,并在由快节奏的人体动作组成的动作上进行推广。我们观察到,与使用实验视频标记的数据训练的模型相比,使用轨迹标记的正常节奏数据训练的所有模型在测试数据上的准确性提高了近20%。
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