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Classifying Physical Actions of Human Models using Multi-objective Clustering based on Elephant Herding Algorithm

机译:基于大象放牧算法的多目标集群分类人体模型的体力作用

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In artificial intelligence robot design understanding the behavior of humans play a significant role. The human behavior can be aggressive or normal which is characterized by its arm, leg and body moments. The problem to identify the human behavior is dealt here as a multi-objective clustering problem where the segregation is carried out using two objective functions: intra cluster distance and inter cluster distance. A new multi-objective clustering algorithm ‘MOEHA’ is proposed based on recently reported Elephant Herding Algorithm (EHA). The MOEHA performance on clustering is demonstrated on three synthetic and six real world datasets. Comparative results demonstrated superior performance over benchmark algorithms NSGA-II and MOPSO. Five case studies on the classification of human physical actions demonstrated better results over the comparative algorithms.
机译:在人工智能机器人设计中了解人类的行为发挥着重要作用。人类行为可以是侵略性的或正常的,其特征在于它的臂,腿和身体时刻。识别人类行为的问题在此作为多目标聚类问题被处理为使用两个目标函数进行分离的多目标聚类问题:帧内群集距离和群集距离。基于最近报道的大象掠过算法(EHA),提出了一种新的多目标聚类算法的“Moeha”。在三个合成和六个真实世界数据集上展示了群集的Moeha性能。比较结果表明,对基准算法NSGA-II和MOPSO的卓越性能。关于人体体力行动分类的五个案例研究表明,对比较算法的结果更好。

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