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Learning features combination for human action recognition from skeleton sequences

机译:学习特征组合,可从骨骼序列识别人类动作

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摘要

Human action recognition is a challenging task due to the complexity of human movements and to the variety among the same actions performed by distinct subjects. Recent technologies provide the skeletal representation of human body extracted in real time from depth maps, which is a high discriminant information for efficient action recognition. In this context, we present a new framework for human action recognition from skeleton sequences. We propose extracting sets of spatial and temporal local features from subgroups of joints, which are aggregated by a robust method based on the VLAD algorithm and a pool of clusters. Several feature vectors are then combined by a metric learning method inspired by the LMNN algorithm with the objective to improve the classification accuracy using the nonparametric k-NN classifier. We evaluated our method on three public datasets, including the MSR-Action3D, the UTKinectAction3D, and the Florence 3D Actions dataset. As a result, the proposed framework performance overcomes the methods in the state of the art on all the experiments. (C) 2017 Elsevier B.V. All rights reserved.
机译:由于人类动作的复杂性以及不同主体执行的相同动作之间的多样性,因此人类动作识别是一项具有挑战性的任务。最新技术提供了从深度图实时提取的人体骨骼表示,这是有效动作识别的高判别信息。在这种情况下,我们提出了一种从骨架序列识别人类动作的新框架。我们建议从关节的子组中提取空间和时间局部特征的集合,这些集合通过基于VLAD算法和聚类池的鲁棒方法进行聚合。然后,通过受LMNN算法启发的度量学习方法将几个特征向量进行组合,目的是使用非参数k-NN分类器提高分类精度。我们在三个公共数据集(包括MSR-Action3D,UTKinectAction3D和Florence 3D Actions数据集)上评估了我们的方法。结果,所提出的框架性能在所有实验中都克服了现有技术中的方法。 (C)2017 Elsevier B.V.保留所有权利。

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