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A 3D Human Posture Approach for Activity Recognition Based on Depth Camera

机译:基于深度相机的活动识别的3D人力姿态方法

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Human activity recognition plays an important role in the context of Ambient Assisted Living (AAL), providing useful tools to improve people quality of life. This work presents an activity recognition algorithm based on the extraction of skeleton joints from a depth camera. The system describes an activity using a set of few and basic postures extracted by means of the X-means clustering algorithm. A multi-class Support Vector Machine, trained with the Sequential Minimal Optimization is employed to perform the classification. The system is evaluated on two public datasets for activity recognition which have different skeleton models, the CAD-60 with 15 joints and the TST with 25 joints. The proposed approach achieves precision/recall performances of 99.8 % on CAD-60 and 97.2%/91.7% on TST. The results are promising for an applied use in the context of AAL.
机译:人类活动识别在环境辅助生活(AAL)的背景下起着重要作用,提供了改善人们生活质量的有用工具。该工作介绍了一种基于深度摄像机提取的基于骨架关节的活动识别算法。该系统描述了使用借助于X均值聚类算法提取的一组少数和基本姿势的活动。使用顺序最小优化训练的多级支持向量机用于执行分类。该系统在两个公共数据集中进行评估,用于活动识别,具有不同的骨架模型,CAD-60,具有15个关节和TST,具有25个关节。拟议的方法在TST上实现了99.8%的精确/召回表现为99.8%和97.2%/ 91.7%。结果是在AAL的背景下应用的应用。

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