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A Human Activity Recognition System Based on Dynamic Clustering of Skeleton Data

机译:基于骨架数据动态聚类的人类活动识别系统

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摘要

Human activity recognition is an important area in computer vision, with its wide range of applications including ambient assisted living. In this paper, an activity recognition system based on skeleton data extracted from a depth camera is presented. The system makes use of machine learning techniques to classify the actions that are described with a set of a few basic postures. The training phase creates several models related to the number of clustered postures by means of a multiclass Support Vector Machine (SVM), trained with Sequential Minimal Optimization (SMO). The classification phase adopts the X-means algorithm to find the optimal number of clusters dynamically. The contribution of the paper is twofold. The first aim is to perform activity recognition employing features based on a small number of informative postures, extracted independently from each activity instance; secondly, it aims to assess the minimum number of frames needed for an adequate classification. The system is evaluated on two publicly available datasets, the Cornell Activity Dataset (CAD-60) and the Telecommunication Systems Team (TST) Fall detection dataset. The number of clusters needed to model each instance ranges from two to four elements. The proposed approach reaches excellent performances using only about 4 s of input data (~100 frames) and outperforms the state of the art when it uses approximately 500 frames on the CAD-60 dataset. The results are promising for the test in real context.
机译:人类活动识别是计算机视觉的重要领域,其广泛的应用包括环境辅助生活。本文提出了一种基于深度相机提取的骨架数据的活动识别系统。该系统利用机器学习技术对以一组几个基本姿势描述的动作进行分类。训练阶段通过多类支持向量机(SVM)创建了几个与聚类姿势数量有关的模型,并通过顺序最小优化(SMO)进行了训练。分类阶段采用X均值算法动态找到最佳聚类数。论文的贡献是双重的。第一个目标是使用基于少量信息性姿势的特征执行活动识别,这些特征性姿势是从每个活动实例中独立提取的;其次,它旨在评估适当分类所需的最小帧数。对系统进行了两个公开可用的数据集评估,康奈尔活动数据集(CAD-60)和电信系统团队(TST)跌倒检测数据集。为每个实例建模所需的集群数量为两个到四个元素。所提出的方法仅使用约4 s的输入数据(约100帧)即可达到出色的性能,并且在CAD-60数据集上使用约500帧时,其性能优于现有技术。该结果对于实际测试很有希望。

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