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A probabilistic approach for human everyday activities recognition using body motion from RGB-D images

机译:一种利用RGB-D图像中的人体运动来识别人类日常活动的概率方法

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In this work, we propose an approach that relies on cues from depth perception from RGB-D images, where features related to human body motion (3D skeleton features) are used on multiple learning classifiers in order to recognize human activities on a benchmark dataset. A Dynamic Bayesian Mixture Model (DBMM) is designed to combine multiple classifier likelihoods into a single form, assigning weights (by an uncertainty measure) to counterbalance the likelihoods as a posterior probability. Temporal information is incorporated in the DBMM by means of prior probabilities, taking into consideration previous probabilistic inference to reinforce current-frame classification. The publicly available Cornell Activity Dataset [1] with 12 different human activities was used to evaluate the proposed approach. Reported results on testing dataset show that our approach overcomes state of the art methods in terms of precision, recall and overall accuracy. The developed work allows the use of activities classification for applications where the human behaviour recognition is important, such as human-robot interaction, assisted living for elderly care, among others.
机译:在这项工作中,我们提出一种方法,该方法依赖于来自RGB-D图像的深度感知的线索,其中在多个学习分类器上使用了与人体运动有关的特征(3D骨骼特征),以便识别基准数据集上的人类活动。动态贝叶斯混合模型(DBMM)被设计为将多个分类器似然性组合为一种形式,分配权重(通过不确定性度量)以抵消似然性作为后验概率的可能性。时间信息是通过先验概率结合到DBMM中的,同时考虑了先前的概率推断以加强当前帧的分类。具有12种不同人类活动的可公开获得的康奈尔活动数据集[1]用于评估所提出的方法。关于测试数据集的报告结果表明,我们的方法在精度,召回率和总体准确性方面都克服了现有技术的不足。开发的工作允许将活动分类用于对人类行为识别很重要的应用中,例如人机交互,老人护理辅助生活等。

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