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Probabilistic Models versus Discriminate Classifiers for Human Activity Recognition with an Instrumented Mobility-Assistance Aid

机译:概率模型与识别辅助援助的人类活动认可分类器

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Detection of individuals' intentions and actions from a stream of human behaviour is an open and complex problem. There is however an intrinsic need to automatically recognise the activities performed by users of mobility assistive aids to better understand their behavioural patterns, with the ultimate objective of improving the utility of these devices. While discriminative algorithms such as Support Vector Machines (SVM) are well understood, generative probabilistic approaches to machine learning such as Dynamic Bayesian Networks (DBN) have only recently started gaining increasing interest within the robotics community. In this paper, a comprehensive evaluation of these techniques is carried out for human activity recognition in the context of their applicability to assistive robotics. Results show comparable recognition rates, offering valuable insights into the advantageous characteristics of DBN in relation to their dynamic and unsupervised nature for realistic human-robot interaction modelling.
机译:检测人类行为流的个人意图和行动是一个开放和复杂的问题。然而,有一个内在的需要自动识别由移动辅助助剂的用户执行的活动,以更好地了解其行为模式,具有改善这些设备的效用的最终目标。虽然诸如支持向量机(SVM)的鉴别算法很好地理解,但是,诸如动态贝叶斯网络(DBN)之类的机器学习的生成概率方法仅开始在机器人社区中获得越来越多的兴趣。在本文中,在适用于辅助机器人的情况下,对人类活动识别进行了全面评估。结果表明了可比的识别率,为DBN的有利特征提供了有价值的见解,以实现与现实人体机器人交互建模的动态和无监督的性质。

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