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Personalised Human Activity Recognition Using Matching Networks

机译:使用匹配网络的个性化人类活动识别

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Human Activity Recognition (HAR) is typically modelled as a classification task where sensor data associated with activity labels are used to train a classifier to recognise future occurrences of these activities. An important consideration when training HAR models is whether to use training data from a general population (subject-independent), or personalised training data from the target user (subject-dependent). Previous evaluations have shown personalised training to be more accurate because of the ability of resulting models to better capture individual users' activity patterns. From a practical perspective however, collecting sufficient training data from end users may not be feasible. This has made using subject-independent training far more common in real-world HAR systems. In this paper, we introduce a novel approach to personalised HAR using a neural network architecture called a matching network. Matching networks perform nearest-neighbour classification by reusing the class label of the most similar instances in a provided support set, which makes them very relevant to case-based reasoning. A key advantage of matching networks is that they use metric learning to produce feature embeddings or representations that maximise classification accuracy, given a chosen similarity metric. Evaluations show our approach to substantially out perform general subject-independent models by at least 6% macro-averaged F1 score.
机译:人类活动识别(HAR)通常被建模为分类任务,其中与活动标签关联的传感器数据用于训练分类器以识别这些活动的未来发生。训练HAR模型时,一个重要的考虑因素是是使用来自一般人群的训练数据(与受试者无关),还是使用来自目标用户的个性化训练数据(与受试者无关)。先前的评估显示出个性化训练更为准确,因为生成的模型能够更好地捕获单个用户的活动模式。但是,从实际角度看,从最终用户那里收集足够的培训数据可能是不可行的。这使得使用独立于主题的训练在现实世界的HAR系统中变得更加普遍。在本文中,我们介绍了一种使用称为匹配网络的神经网络体系结构进行个性化HAR的新颖方法。匹配网络通过在提供的支持集中重用最相似实例的类标签来执行最近邻居分类,这使它们与基于案例的推理非常相关。匹配网络的主要优势在于,如果选择了相似度度量,则它们可以使用度量学习来生成特征嵌入或表示,以最大程度地提高分类精度。评估表明,我们的方法基本上可以使一般独立于受试者的模型表现出至少6%的宏观平均F1分数。

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