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kNN Sampling for Personalised Human Activity Recognition

机译:knn采样进行个性化人类活动识别

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The need to adhere to recommended physical activity guidelines for a variety of chronic disorders calls for high precision Human Activity Recognition (HAR) systems. In the SELFBACK system, HAR is used to monitor activity types and intensities to enable self-management of low back pain (LBP). HAR is typically modelled as a classification task where sensor data associated with activity labels are used to train a classifier to predict future occurrences of those activities. An important consideration in HAR 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 that using personalised data results in more accurate predictions. However, from a practical perspective, collecting sufficient training data from the end user may not be feasible. This has made using subject-independent data by far the more common approach in commercial HAR systems. In this paper, we introduce a novel approach which uses nearest neigh-bour similarity to identify examples from a subject-independent training set that are most similar to sample data obtained from the target user and uses these examples to generate a personalised model for the user. This nearest neighbour sampling approach enables us to avoid much of the practical limitations associated with training a classifier exclusively with user data, while still achieving the benefit of personalisation. Evaluations show our approach to significantly out perform a general subject-independent model by up to 5%.
机译:需要遵守推荐的各种慢性障碍的身体活动指南,要求高精度人类活动识别(HAR)系统。在自私系统中,Har用于监测活动类型和强度,以实现低腰痛(LBP)的自我管理。 RAR通常被建模为分类任务,其中与活动标签相关联的传感器数据用于训练分类器以预测这些活动的未来发生。 Har中的一个重要考虑因素是是否使用来自目标用户(受试者)的一般人群(主题)或个性化培训数据的培训数据。以前的评估表明,使用个性化数据导致更准确的预测。然而,从实际角度来看,从最终用户收集足够的训练数据可能是不可行的。这使得在商业HAR系统中使用迄今为止更常见的方法进行了。在本文中,我们介绍了一种新的方法,它使用最近的邻居的相似性来识别来自与从目标用户获得的样本数据最相似的主题训练集的示例,并使用这些示例来为用户生成个性化模型。这种最近的邻居采样方法使我们能够避免与用户数据专门训练分类器相关的大部分实际限制,同时仍然实现个性化的益处。评估表明我们的方法明显地揭示了一般主题独立模型高达5%。

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