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Data Cleaning of Binary Sensor Events in Activity Recognition by Cluster-Based Methods

机译:基于聚类的活动识别中二元传感器事件数据清洗

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The Ambient Assisted Living (AAL) systems use sensors to detect the daily behavior of older adults and provide necessary assistance based on changes in their cognitive status and physical functions, thus enabling older adults to maintain their independence at home. However, the effectiveness of the AAL systems depends on the accuracy of the data provided by sensors. Namely, when a human error or a hardware failure occurs, the activity recognition model can become inaccurate. This inaccuracy hinders the identification of critical and potentially life-threatening activities. Although there are many methods for cleaning sensor data, there is no method for binary sensors deployed in smart homes. By considering noisy sensor events and unintentional forgetting of turning off the device, this paper proposes two clustering-based methods for denoising and splitting binary sensor events to address possible inaccuracy due to the two mentioned problems. The effectiveness of the proposed methods is verified by the experiments using four machine learning models and three real-world smart home datasets and adopting different sensor configurations. The experimental results demonstrate that compared to the original unprocessed datasets, by combining the two proposed methods, the average accuracy and F-measure are improved by 15.00% and 17.25%, respectively.
机译:环境辅助生活(AAL)系统使用传感器来检测老年人的日常行为,并根据其认知状态和身体功能的变化提供必要的帮助,从而使老年人能够在家中保持独立性。然而,AAL系统的有效性取决于传感器提供的数据的准确性。也就是说,当发生人为错误或硬件故障时,活动识别模型可能会变得不准确。这种不准确阻碍了关键和潜在生命威胁活动的识别。虽然有很多方法可以清理传感器数据,但在智能家庭中部署的二进制传感器没有方法。通过考虑噪声传感器事件和无意忘记关闭设备,本文提出了两种基于聚类的二值传感器事件去噪和分割方法,以解决上述两个问题可能带来的不准确问题。通过使用四个机器学习模型和三个真实的智能家居数据集,并采用不同的传感器配置,验证了所提方法的有效性。实验结果表明,与原始未处理数据集相比,两种方法的结合使平均精度和F-测度分别提高了15.00%和17.25%。

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