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Sensor-Based Activity Recognition via Learning from Distributions

机译:基于传感器的活动识别通过从分布中学习

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Sensor-based activity recognition aims to predict users' activities from multi-dimensional streams of various sensor readings received from ubiquitous sensors. To use machine learning techniques for sensor-based activity recognition, previous approaches focused on composing a feature vector to represent sensor-reading streams received within a period of various lengths. With the constructed feature vectors, e.g., using predefined orders of moments in statistics, and their corresponding labels of activities, standard classification algorithms can be applied to train a predictive model, which will be used to make predictions online. However, we argue that in this way some important information, e.g., statistical information captured by higher-order moments, may be discarded when constructing features. Therefore, in this paper, we propose a new method, denoted by SMM_(AR), based on learning from distributions for sensor-based activity recognition. Specifically, we consider sensor readings received within a period as a sample, which can be represented by a feature vector of infinite dimensions in a Reproducing Kernel Hilbert Space (RKHS) using kernel embedding techniques. We then train a classifier in the RKHS. To scale-up the proposed method, we further offer an accelerated version by utilizing an explicit feature map instead of using a kernel function. We conduct experiments on four benchmark datasets to verify the effectiveness and scalability of our proposed method.
机译:基于传感器的活动识别旨在预测来自从普遍传感器接收的各种传感器读数的多维流的用户的活动。为了利用基于传感器的活动识别的机器学习技术,以前的方法集中于构成特征向量,以表示在各种长度的时段内接收的传感器读取流。通过构造的特征向量,例如,在统计中使用预定义的时刻和它们的相应活动标签,可以应用标准分类算法来训练预测模型,该模型将用于在线进行预测。然而,我们认为,通过这种方式,可以在构建特征时丢弃一些重要信息,例如,由高阶矩所捕获的统计信息。因此,在本文中,我们提出了一种新的方法,由SMM_(AR)表示,基于基于传感器的活动识别的分布。具体地,我们考虑在作为样本的时段内接收的传感器读数,其可以通过使用内核嵌入技术的再现内核Hilbert空间(RKHS)中的无限维度的特征向量来表示。然后我们在RKHS中培训一个分类器。为了扩展所提出的方法,我们通过利用显式特征映射而不是使用内核功能来进一步提供加速版本。我们对四个基准数据集进行实验,以验证我们提出的方法的有效性和可扩展性。

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