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Activity and Gait Recognition with Time-Delay Embeddings

机译:具有时延嵌入的活动和步态识别

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Activity recognition based on data from mobile wearable devices is becoming an important application area for machine learning. We propose a novel approach based on a combination of feature extraction using time-delay embedding and supervised learning. The computational requirements are considerably lower than existing approaches, so the processing can be done in real time on a low-powered portable device such as a mobile phone. We evaluate the performance of our algorithm on a large, noisy data set comprising over 50 hours of data from six different subjects, including activities such as running and walking up or down stairs. We also demonstrate the ability of the system to accurately classify an individual from a set of 25 people, based only on the characteristics of their walking gait. The system requires very little parameter tuning, and can be trained with small amounts of data.
机译:基于来自移动可穿戴设备的数据的活动识别正在成为机器学习的重要应用领域。我们提出了一种新颖的方法,该方法基于使用时延嵌入和监督学习的特征提取相结合的方法。计算要求大大低于现有方法,因此可以在低功率便携式设备(如移动电话)上实时进行处理。我们在一个嘈杂的大型数据集上评估算法的性能,该数据集包含来自六个不同主题的50多个小时的数据,包括诸如上下楼梯的活动。我们还展示了该系统仅基于步行步态的特征就可以准确地对25个人进行分类的能力。该系统几乎不需要参数调整,并且可以使用少量数据进行训练。

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