Inertial Measurement Unit (IMU) sensors are present in everyday devices such as smartphones and fitness watches. As a result, the array of health-related research and applications that tap onto this data has been growing, but little attention has been devoted to the prediction of an individual's heart rate (HR) from IMU data, when undergoing a physical activity. Would that be even possible? If so, this could be used to design personalized sets of aerobic exercises, for instance. In this work, we show that it is viable to obtain accurate HR predictions from IMU data using Recurrent Neural Networks, provided only access to HR and IMU data from a short-lived, previously executed activity. We propose a novel method for initializing an RNN's hidden state vectors, using a specialized network that attempts to extract an embedding of the physical conditioning (PCE) of a subject. We show that using a discriminator in the training phase to help the model learn whether two PCEs belong to the same individual further reduces the prediction error. We evaluate the proposed model when predicting the HR of 23 subjects performing a variety of physical activities from IMU data available in public datasets (PAMAP2, PPG-DaLiA). For comparison, we use as baselines the only model specifically proposed for this task and an adapted state-of-the-art model for Human Activity Recognition (HAR), a closely related task. Our method, PCE-LSTM, yields over 10% lower mean absolute error. We demonstrate empirically that this error reduction is in part due to the use of the PCE. Last, we use the two datasets (PPG-DaLiA, WESAD) to show that PCE-LSTM can also be successfully applied when photoplethysmography (PPG) sensors are available, outperforming the state-of-the-art deep learning baselines by more than 30%.
翻译:智能手机和健身手表等日常设备中都存在不透明测量股(IMU)传感器。因此,利用这些数据进行的健康相关研究和应用阵列一直在增加,但很少注意在进行物理活动时,从IMU数据中预测个人心脏率(HR)。这甚至有可能吗?如果是的话,这可以用来设计个人化的有氧演练组。在这项工作中,我们显示,使用经常神经网络的IMU数据从IMU数据中获得准确的HR预测是可行的,只提供短期、以前执行的活动中获取的HR和IMU数据的数据。我们提出了一个新的方法,在启动一个个人心脏速率数据时,利用一个专门网络,试图将某个主题的物理调节(PCE)嵌入一个个人化的成套操练。我们显示,在模型中,使用两个PCE(PCE)也能够进一步减少预测错误。我们在预测23个主题的HR数据时,只提供更低的,我们用这个基准数据显示,我们的数据在IMAPA中,我们只用一个特定的物理比标数据,我们的数据使用这个数据库中,我们使用这个模型的LDA数据。