论文标题
优化的卷积神经网络,用于腕部磨损感应应用中的心率估计和人类活动识别
Optimised Convolutional Neural Networks for Heart Rate Estimation and Human Activity Recognition in Wrist Worn Sensing Applications
论文作者
论文摘要
腕上的智能设备通过复杂的分析提供了对人类健康,行为和绩效的更多见解。但是,面对与运动相关的人工制品的电池寿命,设备成本和传感器性能提出了挑战,必须进一步解决这些挑战,以查看有效的应用和通过该技术的商品化采用。我们通过使用简单的光学测量值,传统上用于腕部磨损的传感器中的心率检测的光插图学(PPG)来解决这些挑战,以便我们可以在低样本速率下同时提供改进的心率和人类活动识别(HAR),而无需惯性测量单位。这简化了硬件设计并降低成本和电力预算。我们应用两个深度学习管道,一个用于人类活动识别,另一个用于心率估计。 HAR是通过采用视觉分类方法来实现的,该方法能够以低样本速率以较低的效果进行稳健性能。在这里,转移学习被杠杆化以重新培训卷积神经网络(CNN),以区分不同人类活动期间PPG的特征。对于心率估计,我们使用采用的CNN进行回归,该回归将嘈杂的光学信号映射到心率估计。在这两种情况下,都与领先的常规方法进行比较。我们的结果表明,较低的采样频率可以实现良好的性能,而不会显着降低准确性。显示HAR的5 Hz和10 Hz的分类精度分别为80.2%和83.0%。这些相同的采样频率也产生了强大的心率估计,这与以256 Hz的能量密集型速率相比进行了比较。
Wrist-worn smart devices are providing increased insights into human health, behaviour and performance through sophisticated analytics. However, battery life, device cost and sensor performance in the face of movement-related artefact present challenges which must be further addressed to see effective applications and wider adoption through commoditisation of the technology. We address these challenges by demonstrating, through using a simple optical measurement, photoplethysmography (PPG) used conventionally for heart rate detection in wrist-worn sensors, that we can provide improved heart rate and human activity recognition (HAR) simultaneously at low sample rates, without an inertial measurement unit. This simplifies hardware design and reduces costs and power budgets. We apply two deep learning pipelines, one for human activity recognition and one for heart rate estimation. HAR is achieved through the application of a visual classification approach, capable of robust performance at low sample rates. Here, transfer learning is leveraged to retrain a convolutional neural network (CNN) to distinguish characteristics of the PPG during different human activities. For heart rate estimation we use a CNN adopted for regression which maps noisy optical signals to heart rate estimates. In both cases, comparisons are made with leading conventional approaches. Our results demonstrate a low sampling frequency can achieve good performance without significant degradation of accuracy. 5 Hz and 10 Hz were shown to have 80.2% and 83.0% classification accuracy for HAR respectively. These same sampling frequencies also yielded a robust heart rate estimation which was comparative with that achieved at the more energy-intensive rate of 256 Hz.