Zhu Yidong, Aimandi Nadia, Rahman Md Mahmudur, Ul Alam Mohammad Arif
Department of Computer Science, University of Massachusetts Lowell, USA.
Department of Medicine, University of Wisconsin, Madison, USA.
AMIA Annu Symp Proc. 2025 May 22;2024:1340-1349. eCollection 2024.
Deep learning advancements have revolutionized scalable classification in many domains including computer vision, healthcare and Natural Language Processing (NLP). However, when it comes to classification and domain adaptation based on wearables, it suffers from persistent underperformance, largely due to the scarcity of pre-trained deep learning models that are abundantly available for computer vision and NLP. This is primarily because wearable sensor data need sensor-specific preprocessing, architectural modification, and extensive data collection. We present a novel modified-recurrent plot-based image representation that seamlessly integrates both temporal and frequency domain information. We employ an efficient Fourier Transform-based frequency domain angular difference estimation scheme in conjunction with existing temporal recurrent plots. We validated proposed method in two different domains: accelerometer-based activity-recognition and real-time glucose level prediction from wearable sensors. Our findings demonstrated the method we developed not only improves accuracy at recognizing activity but also makes a big leap in glucose level prediction.
深度学习的进步已经在包括计算机视觉、医疗保健和自然语言处理(NLP)在内的许多领域彻底改变了可扩展分类。然而,在基于可穿戴设备的分类和领域适应方面,它一直表现不佳,这在很大程度上是由于缺乏大量可用于计算机视觉和NLP的预训练深度学习模型。这主要是因为可穿戴传感器数据需要特定于传感器的预处理、架构修改和大量数据收集。我们提出了一种新颖的基于修正循环图的图像表示方法,该方法无缝集成了时域和频域信息。我们将一种基于高效傅里叶变换的频域角差估计方案与现有的时间循环图相结合。我们在两个不同的领域验证了所提出的方法:基于加速度计的活动识别和可穿戴传感器的实时血糖水平预测。我们的研究结果表明,我们开发的方法不仅提高了活动识别的准确性,而且在血糖水平预测方面也取得了巨大飞跃。