论文标题
更多到更少的(M2L):野外健康识别增强,可穿戴传感器的方式降低
More to Less (M2L): Enhanced Health Recognition in the Wild with Reduced Modality of Wearable Sensors
论文作者
论文摘要
准确地识别可穿戴数据中与健康相关的疾病对于改善医疗保健结果至关重要。为了提高识别精度,各种方法都集中在如何有效地融合多个传感器的信息。在许多应用程序中,融合多个传感器是一个常见的情况,但在现实情况下可能并不总是可行的。例如,尽管已证明将多个传感器的生物信号(即胸垫传感器和腕部可穿戴传感器)组合在一起,可用于提高性能,但在自由生活的情况下,佩戴多个设备可能是不切实际的。为了解决挑战,我们提出了一种有效至更少(M2L)学习框架,以通过利用训练过程中多种方式的互补信息来提高测试性能,从而提高测试性能。更具体地说,不同的传感器可能会带有不同但互补的信息,我们的模型旨在在鼓励积极的知识转移并抑制负面知识转移的不同模式之间进行协作,从而使个人模式学到更好的表示。我们的实验结果表明,与完整的方式相比,我们的框架可以达到可比的性能。我们的代码和结果将在https://github.com/compwell-org/more2less.git上找到。
Accurately recognizing health-related conditions from wearable data is crucial for improved healthcare outcomes. To improve the recognition accuracy, various approaches have focused on how to effectively fuse information from multiple sensors. Fusing multiple sensors is a common scenario in many applications, but may not always be feasible in real-world scenarios. For example, although combining bio-signals from multiple sensors (i.e., a chest pad sensor and a wrist wearable sensor) has been proved effective for improved performance, wearing multiple devices might be impractical in the free-living context. To solve the challenges, we propose an effective more to less (M2L) learning framework to improve testing performance with reduced sensors through leveraging the complementary information of multiple modalities during training. More specifically, different sensors may carry different but complementary information, and our model is designed to enforce collaborations among different modalities, where positive knowledge transfer is encouraged and negative knowledge transfer is suppressed, so that better representation is learned for individual modalities. Our experimental results show that our framework achieves comparable performance when compared with the full modalities. Our code and results will be available at https://github.com/compwell-org/More2Less.git.