基于实时DCT学习的神经信号重建

Rabeeh Karimi Mahabadi, C. Aprile, V. Cevher
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引用次数: 4

摘要

可穿戴和植入式身体传感器网络系统是持续监测患者体温、血压、脑活动等重要健康状态的关键技术之一。这些设备对于早期发现处于危险中的人的紧急情况至关重要,并提供广泛的医疗设施和服务。尽管可穿戴和植入式医疗设备领域不断取得进展,但仍面临着节能和低延迟信号重建等重大挑战。这项工作提出了一种低功耗的实时神经信号恢复系统。这种系统对植入式医疗设备非常感兴趣,因为神经信号的重建需要在低能耗的情况下实时完成。我们将深度网络和基于dct学习的压缩感知框架相结合,提出了一种新颖高效的神经信号压缩-解压缩系统。我们将我们的方法与最先进的压缩感知方法进行了比较,并表明它在显著减少计算时间的情况下实现了优越的重建性能。
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Real-Time DCT Learning-based Reconstruction of Neural Signals
Wearable and implantable body sensor network systems are one of the key technologies for continuous monitoring of patient's vital health status such as temperature and blood pressure, and brain activity. Such devices are critical for early detection of emergency conditions of people at risk and offer a wide range of medical facilities and services. Despite continuous advances in the field of wearable and implantable medical devices, it still faces major challenges such as energy-efficient and low-latency reconstruction of signals. This work presents a power-efficient real-time system for recovering neural signals. Such systems are of high interest for implantable medical devices, where reconstruction of neural signals needs to be done in realtime with low energy consumption. We combine a deep network and DCT-Iearning based compressive sensing framework to propose a novel and efficient compression-decompression system for neural signals. We compare our approach with state-of-the-art compressive sensing methods and show that it achieves superior reconstruction performance with significantly less computing time.
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