基于稀疏编码和字典学习的生理信号实时监测协同设计

Kuan-Chun Chen, Ching-Yao Chou, A. Wu
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引用次数: 1

摘要

压缩感知(CS)是一种降低无线传感器整体传输功率的新技术。对于可穿戴设备的生理信号远程监测,需要同时考虑芯片面积和功耗效率。已有许多研究旨在开发适用于具有可重构结构的CS重构芯片的算法。然而,当这些CS重构芯片在实时生理信号监测任务中得到验证时,代表性词典也很重要。也就是说,一个更具代表性的字典不仅可以提高这些芯片的重构性能,还可以减轻内存开销。在本文中,我们应用稀疏编码算法和学习字典之间的协同设计概念。我们还探讨了每个学过的词典的代表性和兼容性。此外,通过仿真给出了各重构算法的计算复杂度。研究结果表明,快速迭代收缩阈值算法(FISTA)训练的字典在生理信号监测中的重构质量更具有代表性。此外,与其他硬件友好型重构算法相比,FISTA的计算时间减少了90%以上。
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Co-Design of Sparse Coding and Dictionary Learning for Real-Time Physiological Signals Monitoring
Compressive sensing (CS) is a novel technique to reduce overall transmission power in wireless sensors. For physiological signals telemonitoring of wearable devices, chip area and power efficiency need to be considered simultaneously. There are many prior studies aim to develop algorithms that applied to CS reconstruction chips with reconfigurable architecture. However, representative dictionaries are also important when these CS reconstruction chips are verified in real-time physiological signals monitoring tasks. That is, a more representative dictionary can not only enhance the reconstruction performance of these chips but also alleviate memory overhead. In this paper, we apply the concept of co-design between sparse coding algorithms and learned dictionaries. We also explore the representativeness and compatibility of each learned dictionary. In addition, the computational complexity of each reconstruction algorithm is provided through simulations. Our results show that the dictionaries trained by fast iterative shrinkage-thresholding algorithm (FISTA) are more representative according to the quality of reconstruction for physiological signals monitoring. Besides, FISTA reduces more than 90% of the computational time compared with other hardware-friendly reconstruction algorithms.
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