医疗传感器网络的混合生物信号压缩模型

T. Dheepa, K. Sekar, Satish Kumar Satti, Goluguri N. V. Rajareddy
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引用次数: 1

摘要

可穿戴传感器技术的最新发展有助于以低成本收集生物信号。收集和分析不同的生物标记物有望通过定制医疗应用来改善预防保健系统。可穿戴传感器是电池驱动的,基于有限资源的技术,它们必须使用简单的方法来正确处理存储和能量。为了实现这一目标,应用基于有损预测编码的方法来压缩传感器的信号,以减少传输数据所需的能量,最小化所需的存储空间,并延长电池寿命。本文提出了一种基于长短期记忆(LSTM)和xgboost的混合模型,在假设信号向量联合相关的前提下,解决压缩感知下多个采样向量的稀疏信号重构问题。该模型比基准模型具有更好的压缩效率,并且最小化了所需的能量消耗和存储空间。性能结果表明,该模型延长了传感器和HSN的使用寿命。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hybrid Biosignal Compression Model for Healthcare Sensor Networks
Recent development in wearable sensor technology helps to collect biological signals at a low cost. Collecting and analyzing different biomarkers are anticipated to improve the preventative health care system through customized medical applications. The wearable sensors are battery-operated and based on technology with restricted resources, and they must use simple approaches to handle storage and energy properly. To achieve this goal, apply a lossy predictive coding-based method to compress signals at the sensors to reduce the energy needed to transmit data, minimize the storage space required, and extend battery life. This paper proposes a combination of Long-Short-Term-Memory(LSTM) and XGBoost-based hybrid model to address the challenge of sparse signal reconstruction in terms of multiple sampling vectors under compressed sensing, based on the assumption that the signal vectors are jointly correlated. The Proposed model achieves better compression efficiency than the baseline models considered for comparison and minimizes the energy consumption and storage space required. The performance results show that the proposed model extends the lifetime of the sensors and HSN.
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