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首页> 外文期刊>International journal of communication systems >Rakeness with block sparse Bayesian learning for efficient ZigBee‐based EEG telemonitoring
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Rakeness with block sparse Bayesian learning for efficient ZigBee‐based EEG telemonitoring

机译:块稀疏贝叶斯学习的耙度可实现基于ZigBee的高效EEG远程监控

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摘要

Future healthcare systems are shifted toward long-term patient monitoring using embedded ultra-low power devices. In this paper, the strengths of both rakeness-based compressive sensing (CS) and block sparse Bayesian learning (BSBL) are exploited for efficient electroencephalogram (EEG) transmission/reception over wireless body area networks. A binary sensing matrix based on the rakeness concept is used to find the most energetic signal directions. A balance is achieved between collecting energy and enforcing restricted isometry property to capture the underlying signal structure. Correct presentation of the EEG oscillatory activity, EEG wave shape, and main signal characteristics is provided using the discrete cosine transform based BSBL, which models the intra-block correlation. The IEEE 802.15.4 wireless communication technology (ZigBee) is employed, since it targets low data rate communications in an energy efficient manner. To alleviate noise and channel multipath effects, a recursive least square based equalizer is used, with an adaptation algorithm that continually updates the filter weights using successive input samples. For the same compression ratio (CR), results indicate that the proposed system permits a higher reconstruction quality compared with the standard CS algorithm. For higher CRs, lower dimensional projections are allowed, meanwhile guaranteeing a correct reconstruction. Thus, low computational high quality data compression/reconstruction are achieved with minimal energy expenditure at the sensors nodes.
机译:未来的医疗保健系统已转向使用嵌入式超低功耗设备进行长期患者监护。在本文中,利用基于耙度的压缩感测(CS)和块稀疏贝叶斯学习(BSBL)的优势来通过无线人体区域网络进行有效的脑电图(EEG)发送/接收。基于耙度概念的二进制感应矩阵用于查找最有能量的信号方向。在收集能量和强制执行受限的等距特性以捕获基础信号结构之间实现了平衡。使用基于离散余弦变换的BSBL可以正确表示EEG振荡活动,EEG波形和主要信号特征,该BSBL对块内相关性进行建模。采用IEEE 802.15.4无线通信技术(ZigBee),因为它以节能的方式针对低数据速率通信。为了减轻噪声和通道多径效应,使用了基于递归最小二乘的均衡器,以及自适应算法,该算法使用连续的输入样本不断更新滤波器权重。对于相同的压缩率(CR),结果表明与标准CS算法相比,该系统具有更高的重建质量。对于较高的CR,允许使用较低尺寸的投影,同时保证正确的重建。因此,在传感器节点处以最小的能量消耗实现了低计算量的高质量数据压缩/重构。

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