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首页> 外文期刊>Instrumentation and Measurement, IEEE Transactions on >A Subspace Projection-Based Joint Sparse Recovery Method for Structured Biomedical Signals
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A Subspace Projection-Based Joint Sparse Recovery Method for Structured Biomedical Signals

机译:基于子空间投影的结构化生物医学信号联合稀疏恢复方法

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摘要

Sparse signal processing has shown a significant promise for the reconstruction of biomedical signals, which possess well-defined sparsity structures in an appropriate transform domain. In this paper, a reconstruction algorithm is proposed based on the multiple-measurement-vector model using the hidden sparsity and correlation structure of biomedical signals. This incorporates subspace filtering over the partial supports, initialized by the sparse Bayesian learning framework along with a maximum projection-based support-estimation technique. The proposed method outperforms the conventional algorithms with respect to correct support recovery rate and needs fewer measurements. The robustness is studied by employing real-world biomedical signals. The experimental results using multichannel fetal-electrocardiogram signals and respiratory signals, collected from the Physiobank database, show that the proposed technique is an improved method in terms of reconstruction quality and compression rate.
机译:稀疏信号处理已显示出对重建生物医学信号的重大希望,该生物医学信号在适当的变换域中具有明确定义的稀疏结构。本文提出了一种基于多重测量向量模型的生物医学信号隐藏稀疏性和相关结构的重构算法。这包括对部分支持的子空间过滤(由稀疏贝叶斯学习框架初始化)以及基于最大投影的支持估计技术。提出的方法在正确的支撑物回收率方面优于传统算法,并且需要更少的测量。通过采用现实世界的生物医学信号来研究鲁棒性。使用从Physiobank数据库收集的多通道胎儿心电图信号和呼吸信号的实验结果表明,从重建质量和压缩率方面来看,该技术是一种改进的方法。

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