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Feature-based diagnostic distortion measure for unsupervised self-guided biomedical signal compressors

机译:无监督自导式生物医学信号压缩器的基于特征的诊断失真测量

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In this work, the advantages of coupling biomedical signal compressors with clinical feature-based distortion measures are demonstrated. Such a coupling allow biomedical signal compressors to self-establish hard limits with regards to choices surrounding compression ratios, or `quality settings', a compressor can safely choose from to guarantee that features of clinical significance are protected so that their reconstruction remains clinically relevant. This coupling allows biomedical signal compressors to operate in an unsupervised manner, since it is demonstrated that establishing hard limits that are applied equally to all signals does not allow one to maximize and/or strike a balance between compression ratio and signal fidelity. Such mechanisms can be employed in communication architectures in wearable body area sensor networks (BASNs) for emerging Internet of Things (IoT) applications for autonomous tasks. While feature-based distortion measures such as the Clinical Distortion Index (CDI), and the Weighted Distortion Measure (WDD) already exist, we demonstrate the viability of our work by proposing a generalizable feature-based distortion measure we call the Diagnostic Distortion Measure (DDM), which offers several benefits that address a few shortcomings present in the CDI and WDD in real-time applications for unsupervised self-guided compressors. Experimental results show successful application of our DDM with ECG signals from the PhysioNet database.
机译:在这项工作中,展示了将生物医学信号压缩器与基于临床特征的失真度量相结合的优势。这种耦合使生物医学信号压缩器可以在围绕压缩比或“质量设置”的选择方面建立硬性限制,从而可以安全地选择压缩器以确保具有临床意义的特征得到保护,从而使它们的重建仍具有临床意义。这种耦合允许生物医学信号压缩器以无监督的方式运行,因为已证明建立对所有信号均等地施加的硬限制并不能使压缩比和信号保真度达到最大化和/或平衡。这样的机制可以在可穿戴的身体区域传感器网络(BASN)的通信体系结构中采用,用于新兴的用于自主任务的物联网(IoT)应用程序。尽管已经存在基于特征的失真度量,例如临床失真指数(CDI)和加权失真度量(WDD),但我们通过提出一种可归纳为特征的基于特征的失真度量(我们将其称为诊断失真度量( DDM),它提供了多种优势,可以解决无人监督的自导式压缩机在实时应用中CDI和WDD中存在的一些缺陷。实验结果表明,将DDM与PhysioNet数据库中的ECG信号一起成功应用了。

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