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Low-power ECG acquisition by Compressed Sensing with Deep Neural Oracles

机译:通过深度神经Oracle压缩感知进行低功耗ECG采集

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The recovery of sparse signals from their linear mapping on a lower-dimensional space is traditionally performed by finding the sparsest solution compatible with such solutions. This task can be partitioned in two phases: support estimation and coefficient estimation. We propose to perform the former with a deep neural network jointly trained with the encoder that divines a support that is used in the latter phase to estimate the coefficients by pseudo-inversion. Numerical evidence demonstrates that the proposed encoder-decoder architecture outperforms state-of-the-art Compressed Sensing (CS) approaches in the recovery of synthetic ECG signals for a compression ratio higher than 2.5. Further tests on real ECG prove the applicability in real-world scenarios.
机译:从稀疏信号在低维空间上的线性映射中恢复稀疏信号通常是通过找到与此类解决方案兼容的最稀疏解决方案来执行的。该任务可以分为两个阶段:支持估计和系数估计。我们建议使用与编码器联合训练的深度神经网络来执行前者,该深度神经网络会确定在后一阶段中使用的支持以通过伪反演来估算系数的支持。数值证据表明,在压缩率高于2.5的情况下,在合成ECG信号的恢复中,提出的编码器-解码器体系结构优于最新的压缩传感(CS)方法。对真实ECG的进一步测试证明了其在实际场景中的适用性。

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