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Deep Neural Oracle With Support Identification in the Compressed Domain

机译:深度神经结构,压缩域中的支持识别

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摘要

We investigate the advantage of a two-step approach in the recovery of Compressed Sensing (CS) encoded signals in a realistic environment. First, the support of the signal is computed from the compressed measurements exploiting a Deep Neural Network (DNN). Once the support is known, the input signal can be easily recovered by a pseudoinverse operation. We consider a case study involving realistic biomedical signals and a processing architecture based on a limited precision fixed-point arithmetic unit for the implementation of the DNN and the pseudoinverse operation. In this setting, we show that the proposed approach results in a performance improvement of more than 5 dB in terms of average reconstructed signal to noise ratio (ARSNR) compared to CS state-of-the-art approach. This has been possible thanks to two main contributions reported in this paper. The first one is a theoretical investigation of the relationship between the definition of support and both the properties of the input signal and the adopted compression technique. The second one relies on replacing the pseudoinverse operation with a least mean square filter, whose small sensitivity to numerical errors grants advantages in architectures relying on limited precision fixed-point arithmetic units.
机译:我们调查了两步方法在现实环境中恢复压缩感测(CS)编码信号中的两步方法的优点。首先,从利用深神经网络(DNN)的压缩测量来计算信号的支持。一旦众所周知,一旦众所周知,输入信号就可以通过伪操作容易地恢复。我们考虑一种涉及现实生物医学信号和基于有限精密定点算术单元的处理架构的案例研究,用于实现DNN和伪操作。在此设置中,我们表明,与CS最先进的方法相比,所提出的方法在平均重建信号(ARSNR)的噪声比(ARSNR)方面的性能提高超过5 dB。这篇论文中报告的两个主要捐款,这一项可能是允许的。第一个是对支持的定义与输入信号的性质和采用压缩技术之间关系的理论研究。第二个依赖于用最小均方滤波器替换伪荧光,其对数值误差的小敏感性授予依赖于有限精密定点算术单元的架构中的优点。

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