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Jointly Sparse Signal Recovery and Support Recovery via Deep Learning With Applications in MIMO-Based Grant-Free Random Access

机译:通过基于MIMO的赠款随机访问中的应用程序共同稀疏信号恢复和支持恢复

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In this article, we investigate jointly sparse signal recovery and jointly sparse support recovery in Multiple Measurement Vector (MMV) models for complex signals, which arise in many applications in communications and signal processing. Recent key applications include channel estimation and device activity detection in MIMO-based grant-free random access which is proposed to support massive machine-type communications (mMTC) for Internet of Things (IoT). Utilizing techniques in compressive sensing, optimization and deep learning, we propose two model-driven approaches, based on the standard auto-encoder structure for real numbers. One is to jointly design the common measurement matrix and jointly sparse signal recovery method, and the other aims to jointly design the common measurement matrix and jointly sparse support recovery method. The proposed model-driven approaches can effectively utilize features of sparsity patterns in designing common measurement matrices and adjusting model-driven decoders, and can greatly benefit from the underlying state-of-the-art recovery methods with theoretical guarantee. Hence, the obtained common measurement matrices and recovery methods can significantly outperform the underlying advanced recovery methods. We conduct extensive numerical results on channel estimation and device activity detection in MIMO-based grant-free random access. The numerical results show that the proposed approaches provide pilot sequences and channel estimation or device activity detection methods which can achieve higher estimation or detection accuracy with shorter computation time than existing ones. Furthermore, the numerical results explain how such gains are achieved via the proposed approaches.
机译:在本文中,我们调查了复杂信号的多个测量向量(MMV)模型中的共同稀疏信号恢复和联合稀疏支持恢复,这在通信和信号处理中的许多应用中出现。最近的主要应用包括基于MIMO的允许随机访问中的信道估计和设备活动检测,该访问是支持用于物联网(物联网)的大量机床类型通信(MMTC)。利用压缩传感,优化和深度学习中的技术,我们提出了两个模型驱动的方法,基于标准的自动编码器结构进行实数。一个是共同设计常见的测量矩阵和共同稀疏的信号恢复方法,另一个目的是共同设计常见的测量矩阵和联合稀疏的支持恢复方法。所提出的模型驱动方法可以有效地利用在设计公共测量矩阵和调整模型驱动的解码器方面的稀疏模式的特征,并且可以大大受益于具有理论保证的基础最先进的恢复方法。因此,获得的常见测量矩阵和恢复方法可以显着优于底层的高级恢复方法。我们对基于MIMO的授予随机访问中的信道估计和设备活动检测进行了广泛的数值结果。数值结果表明,所提出的方法提供了导频序列和信道估计或设备活动检测方法,其可以实现比现有的计算时间更短的估计或检测精度。此外,数值结果解释了如何通过所提出的方法实现这种增益。

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