In this paper, we study a concatenate coding scheme based on sparse regression code (SPARC) and tree code for unsourced random access in massive multiple-input and multiple-output systems. Our focus is concentrated on efficient decoding for the inner SPARC with practical concerns. A two-stage method is proposed to achieve near-optimal performance while maintaining low computational complexity. Specifically, a one-step thresholding-based algorithm is first used for reducing large dimensions of the SPARC decoding, after which a relaxed maximum-likelihood estimator is employed for refinement. Adequate simulation results are provided to validate the near-optimal performance and the low computational complexity. Besides, for covariance-based sparse recovery method, theoretical analyses are given to characterize the upper bound of the number of active users supported when convex relaxation is considered, and the probability of successful dimension reduction by the one-step thresholding-based algorithm.
翻译:在本文中,我们研究了一种基于稀薄回归代码(SPARC)和树码的混合编码办法,用于大规模多投入和多产出系统中无源随机访问。我们的重点是以实际关注重点为内部SPARC有效解码。我们建议采用一个两阶段方法,在保持低计算复杂性的同时,实现接近最佳的性能。具体地说,以一阶阈值为基础的算法首先用于减少SPARC解码的大维,此后将使用一个宽松的最大相似度估计器进行改进。提供了充分的模拟结果,以验证接近最佳的性能和低计算复杂性。此外,对于基于共变的稀有恢复方法,还进行了理论分析,以说明考虑 convex 放松时所支持的积极用户人数的上限,以及以一阶值为基础的算法成功降低维度的可能性。