Multiple-input multiple-output and orthogonal frequency-division multiplexing (MIMO-OFDM) are the key technologies in 4G and subsequent wireless communication systems. Conventionally, the MIMO-OFDM receiver is performed by multiple cascaded blocks with different functions and the algorithm in each block is designed based on ideal assumptions of wireless channel distributions. However, these assumptions may fail in practical complex wireless environments. The deep learning (DL) method has the ability to capture key features from complex and huge data. In this paper, a novel end-to-end MIMO-OFDM receiver framework based on \textit{transformer}, named SigT, is proposed. By regarding the signal received from each antenna as a token of the transformer, the spatial correlation of different antennas can be learned and the critical zero-shot problem can be mitigated. Furthermore, the proposed SigT framework can work well without the inserted pilots, which improves the useful data transmission efficiency. Experiment results show that SigT achieves much higher performance in terms of signal recovery accuracy than benchmark methods, even in a low SNR environment or with a small number of training samples. Code is available at https://github.com/SigTransformer/SigT.
翻译:在4G和随后的无线通信系统中的关键技术是多输出多输出和正方位频率多维转换(MIMO-OFDM)系统。在《公约》方面,MIMO-OFDM接收器由多个具有不同功能的级联块进行,每个区块的算法是根据无线频道分布的理想假设设计的。然而,这些假设在实际复杂的无线环境中可能失败。深层次学习(DL)方法能够从复杂和巨大的数据中捕捉关键特征。在本文中,提出了一个新的基于\ textit{transfer}(SigT)的新式端到端MIMO-ODM接收器框架。通过从每个天线收到的信号作为变压器的象征,可以学习不同天线的空间相关性,并且可以减轻关键的零点问题。此外,拟议的SigT框架可以在没有插入试点项目的情况下运作良好。实验结果显示SigT在信号恢复精确度方面达到比基准方法高得多得多的业绩,即使在低的SNRIS/regregiveS/travelig 样片。