SigT: An Efficient End-to-End MIMO-OFDM Receiver Framework Based on
Transformer
- URL: http://arxiv.org/abs/2211.09712v1
- Date: Wed, 2 Nov 2022 14:08:16 GMT
- Title: SigT: An Efficient End-to-End MIMO-OFDM Receiver Framework Based on
Transformer
- Authors: Ziyou Ren, Nan Cheng, Ruijin Sun, Xiucheng Wang, Ning Lu and Wenchao
Xu
- Abstract summary: A novel end-to-end receiver framework based on textittransformer, named SigT, is proposed.
Experiment results show that SigT achieves much higher performance in terms of signal recovery accuracy than benchmark methods.
- Score: 16.00729720170457
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 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.
Related papers
- Low-Latency Task-Oriented Communications with Multi-Round, Multi-Task Deep Learning [45.622060532244944]
We propose a multi-round, multi-task learning (MRMTL) approach for the dynamic update of channel uses in multi-round transmissions.
We show that MRMTL significantly improves the efficiency of task-oriented communications.
arXiv Detail & Related papers (2024-11-15T17:48:06Z) - Deformable Mixer Transformer with Gating for Multi-Task Learning of
Dense Prediction [126.34551436845133]
CNNs and Transformers have their own advantages and both have been widely used for dense prediction in multi-task learning (MTL)
We present a novel MTL model by combining both merits of deformable CNN and query-based Transformer with shared gating for multi-task learning of dense prediction.
arXiv Detail & Related papers (2023-08-10T17:37:49Z) - Deep Learning-Based Rate-Splitting Multiple Access for Reconfigurable
Intelligent Surface-Aided Tera-Hertz Massive MIMO [56.022764337221325]
Reconfigurable intelligent surface (RIS) can significantly enhance the service coverage of Tera-Hertz massive multiple-input multiple-output (MIMO) communication systems.
However, obtaining accurate high-dimensional channel state information (CSI) with limited pilot and feedback signaling overhead is challenging.
This paper proposes a deep learning (DL)-based rate-splitting multiple access scheme for RIS-aided Tera-Hertz multi-user multiple access systems.
arXiv Detail & Related papers (2022-09-18T03:07:37Z) - Model-based Deep Learning Receiver Design for Rate-Splitting Multiple
Access [65.21117658030235]
This work proposes a novel design for a practical RSMA receiver based on model-based deep learning (MBDL) methods.
The MBDL receiver is evaluated in terms of uncoded Symbol Error Rate (SER), throughput performance through Link-Level Simulations (LLS) and average training overhead.
Results reveal that the MBDL outperforms by a significant margin the SIC receiver with imperfect CSIR.
arXiv Detail & Related papers (2022-05-02T12:23:55Z) - DEFORM: A Practical, Universal Deep Beamforming System [4.450750414447688]
We introduce, design, and evaluate a set of universal receiver beamforming techniques.
Our approach and system DEFORM, a Deep Learning (DL) based RX beamforming achieves significant gain for multi antenna RF receivers.
arXiv Detail & Related papers (2022-03-18T03:52:18Z) - TransCMD: Cross-Modal Decoder Equipped with Transformer for RGB-D
Salient Object Detection [86.94578023985677]
In this work, we rethink this task from the perspective of global information alignment and transformation.
Specifically, the proposed method (TransCMD) cascades several cross-modal integration units to construct a top-down transformer-based information propagation path.
Experimental results on seven RGB-D SOD benchmark datasets demonstrate that a simple two-stream encoder-decoder framework can surpass the state-of-the-art purely CNN-based methods.
arXiv Detail & Related papers (2021-12-04T15:45:34Z) - Machine Learning-enhanced Receive Processing for MU-MIMO OFDM Systems [15.423422040627331]
Machine learning can be used to improve multi-user multiple-input multiple-output (MU-MIMO) receive processing.
We propose a new strategy which preserves the benefits of a conventional receiver, but enhances specific parts with ML components.
arXiv Detail & Related papers (2021-06-30T14:02:27Z) - End-to-End Learning for Uplink MU-SIMO Joint Transmitter and
Non-Coherent Receiver Design in Fading Channels [11.182920270301304]
A novel end-to-end learning approach, namely JTRD-Net, is proposed for uplink multiuser single-input multiple-output (MU-SIMO) joint transmitter and non-coherent receiver design (JTRD) in fading channels.
The transmitter side is modeled as a group of parallel linear layers, which are responsible for multiuser waveform design.
The non-coherent receiver is formed by a deep feed-forward neural network (DFNN) so as to provide multiuser detection (MUD) capabilities.
arXiv Detail & Related papers (2021-05-04T02:47:59Z) - A Compressive Sensing Approach for Federated Learning over Massive MIMO
Communication Systems [82.2513703281725]
Federated learning is a privacy-preserving approach to train a global model at a central server by collaborating with wireless devices.
We present a compressive sensing approach for federated learning over massive multiple-input multiple-output communication systems.
arXiv Detail & Related papers (2020-03-18T05:56:27Z) - DeepSIC: Deep Soft Interference Cancellation for Multiuser MIMO
Detection [98.43451011898212]
In multiuser multiple-input multiple-output (MIMO) setups, where multiple symbols are simultaneously transmitted, accurate symbol detection is challenging.
We propose a data-driven implementation of the iterative soft interference cancellation (SIC) algorithm which we refer to as DeepSIC.
DeepSIC learns to carry out joint detection from a limited set of training samples without requiring the channel to be linear.
arXiv Detail & Related papers (2020-02-08T18:31:00Z) - ANN-Based Detection in MIMO-OFDM Systems with Low-Resolution ADCs [0.0]
We propose a multi-layer artificial neural network (ANN) that is trained with the Levenberg-Marquardt algorithm for use in signal detection.
We consider a blind detection scheme where data symbol estimation is carried out without knowing the channel state information at the receiver.
arXiv Detail & Related papers (2020-01-31T03:38:42Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.