An adaptive deep learning-based UAV receiver design for coded MIMO with correlated noise

2021 ◽  
pp. 101365
Author(s):  
Zizhi Wang ◽  
Wenqi Zhou ◽  
Lunyuan Chen ◽  
Fasheng Zhou ◽  
Fusheng Zhu ◽  
...  
Author(s):  
Yi Zhang ◽  
Akash Doshi ◽  
Rob Liston ◽  
Wai-tian Tan ◽  
Xiaoqing Zhu ◽  
...  

Galaxies ◽  
2019 ◽  
Vol 8 (1) ◽  
pp. 3
Author(s):  
Vesna Lukic ◽  
Francesco de Gasperin ◽  
Marcus Brüggen

Finding and classifying astronomical sources is key in the scientific exploitation of radio surveys. Source-finding usually involves identifying the parts of an image belonging to an astronomical source, against some estimated background. This can be problematic in the radio regime, owing to the presence of correlated noise, which can interfere with the signal from the source. In the current work, we present ConvoSource, a novel method based on a deep learning technique, to identify the positions of radio sources, and compare the results to a Gaussian-fitting method. Since the deep learning approach allows the generation of more training images, it should perform well in the source-finding task. We test the source-finding methods on artificial data created for the data challenge of the Square Kilometer Array (SKA). We investigate sources that are divided into three classes: star forming galaxies (SFGs) and two classes of active galactic nuclei (AGN). The artificial data are given at two different frequencies (560 MHz and 1400 MHz), three total integration times (8 h, 100 h, 1000 h), and three signal-to-noise ratios (SNRs) of 1, 2, and 5. At lower SNRs, ConvoSource tends to outperform a Gaussian-fitting approach in the recovery of SFGs and all sources, although at the lowest SNR of one, the better performance is likely due to chance matches. The Gaussian-fitting method performs better in the recovery of the AGN-type sources at lower SNRs. At a higher SNR, ConvoSource performs better on average in the recovery of AGN sources, whereas the Gaussian-fitting method performs better in the recovery of SFGs and all sources. ConvoSource usually performs better at shorter total integration times and detects more true positives and misses fewer sources compared to the Gaussian-fitting method; however, it detects more false positives.


IEEE Access ◽  
2020 ◽  
Vol 8 ◽  
pp. 68866-68873
Author(s):  
Peiyang Song ◽  
Fengkui Gong ◽  
Qiang Li ◽  
Guo Li ◽  
Haiyang Ding

2021 ◽  
pp. 1-1
Author(s):  
Sanjeev Sharma ◽  
Kuntal Deka ◽  
Manish Mandloi

Author(s):  
Taotao Wang ◽  
Lihao Zhang ◽  
Soung Chang Liew

We propose a deep-learning approach for the joint MIMO detection and channel decoding problem. Conventional MIMO receivers adopt a model-based approach for MIMO detection and channel decoding in linear or iterative manners. However, due to the complex MIMO signal model, the optimal solution to the joint MIMO detection and channel decoding problem (i.e., the maximum likelihood decoding of the transmitted codewords from the received MIMO signals) is computationally infeasible. As a practical measure, the current model-based MIMO receivers all use suboptimal MIMO decoding methods with affordable computational complexities. This work applies the latest advances in deep learning for the design of MIMO receivers. In particular, we leverage deep neural networks (DNN) with supervised training to solve the joint MIMO detection and channel decoding problem. We show that DNN can be trained to give much better decoding performance than conventional MIMO receivers do. Our simulations show that a DNN implementation consisting of seven hidden layers can outperform conventional model-based linear or iterative receivers. This performance improvement points to a new direction for future MIMO receiver design.


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