SPAIOct 28, 2024

Deep Learning-Based CKM Construction with Image Super-Resolution

arXiv:2411.08887v111 citationsh-index: 7Has Code2025 IEEE 101st Vehicular Technology Conference (VTC2025-Spring)
Originality Incremental advance
AI Analysis

This addresses the challenge of environment awareness for wireless systems, offering an incremental improvement over existing interpolation and SRGAN methods.

The paper tackles the problem of constructing a complete channel knowledge map (CKM) from sparse measurements by adapting an image super-resolution network (SRResNet), achieving a root mean square error of 1.1 dB in path loss with only 1/16 of locations measured.

Channel knowledge map (CKM) is a novel technique for achieving environment awareness, and thereby improving the communication and sensing performance for wireless systems. A fundamental problem associated with CKM is how to construct a complete CKM that provides channel knowledge for a large number of locations based solely on sparse data measurements. This problem bears similarities to the super-resolution (SR) problem in image processing. In this letter, we propose an effective deep learning-based CKM construction method that leverages the image SR network known as SRResNet. Unlike most existing studies, our approach does not require any additional input beyond the sparsely measured data. In addition to the conventional path loss map construction, our approach can also be applied to construct channel angle maps (CAMs), thanks to the use of a new dataset called CKMImageNet. The numerical results demonstrate that our method outperforms interpolation-based methods such as nearest neighbour and bicubic interpolation, as well as the SRGAN method in CKM construction. Furthermore, only 1/16 of the locations need to be measured in order to achieve a root mean square error (RMSE) of 1.1 dB in path loss.

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