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A Radio Environment Maps Estimation Algorithm based on the Pixel Regression Framework for Underlay Cognitive Radio Networks Using Incomplete Training Data

机译:基于像素回归框架的不完整训练数据下的认知无线电网络无线电环境图估计算法

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摘要

In the underlay cognitive radio networks, the radio environment maps (REMs) estimation is the main challenge in sensing the idle wireless spectrum resources. Traditional deep learning-based algorithms estimate the REMs on the basis of the high-quality, large-scale complete training images. However, collecting the complete radio environment images is time-consuming and requires a numerous number of power spectrum sensing nodes. For this reason, we propose a generative adversarial networks-based pixel regression framework (PRF) for underlay cognitive radio networks. The PRF algorithm relaxes the requirement of the complete training images, and estimates the radio environment maps only on the basis of the incomplete REMs images, which are easier to be collected. First, we transform the radio environment maps estimation task into a pixel regression task through the color mapping progress. Then, to extract helpful information from the incomplete training data, we design a feature enhancing module for the PRF algorithm, which intelligently learns and emphasizes the important features from the training images. Finally, we use the trained pixel regression framework to reconstruct the radio environment maps in the target area. The proposed algorithm learns accurate radio environment characteristics from the incomplete training data rather than making direct biased or imprecise radio propagation assumptions as in the traditional methods. Thus, the PRF algorithm has a better REMs reconstruction performance than the traditional methods, as verified by simulations.
机译:在底层认知无线电网络中,无线电环境图(REM)估计是感测空闲无线频谱资源的主要挑战。传统的基于深度学习的算法会根据高质量,大规模的完整训练图像来估计REM。然而,收集完整的无线电环境图像是费时的并且需要大量的功率谱感测节点。因此,我们为底层认知无线电网络提出了一种基于对抗网络的像素回归框架(PRF)。 PRF算法放宽了对完整训练图像的要求,并且仅基于不完整的REM图像来估计无线电环境图,这些图更易于收集。首先,我们通过颜色映射进度将无线电环境图估计任务转换为像素回归任务。然后,为了从不完整的训练数据中提取有用的信息,我们为PRF算法设计了一个特征增强模块,该模块可以智能地学习和强调训练图像中的重要特征。最后,我们使用训练有素的像素回归框架来重建目标区域中的无线电环境图。所提出的算法从不完整的训练数据中学习准确的无线电环境特征,而不是像传统方法那样做出直接有偏或不精确的无线电传播假设。因此,PRF算法具有比传统方法更好的REM重建性能,通过仿真验证。

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