Computer Vision Based Pre-Processing for Channel Sensing in Non-Stationary Environment

Wei Gao, W. Peng, Jiajia Liu, Zhifeng Nie
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Abstract

With the evolution of wireless networks, new techniques including massive multiple-input multiple- output (MIMO) and millimeter wave are adopted to satisfy the demands for diversified services. However, it has been verified by field tests that the traditional wide sense stationary assumption for wireless channel does not hold anymore. As a result, traditional channel state information (CSI) acquisition methods, especially the statistical CSI acquisition, cannot be applied straightforwardly in such a circumstance. In this paper, we propose a pre-processing method for channel sensing in the non-stationary environment. Specifically, the data sampled from channel training is treated as a channel image, where the statistical channel state is represented by gray-scale. Then the computer vision technique, specifically, the edge detection method, is used on the channel image to detect the homogeneous sub-regions. Within each sub-region, the channel is statistically stationary, and then the CSI can be obtained by existing methods. It is verified by simulation results that, the proposed method can help to improve the CSI acquisition accuracy in the non- stationary environment.
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基于计算机视觉的非平稳环境下信道感知预处理
随着无线网络的发展,大量多输入多输出(MIMO)和毫米波等新技术被采用,以满足多样化的业务需求。然而,通过现场测试证明,传统的广义平稳假设已不再适用于无线信道。因此,传统的信道状态信息获取方法,特别是统计的信道状态信息获取方法,不能直接应用于这种情况。本文提出了一种非平稳环境下信道传感的预处理方法。具体来说,从信道训练中采样的数据被视为信道图像,其中信道的统计状态用灰度表示。然后利用计算机视觉技术,即边缘检测方法,对通道图像进行均匀子区域检测。在每个子区域内,信道在统计上是平稳的,然后用现有的方法获得CSI。仿真结果表明,该方法可以提高非平稳环境下的CSI采集精度。
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