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Multipoint Channel Charting With Multiple-Input Multiple-Output Convolutional Autoencoder

机译:具有多输入多输出卷积自动编码器的多点通道图表

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We study the multipoint channel charting problem, where the channel state information (CSI) from multiple bases is used to generate channel charts for user relative positioning and many other applications. In previous work, only non-parametric methods are considered. In this paper, we fill the gap by proposing a novel neural network architecture - a multiple-input multiple-output (MIMO) convolutional autoencoder (CAE) - to solve the problem. Based on an open-source dataset, we demonstrate that for the use cases of user relative positioning and in region location verification (IRLV), compared with a baseline autoencoder (AE) with all fully-connected layers, the proposed network is able to achieve similar or better performance with a much smaller network size. In addition, we note that the proposed network is more capable of extracting useful features from CSI data and thus more promising for end-to-end learning.
机译:我们研究了多点信道制图问题,其中来自多个基站的信道状态信息(CSI)用于生成用户相对定位和许多其他应用程序的信道图。在以前的工作中,仅考虑非参数方法。在本文中,我们通过提出一种新颖的神经网络体系结构-多输入多输出(MIMO)卷积自动编码器(CAE)-来解决这一问题。基于一个开源数据集,我们证明了在用户相对定位和区域位置验证(IRLV)的用例中,与具有所有全连接层的基线自动编码器(AE)相比,该提议的网络能够实现在较小的网络规模下达到相似或更好的性能。此外,我们注意到拟议的网络更能够从CSI数据中提取有用的功能,因此对于端到端学习更有希望。

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