Environmental scene reconstruction is of great interest for autonomous robotic applications, since an accurate representation of the environment is necessary to ensure safe interaction with robots. Equally important, it is also vital to ensure reliable communication between the robot and its controller. Large Intelligent Surface (LIS) is a technology that has been extensively studied due to its communication capabilities. Moreover, due to the number of antenna elements, these surfaces arise as a powerful solution to radio sensing. This paper presents a novel method to translate radio environmental maps obtained at the LIS to floor plans of the indoor environment built of scatterers spread along its area. The usage of a Least Squares (LS) based method, U-Net (UN) and conditional Generative Adversarial Networks (cGANs) were leveraged to perform this task. We show that the floor plan can be correctly reconstructed using both local and global measurements.
翻译:对自主机器人应用来说,环境场景的重建极受关注,因为准确描述环境对于确保与机器人的安全互动是必要的,同样重要的是,确保机器人与其控制器之间的可靠通信也至关重要。大型智能表面(LIS)是一种技术,由于它的通信能力而对其进行了广泛研究。此外,由于天线元素的数量,这些表面是作为无线电遥感的有力解决办法产生的。本文介绍了一种新颖的方法,将LIS获得的无线电环境地图转换成分布在其地区的撒布者所建造的室内环境平面图。利用了以最小广场为基础的方法,即U-Net(UN)和有条件的Genemental Aversarial网络(cANs)来完成这项任务。我们表明,利用当地和全球的测量可以正确重建地面计划。