基于多路径聚类的全景图像目标检测技术散射体识别

Inocent Calist, Minseok Kim
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引用次数: 0

摘要

目标检测在无线通信领域至关重要,因为它有助于预测有效通信所必需的信道行为和信道模型参数。近年来,为此目的提出了各种各样的目标检测技术,从传统的统计方法到基于深度学习的方法。本文综述了用于预测无线信道模型参数的目标检测技术。此外,本文还讨论了YOLO、Faster R-CNN和Mask R-CNN等不同目标检测框架的优点和局限性。最后,本文提出了一种利用Faster R-CNN目标检测技术和计算机视觉来预测散射体并最终估计无线信道信道特性的新方法。重点介绍了无线信道模型参数预测中目标检测的现状、挑战和未来发展方向。训练深度学习模型的数据集是由一个示例会议室环境全景图像生成的。该方法可应用于5G及以后的各种无线通信场景,基于多径集群准确预测散射体的位置,从而优化网络设计,提高系统整体性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multipath Cluster-Based Scatterer Recognition by Object Detection Techniques Using Panoramic Images
Object detection is crucial in the field of wireless communication, as it helps in predicting the channel behavior and channel model parameters that are necessary for efficient communication. In recent years, various object detection techniques have been proposed for this purpose, ranging from traditional statistical methods to deep learning-based approaches. This paper provides a comprehensive review of object detection techniques for predicting wireless channel model parameters. Additionally, the paper discuss the advantages and limitations of different object detection frameworks such as YOLO, Faster R-CNN, and Mask R-CNN. Finally, the paper puts foward a conceptual introduction of a novel approach to utilize Faster R-CNN object detection technique andcomputer vision, to predict the scatterers and eventually estimate the channel characteristics of a wireless channel. The paper highlights the current challenges and future directions in object detection for wireless channel model parameters prediction. The dataset to train the deep learning model is generated from an example conference room environment panoramic images. The proposed approach can be applied in various wireless communication scenarios, such as 5G and beyond, to accurately predict the location of scatterers based on multipath clusters so as to optimize network design and improve the overall performance of the system.
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