DeepMTL: Deep Learning Based Multiple Transmitter Localization

Caitao Zhan, Mohammad Ghaderibaneh, Pranjal Sahu, Himanshu Gupta
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引用次数: 14

Abstract

In this paper, we address the problem of Multiple Transmitters Localization (MTL), i.e., to determine the locations of potential multiple transmitters in a field, based on readings from a distributed set of sensors. In contrast to the widely studied single transmitter localization problem, the MTL problem has only been studied recently in a few works. MTL problem is of great significance in many applications wherein intruders may be present. E.g., in shared spectrum systems, detection of unauthorized transmitters is imperative to efficient utilization of the shared spectrum.In this paper, we present DeepMTL, a novel deep-learning approach to address the MTL problem. In particular, we frame MTL as a sequence of two steps, each of which is a computer vision problem: image-to-image translation and object detection. The first step of image-to-image translation essentially maps an input image representing sensor readings to an image representing distribution of transmitter locations, and the second object detection step derives precise locations of transmitters from the image of transmitter distributions. For the first step, we design our learning model sen2peak, while for the second step, we customize a state-of-the-art object detection model YOLOv3-cust. We demonstrate the effectiveness of our approach via extensive large-scale simulations, and show that our approach outperforms the previous approaches significantly (by 50% or more) in accuracy performance metrics, and incurs an order of magnitude less latency compared to other prior works.
DeepMTL:基于深度学习的多发射机定位
在本文中,我们解决了多发射机定位(MTL)的问题,即根据一组分布式传感器的读数确定一个领域中潜在的多个发射机的位置。相对于广泛研究的单发射机定位问题,MTL问题是最近才被研究的。在许多可能存在入侵者的应用程序中,MTL问题具有重要意义。例如,在共享频谱系统中,检测未经授权的发射机对于有效利用共享频谱是必不可少的。在本文中,我们提出了DeepMTL,一种新的深度学习方法来解决MTL问题。特别地,我们将MTL框架为两个步骤的序列,每个步骤都是一个计算机视觉问题:图像到图像的翻译和目标检测。图像到图像转换的第一步基本上将表示传感器读数的输入图像映射到表示发射机位置分布的图像,并且第二目标检测步骤从发射机分布的图像派生出发射机的精确位置。第一步,我们设计了我们的学习模型sen2peak,第二步,我们定制了一个最先进的目标检测模型YOLOv3-cust。我们通过广泛的大规模模拟证明了我们方法的有效性,并表明我们的方法在精度性能指标上显著优于以前的方法(超过50%或更多),并且与其他先前的工作相比,延迟减少了一个数量级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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