TL;DR
DeepMTL is a novel deep learning framework that accurately localizes multiple transmitters and estimates their power using sensor data, framing the problem as image translation and object detection tasks, and demonstrating significant performance improvements.
Contribution
We introduce DeepMTL, a deep learning approach that reformulates multiple transmitter localization as image translation and object detection, achieving superior accuracy and low latency.
Findings
Outperforms previous methods by 50% in localization error.
Effective in both large-scale simulations and real testbed data.
Provides accurate power estimation of transmitters.
Abstract
In this paper, we address the problem of Multiple Transmitter Localization (MTL). MTL is 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 is of great significance in many applications wherein intruders may be present. E.g., in shared spectrum systems, detection of unauthorized transmitters and estimating their power are 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 mage-to-image translation…
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