基于贝叶斯程序学习的射频发射器建模与分类

N. Bomberger, Scott Kuzdeba, T. S. Brandes, Andrew Radlbeck, D. Garagic
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引用次数: 1

摘要

在这项工作中,我们演示了贝叶斯程序学习(BPL)的初步应用,以基于每个发射机的单个训练信号来学习单个射频(RF)发射机的模型。一旦学会了,这些模型就被用来根据一个信号观察对单个射频发射机进行分类。BPL通过从少量训练数据中有效地学习和分类,改进了其他机器学习技术。BPL程序将概念表示为概率生成模型,用抽象描述语言表示为结构化过程。这些模型明确地解释了概念特定和上下文相关的机制,使它们能够在动态环境条件下良好地运行。在这项正在进行的研究中,我们在实验室环境中使用来自少量已知信号编码的软件定义无线电(sdr)的信号来演示我们的系统,并为将其扩展到更大的人群、更多的信号类型和具有挑战性的传输环境提供了一条前进的道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian Program Learning for Modeling and Classification of RF Emitters
In this work, we demonstrate an initial application of Bayesian program learning (BPL) to learn models for individual radio frequency (RF) transmitters based on a single training signal for each transmitter. Once learned, these models are used to classify individual RF transmitters based on one signal observation. BPL improves upon other machine learning techniques by learning and classifying effectively from small amounts of training data. BPL programs represent concepts as probabilistic generative models expressed as structured procedures in an abstract description language. These models explicitly account for both concept-specific and context-dependent mechanisms, allowing them to perform well under dynamic environmental conditions. In this ongoing research, we demonstrate our system using signals from a small population of software-defined radios (SDRs) with known signal encodings in a laboratory environment, and provide a path forward for expanding it to larger populations, more signal types, and challenging transmission environments.
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