Machine Learning based framework for Drone Detection and Identification using RF signals

Kalit Naresh Inani, K. S. Sangwan, Dhiraj
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引用次数: 1

Abstract

The recent advancement in the state of art technologies for drones and their reduced cost have made them highly accessible to the general public. Though their application is increasing in several domains, they raise security and privacy issues for military bases and civilians. To prevent this, drone detection and identification using RF signals is explored. The dataset considered in this experimental study is DroneRF dataset. Initially, the raw RF data is preprocessed to extract most relevant features using power spectral density technique which are further utilized for training machine learning classifiers such as XGBoost which gave the best accuracy for 2,4 and 10 category. The XGBoost algorithm with PSD features provides 100%, 100%, and 99.73% accuracy for 2, 4 and 10 category based data. To explore the possibility of feature fusion, another experiment was done XGBoost gave 99.13%, 99.11%, and 93.84% accuracy for 2,4 and 10 class problem. To investigate the usage of deep learning techniques, 1DCNN was used which provides 100%, 94.31%, and 86.29% accuracy scores. The final experiment was done using a Hybrid approach where 1DCNN based feature extractor and XGBoost classifier provides 100%, 99.82%, and 99.51% accuracies.
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基于机器学习的无人机射频信号检测与识别框架
无人机技术的最新进展及其成本的降低使其高度接近公众。虽然它们在一些领域的应用正在增加,但它们给军事基地和平民带来了安全和隐私问题。为了防止这种情况,探索了使用射频信号的无人机检测和识别。本实验研究考虑的数据集为DroneRF数据集。首先,使用功率谱密度技术对原始RF数据进行预处理以提取最相关的特征,这些特征进一步用于训练机器学习分类器,如XGBoost,它为2、4和10类别提供了最好的精度。具有PSD特性的XGBoost算法为基于2、4和10类的数据提供100%、100%和99.73%的准确率。为了探索特征融合的可能性,在另一个实验中,XGBoost对2、4和10类问题的准确率分别为99.13%、99.11%和93.84%。为了研究深度学习技术的使用情况,我们使用了1DCNN,它提供了100%、94.31%和86.29%的准确率分数。最后的实验是使用混合方法完成的,其中基于1DCNN的特征提取器和XGBoost分类器提供100%,99.82%和99.51%的准确率。
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