Benchmarking Audio-based Deep Learning Models for Detection and Identification of Unmanned Aerial Vehicles

Sai Srinadhu Katta, S. Nandyala, E. Viegas, Abdelrahman AlMahmoud
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引用次数: 2

Abstract

Over the last few years, Unmanned Aerial Vehicles (UAVs) have become increasingly popular for both commercial and personal applications. As a result, security concerns in both physical and cyber domains have been raised, as a malicious UAV can be used for the jamming of nearby targets or even for carrying explosive assets. UAV detection and identification is a very important task for safety and security. In this regard, several techniques have been proposed for the detection and identification of UAVs, in general, through image, audio, radar, and RF based approaches. In this paper, we benchmark the detection and identification of UAVs via audio data from [1]. We benchmarked with widely used deep learning algorithms such as Deep Neural Networks (DNN), Convolutional Neural Network (CNN), Long Short Term Memory (LSTM), Convolutional Long Short Term Memory (CLSTM) and Transformer Encoders (TE). In addition to the dataset of [1], we collected our own diverse identification audio dataset and experimented with Deep Neural Networks (DNN). In a UAV detection task, our best model (LSTM) outperformed the best model of [1] (CRNN) by over 4% in accuracy, 2% in precision, 4% in recall and 4% in F1-score. In UAV identification task, our best model (LSTM) outperformed the best model of [1] (CNN) by over 5% in accuracy, 2% in precision, 4% in recall and 3% in F1-score.
基于音频的无人机检测和识别深度学习模型的基准测试
在过去的几年里,无人驾驶飞行器(uav)在商业和个人应用中越来越受欢迎。因此,物理和网络领域的安全问题已经被提出,因为恶意无人机可以用于干扰附近目标或甚至用于携带爆炸性资产。无人机的探测与识别是一项非常重要的安全保卫任务。在这方面,已经提出了几种用于检测和识别无人机的技术,一般来说,通过图像,音频,雷达和基于射频的方法。在本文中,我们通过[1]的音频数据对无人机的检测和识别进行基准测试。我们使用深度神经网络(DNN)、卷积神经网络(CNN)、长短期记忆(LSTM)、卷积长短期记忆(CLSTM)和变压器编码器(TE)等广泛使用的深度学习算法进行基准测试。除了[1]的数据集,我们还收集了我们自己的多种识别音频数据集,并使用深度神经网络(DNN)进行了实验。在无人机检测任务中,我们的最佳模型(LSTM)比b[1] (CRNN)的最佳模型在准确率、精密度、召回率和f1得分方面分别提高了4%以上、2%以上、4%以上。在无人机识别任务中,我们的最佳模型(LSTM)比b[1] (CNN)的最佳模型准确率提高5%以上,精密度提高2%,召回率提高4%,F1-score提高3%。
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