The authors developed a low cost system for detecting and classifying consumer drones. Abstract The proliferation of #drones, or unmanned aerial vehicles (#UAVs), has raised significant safety concerns due to their potential misuse in activities such as espionage, smuggling, and infrastructure disruption. This paper addresses the critical need for effective drone detection and classification systems that operate independently of UAV cooperation. We evaluate various convolutional neural networks (#CNNs) for their ability to detect and classify drones using spectrogram data derived from consecutive Fourier transforms of signal components. The focus is on model robustness in low signal-to-noise ratio (SNR) environments, which is critical for real-world applications. A comprehensive dataset is provided to support future model development. In addition, we demonstrate a low-cost drone detection system using a standard computer, software-defined radio (SDR) and antenna, validated through real-world field testing. On our development dataset, all models consistently achieved an average balanced classification accuracy of >= 85% at SNR > -12dB. In the field test, these models achieved an average balance accuracy of > 80%, depending on transmitter distance and antenna direction. Our contributions include: a publicly available dataset for model development, a comparative analysis of CNN for drone detection under low SNR conditions, and the deployment and field evaluation of a practical, low-cost detection system.
Stephen Pendergast’s Post
More Relevant Posts
-
The rapid expansion of the drone industry has led to a significant increase in the number of low-altitude drones, raising concerns about collision avoidance and countermeasure strategies among these unmanned aerial vehicles. These challenges highlight the urgent need for effective air-to-air drone target detection. An ideal detection model must offer high accuracy, real-time capabilities, and a lightweight network architecture to balance precision and speed on embedded devices. To meet these requirements, the authors curated a dataset of over 10,000 images of low-altitude operating drones. This dataset includes diverse and intricate backgrounds, significantly enhancing the model’s training capacity. The authors applied a series of enhancements to the YOLOv5 algorithm to achieve lightweight object detection. https://hubs.la/Q02Fr2R20
Lightweight air-to-air UAV target detection model
https://cuashub.com/en
To view or add a comment, sign in
-
📣New Research: A Critical Review of U-Space Traffic Autonomous Guidance This paper examines key constraints and information needs for autonomous drone guidance in U-space. It highlights gaps between current operations and essential requirements for safe, efficient airspace management. A valuable read for those in AI, aviation, and drone tech! 🔗 https://lnkd.in/d256sQiK #UAM #Drones #Innovation
A Critical Review of Information Provision for U-Space Traffic Autonomous Guidance
mdpi.com
To view or add a comment, sign in
-
This study proposes using a #ZeroTrust Architecture (#ZTA) framework to improve the #security of #unmannedaerialvehicles (#UAVs) or #drones. ZTA requires continuously authenticating all devices and communications on a network instead of relying on traditional perimeter defenses. They developed a #deeplearning model that can detect and classify different types of drones with 84.59% accuracy by analyzing the radio frequency (RF) signals emitted by the drones. Accurate drone identification is crucial for the ZTA to control network access. To make the drone classification model more transparent and trustworthy, they used explainable #AI techniques called #SHAP and #LIME. These help explain the model's predictions by highlighting which #RFsignal features were most important for each #classification. Combining deep learning for accurate detection, ZTA for enhanced security, and explainable AI for transparency allows them to implement stronger yet understandable security protocols for the increasing number of drones in airspace. A limitation is their model can only classify the four drone types in the training data. Future work will need to add anomaly detection to flag unknown drone types and expand the dataset with more drone varieties. In summary, this integrates AI techniques and a zero-trust security to build a system with potential for monitoring and controlling drone access in sensitive airspaces.
Enhancing UAV Security Through Zero Trust Architecture: An Advanced Deep Learning and Explainable AI Analysis
spenderaedsystems.blogspot.com
To view or add a comment, sign in
-
#Dronesensors, from #LiDAR to thermal and beyond, are revolutionizing industries by expanding the capabilities of unmanned aerial vehicles. With advancements in diverse sensor technologies, drones are now equipped to tackle tasks ranging from environmental research to industrial inspections, heralding a new era of #innovation and problem-solving. #RDive #DroneTechnology #DroneSensors #UAV #LiDAR #ThermalSensors #Multispectral #Hyperspectral #GasSensors #ChemicalSensors #ObstacleAvoidance #GPS #NavigationSystems #CameraSensors #Innovation #Technology #EnvironmentalMonitoring #IndustrialInspections https://lnkd.in/eK_BEw5U
How are Latest Developments in Drone Sensors Empowering Drone Functionality?
researchdive.com
To view or add a comment, sign in
-
📣 Exciting Updates! 📣 We're proud to share that our Auterion operating system allows manufacturers like Freefly Systems to build BlueUAS certified systems like Astro Prime, powered by AuterionOS! AuterionOS ensures a cyber-secure, interoperable, and NDAA-compliant system, empowering drone manufacturers like Freefly to deliver top-notch, blue-certified systems. The latest AuterionOS update also enhances support for the Sony ILX-LR1, optimizing performance, video recording, and streaming quality, ensuring top-notch image quality for industrial UAV applications. Read the blog post to learn more about these updates: https://hubs.ly/Q02H6w3F0
AuterionOS updates power Blue-certified Astro and enhance imagery capture and processing | Auterion
https://auterion.com
To view or add a comment, sign in
-
Lecturer (assistant professor) in aerospace control. Programme Director of the MSc Aerospace Engineering. Interested in aircraft control, motion and disturbance estimation, spacecraft AOCS, FDIR, UAV/eVTOL GNC.
This is to say that we are running a special issue of the Drones journal (Q1, IF: 4.8, Citescore: 6.1), for which we will soon extend the deadline to later this year to encourage more high quality paper submissions. The special issue is entitied: Navigation, Control and Mission Planning Advances for Safe, Efficient and Autonomous Drones. Seven papers have already been published in this special issue with up to 10 citations per paper so far.
Drones
mdpi.com
To view or add a comment, sign in
-
FAA Part 107 Certified UAS Operator // Aerial Photographer at Open Sky Imageries LLC “ Doing What I Love To Do “
As the AI explosion continues to reshape the UAV industry, the once-familiar phrase 'It's not about the drone, it's about the data' is being reimagined, revealing a future where data-driven intelligence fuels innovative solutions, optimized operations, and bold new possibilities.
Drone Data’s Value is Increasing With Improvements around Artificial Intelligence
commercialuavnews.com
To view or add a comment, sign in
-
Research Article Published in our journal (Mesopotamian journal of Cybersecurity) indexed in Scopus. Title: Ubiquitous Trust Management and Power Optimization for UAV Assisted Mobile Communication. Keywords: Mobile Ad Hoc Networks, UAV, cluster members, Trust Management, Security. DOI: https://lnkd.in/gwPDEN38 Highlights The paper discusses using Unmanned Aerial Vehicles (UAVs) to improve communication in Mobile ad hoc Networks (MANETs). MANETs face challenges like instability and increased energy consumption. UAVs help by transmitting data in the air, especially for sensitive information. The proposed Ubiquitous Trust Management and Power Optimization (UTMPO-UAVs) method enhances security and efficiency. Simulation shows UTMPO-UAVs outperform previous methods in packet delivery, energy efficiency, delay, and routing overhead.
Ubiquitous Trust Management and Power Optimization for UAV Assisted Mobile Communication
journals.mesopotamian.press
To view or add a comment, sign in
-
GAO Tek’s Follow-Me Drones: Features & Regulations June 6, 2024 This FAQ provides comprehensive information about GAO Tek’s follow-me drones, addressing various aspects from their functionality to regulations governing their use. Follow-me drones, also known as tracking UAVs or autonomous followers, are unmanned aerial vehicles equipped with technology to autonomously track and follow a designated target, such as a person or object. This tracking capability is facilitated by GPS, sensors, and tracking algorithms, allowing the drone to adjust its flight path to keep the target in frame.
GAO Tek’s Follow-Me Drones: Features & Regulations
https://gaotek.com
To view or add a comment, sign in
-
Excited to share our latest research on enhancing UAV control systems through data-driven predictive models. I'd like to extend my deepest gratitude to Professor Stuart Townley and Dr. Saptarshi Das for their continuous support. Our study introduces a novel approach for predicting drone motion by leveraging fundamental flight control data, simplifying traditional control complexities. We also compare the performance of two neural network architectures—LSTM and NARX—in developing virtual drone models using real flight data. We expect that this work can be an attempt at improving the autonomy of individual drones and can set the stage for future studies on swarm behaviours in drone clusters. Stay tuned for more insights! doi: https://lnkd.in/e-8PwSsk
A data-driven approach uses long short term memory and nonlinear autoregressive exogenous models to predict drone motion from flight data, aiming to enhance unmanned aerial vehicle control and autonomy. Publisher: Systems Science & Control Engineering doi: https://lnkd.in/dnjU9d6s Authors: Shuyan Dong, Prof Stuart Townley et al. #drones #Control #DataScience #nonlinear #Systems
Drone motion prediction from flight data: a nonlinear time series approach
tandfonline.com
To view or add a comment, sign in
Chief Executive Officer at US Government Agencies
4moGood to know!