Long-Distance Field Demonstration of Imaging-Free Drone Identification in Intracity Environments
By: Junran Guo , Tonglin Mu , Keyuan Li and more
Potential Business Impact:
Spots tiny flying objects miles away.
Detecting small objects, such as drones, over long distances presents a significant challenge with broad implications for security, surveillance, environmental monitoring, and autonomous systems. Traditional imaging-based methods rely on high-resolution image acquisition, but are often constrained by range, power consumption, and cost. In contrast, data-driven single-photon-single-pixel light detection and ranging (\text{D\textsuperscript{2}SP\textsuperscript{2}-LiDAR}) provides an imaging-free alternative, directly enabling target identification while reducing system complexity and cost. However, its detection range has been limited to a few hundred meters. Here, we introduce a novel integration of residual neural networks (ResNet) with \text{D\textsuperscript{2}SP\textsuperscript{2}-LiDAR}, incorporating a refined observation model to extend the detection range to 5~\si{\kilo\meter} in an intracity environment while enabling high-accuracy identification of drone poses and types. Experimental results demonstrate that our approach not only outperforms conventional imaging-based recognition systems, but also achieves 94.93\% pose identification accuracy and 97.99\% type classification accuracy, even under weak signal conditions with long distances and low signal-to-noise ratios (SNRs). These findings highlight the potential of imaging-free methods for robust long-range detection of small targets in real-world scenarios.
Similar Papers
LiDAR-Guided Monocular 3D Object Detection for Long-Range Railway Monitoring
CV and Pattern Recognition
Helps trains see far away to avoid crashes.
LRDDv2: Enhanced Long-Range Drone Detection Dataset with Range Information and Comprehensive Real-World Challenges
CV and Pattern Recognition
Helps find drones far away, even small ones.
Urban 3D Change Detection Using LiDAR Sensor for HD Map Maintenance and Smart Mobility
CV and Pattern Recognition
Finds changes in 3D city maps for better driving.