A Multiclass Acoustic Dataset and Interactive Tool for Analyzing Drone Signatures in Real-World Environments
By: Mia Y. Wang , Mackenzie Linn , Andrew P. Berg and more
Potential Business Impact:
Listens for drones by their sounds.
The rapid proliferation of drones across various industries has introduced significant challenges related to privacy, security, and noise pollution. Current drone detection systems, primarily based on visual and radar technologies, face limitations under certain conditions, highlighting the need for effective acoustic-based detection methods. This paper presents a unique and comprehensive dataset of drone acoustic signatures, encompassing 32 different categories differentiated by brand and model. The dataset includes raw audio recordings, spectrogram plots, and Mel-frequency cepstral coefficient (MFCC) plots for each drone. Additionally, we introduce an interactive web application that allows users to explore this dataset by selecting specific drone categories, listening to the associated audio, and viewing the corresponding spectrogram and MFCC plots. This tool aims to facilitate research in drone detection, classification, and acoustic analysis, supporting both technological advancements and educational initiatives. The paper details the dataset creation process, the design and implementation of the web application, and provides experimental results and user feedback. Finally, we discuss potential applications and future work to expand and enhance the project.
Similar Papers
DroneAudioset: An Audio Dataset for Drone-based Search and Rescue
Audio and Speech Processing
Helps drones hear people in noisy rescues.
WAVE-DETR Multi-Modal Visible and Acoustic Real-Life Drone Detector
CV and Pattern Recognition
Drones hear and see to find other drones.
Acoustic Anomaly Detection on UAM Propeller Defect with Acoustic dataset for Crack of drone Propeller (ADCP)
Sound
Listens to drone sounds to find broken parts.