ASAISDOct 17, 2025

DroneAudioset: An Audio Dataset for Drone-based Search and Rescue

arXiv:2510.15383v11 citationsh-index: 29Has Code
Originality Synthesis-oriented
AI Analysis

This dataset addresses the lack of real acoustic data for drone audition, which is crucial for improving human-presence detection in search and rescue missions, though it is incremental as it focuses on data provision rather than a new method.

The paper tackles the problem of drone-based audio perception for search and rescue by introducing DroneAudioset, a comprehensive dataset with 23.5 hours of annotated recordings across various conditions, enabling development of noise suppression and classification methods.

Unmanned Aerial Vehicles (UAVs) or drones, are increasingly used in search and rescue missions to detect human presence. Existing systems primarily leverage vision-based methods which are prone to fail under low-visibility or occlusion. Drone-based audio perception offers promise but suffers from extreme ego-noise that masks sounds indicating human presence. Existing datasets are either limited in diversity or synthetic, lacking real acoustic interactions, and there are no standardized setups for drone audition. To this end, we present DroneAudioset (The dataset is publicly available at https://huggingface.co/datasets/ahlab-drone-project/DroneAudioSet/ under the MIT license), a comprehensive drone audition dataset featuring 23.5 hours of annotated recordings, covering a wide range of signal-to-noise ratios (SNRs) from -57.2 dB to -2.5 dB, across various drone types, throttles, microphone configurations as well as environments. The dataset enables development and systematic evaluation of noise suppression and classification methods for human-presence detection under challenging conditions, while also informing practical design considerations for drone audition systems, such as microphone placement trade-offs, and development of drone noise-aware audio processing. This dataset is an important step towards enabling design and deployment of drone-audition systems.

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