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EV-Flying: an Event-based Dataset for In-The-Wild Recognition of Flying Objects

EV-Flying: an Event-based Dataset for In-The-Wild Recognition of Flying Objects

来源:Arxiv_logoArxiv
英文摘要

Monitoring aerial objects is crucial for security, wildlife conservation, and environmental studies. Traditional RGB-based approaches struggle with challenges such as scale variations, motion blur, and high-speed object movements, especially for small flying entities like insects and drones. In this work, we explore the potential of event-based vision for detecting and recognizing flying objects, in particular animals that may not follow short and long-term predictable patters. Event cameras offer high temporal resolution, low latency, and robustness to motion blur, making them well-suited for this task. We introduce EV-Flying, an event-based dataset of flying objects, comprising manually annotated birds, insects and drones with spatio-temporal bounding boxes and track identities. To effectively process the asynchronous event streams, we employ a point-based approach leveraging lightweight architectures inspired by PointNet. Our study investigates the classification of flying objects using point cloud-based event representations. The proposed dataset and methodology pave the way for more efficient and reliable aerial object recognition in real-world scenarios.

Gabriele Magrini、Federico Becattini、Giovanni Colombo、Pietro Pala

航空航天技术环境科学技术现状

Gabriele Magrini,Federico Becattini,Giovanni Colombo,Pietro Pala.EV-Flying: an Event-based Dataset for In-The-Wild Recognition of Flying Objects[EB/OL].(2025-06-04)[2025-07-16].https://arxiv.org/abs/2506.04048.点此复制

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