ForestPersons:一个用于林冠下失踪人员检测的大规模数据集 / ForestPersons: A Large-Scale Dataset for Under-Canopy Missing Person Detection
1️⃣ 一句话总结
这篇论文为了解决无人机在林区搜救时因树冠遮挡而难以发现失踪人员的问题,创建并公开了一个名为ForestPersons的大规模数据集,专门用于训练和评估能在林冠下复杂环境中有效检测人员的算法模型。
Detecting missing persons in forest environments remains a challenge, as dense canopy cover often conceals individuals from detection in top-down or oblique aerial imagery typically captured by Unmanned Aerial Vehicles (UAVs). While UAVs are effective for covering large, inaccessible areas, their aerial perspectives often miss critical visual cues beneath the forest canopy. This limitation underscores the need for under-canopy perspectives better suited for detecting missing persons in such environments. To address this gap, we introduce ForestPersons, a novel large-scale dataset specifically designed for under-canopy person detection. ForestPersons contains 96,482 images and 204,078 annotations collected under diverse environmental and temporal conditions. Each annotation includes a bounding box, pose, and visibility label for occlusion-aware analysis. ForestPersons provides ground-level and low-altitude perspectives that closely reflect the visual conditions encountered by Micro Aerial Vehicles (MAVs) during forest Search and Rescue (SAR) missions. Our baseline evaluations reveal that standard object detection models, trained on prior large-scale object detection datasets or SAR-oriented datasets, show limited performance on ForestPersons. This indicates that prior benchmarks are not well aligned with the challenges of missing person detection under the forest canopy. We offer this benchmark to support advanced person detection capabilities in real-world SAR scenarios. The dataset is publicly available at this https URL.
ForestPersons:一个用于林冠下失踪人员检测的大规模数据集 / ForestPersons: A Large-Scale Dataset for Under-Canopy Missing Person Detection
这篇论文为了解决无人机在林区搜救时因树冠遮挡而难以发现失踪人员的问题,创建并公开了一个名为ForestPersons的大规模数据集,专门用于训练和评估能在林冠下复杂环境中有效检测人员的算法模型。
源自 arXiv: 2603.02541