MOR-UAV: A Benchmark Dataset and Baselines for Moving Object Recognition in UAV Videos
Murari Mandal, Lav Kush Kumar, Santosh Kumar Vipparthi

TL;DR
This paper introduces MOR-UAV, a large-scale dataset for moving object recognition in UAV videos, along with a baseline deep learning framework, addressing a gap in UAV vision datasets and tasks.
Contribution
The paper presents the first labeled dataset for moving object recognition in UAV videos and proposes a deep unified framework, MOR-UAVNet, for real-time MOR without user initialization.
Findings
MOR-UAVNet achieves effective online MOR in UAV videos.
The dataset contains 89,783 moving object instances across diverse scenarios.
Baseline results demonstrate the dataset's challenging nature.
Abstract
Visual data collected from Unmanned Aerial Vehicles (UAVs) has opened a new frontier of computer vision that requires automated analysis of aerial images/videos. However, the existing UAV datasets primarily focus on object detection. An object detector does not differentiate between the moving and non-moving objects. Given a real-time UAV video stream, how can we both localize and classify the moving objects, i.e. perform moving object recognition (MOR)? The MOR is one of the essential tasks to support various UAV vision-based applications including aerial surveillance, search and rescue, event recognition, urban and rural scene understanding.To the best of our knowledge, no labeled dataset is available for MOR evaluation in UAV videos. Therefore, in this paper, we introduce MOR-UAV, a large-scale video dataset for MOR in aerial videos. We achieve this by labeling axis-aligned bounding…
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