Large-Scale Person Detection and Localization using Overhead Fisheye Cameras
Lu Yang, Liulei Li, Xueshi Xin, Yifan Sun, Qing Song, Wenguan Wang

TL;DR
This paper introduces LOAF, a large-scale dataset for person detection and localization using overhead fisheye cameras, and proposes a novel detection network that exploits fisheye distortions for accurate, real-time positioning.
Contribution
The paper presents the first large-scale overhead fisheye dataset and a specialized detection network leveraging fisheye distortions for precise person localization.
Findings
LOAF contains 457K annotated bounding boxes.
The fisheye detector outperforms previous methods.
Localization accuracy is within 0.5 meters in real-time.
Abstract
Location determination finds wide applications in daily life. Instead of existing efforts devoted to localizing tourist photos captured by perspective cameras, in this article, we focus on devising person positioning solutions using overhead fisheye cameras. Such solutions are advantageous in large field of view (FOV), low cost, anti-occlusion, and unaggressive work mode (without the necessity of cameras carried by persons). However, related studies are quite scarce, due to the paucity of data. To stimulate research in this exciting area, we present LOAF, the first large-scale overhead fisheye dataset for person detection and localization. LOAF is built with many essential features, e.g., i) the data cover abundant diversities in scenes, human pose, density, and location; ii) it contains currently the largest number of annotated pedestrian, i.e., 457K bounding boxes with groundtruth…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Advanced Neural Network Applications · UAV Applications and Optimization
MethodsFocus
