Enabling Surveillance Cameras to Navigate
0202 electrical engineering, electronic engineering, information engineering
02 engineering and technology
DOI:
10.1145/3446633
Publication Date:
2021-09-28T21:26:00Z
AUTHORS (8)
ABSTRACT
Smartphone localization is essential to a wide spectrum of applications in the era of mobile computing. The ubiquity of smartphone
mobile cameras
and surveillance
ambient cameras
holds promise for offering sub-meter accuracy localization services thanks to the maturity of computer vision techniques. In general,
ambient-camera-based
solutions are able to localize pedestrians in video frames at fine-grained, but the tracking performance under dynamic environments remains unreliable. On the contrary,
mobile-camera-based
solutions are capable of continuously tracking pedestrians; however, they usually involve constructing a large volume of image database, a labor-intensive overhead for practical deployment. We observe an opportunity of integrating these two most promising approaches to overcome above limitations and revisit the problem of smartphone localization with a fresh perspective. However, fusing
mobile-camera-based
and
ambient-camera-based
systems is non-trivial due to disparity of camera in terms of perspectives, parameters and incorrespondence of localization results. In this article, we propose iMAC, an integrated mobile cameras and ambient cameras based localization system that achieves sub-meter accuracy and enhanced robustness with zero-human start-up effort. The key innovation of iMAC is a well-designed fusing frame to eliminate disparity of cameras including a
construction of projection map function
to automatically calibrate ambient cameras, an
instant crowd fingerprints model
to describe user motion patterns, and a
confidence-aware matching
algorithm to associate results from two sub-systems. We fully implement iMAC on commodity smartphones and validate its performance in five different scenarios. The results show that iMAC achieves a remarkable localization accuracy of 0.68 m, outperforming the state-of-the-art systems by >75%.
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