Enabling Surveillance Cameras to Navigate

Liang Dong, Jingao Xu, Guoxuan Chi, Danyang Li, Xinglin Zhang, Jianbo Li, Q. Ma, Zheng Yang
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引用次数: 6

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 paper, 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 smart-phones and validate its performance in five different scenarios. The results show that iMAC achieves a remarkable localization accuracy of 0.68m, outperforming the state-of-the-art systems by > 75%.
启用监控摄像头导航
在移动计算时代,智能手机本地化对广泛的应用程序至关重要。由于计算机视觉技术的成熟,无处不在的智能手机移动摄像头和监控环境摄像头有望提供亚米精度的定位服务。通常,基于环境摄像机的解决方案能够在视频帧中以细粒度定位行人,但在动态环境下的跟踪性能仍然不可靠。相反,基于移动摄像头的解决方案能够持续跟踪行人,然而,它们通常需要构建大量的图像数据库,这对于实际部署来说是一种劳动密集型的开销。我们发现整合这两种最有希望的方法能够克服上述限制,并以全新的视角重新审视智能手机本土化问题。然而,由于相机在视角、参数和定位结果不一致等方面的差异,融合基于移动相机和基于环境相机的系统并非易事。在本文中,我们提出了一种基于移动相机和环境相机的集成定位系统iMAC,该系统在无需人工启动的情况下实现了亚米精度和增强的鲁棒性。iMAC的关键创新是设计良好的融合框架以消除摄像机的视差,包括构建投影映射功能以自动校准环境摄像机,构建即时人群指纹模型以描述用户运动模式,以及将两个子系统的结果关联起来的置信度感知匹配算法。我们在商用智能手机上全面实现了iMAC,并在五种不同的场景下验证了其性能。结果表明,iMAC实现了0.68m的显著定位精度,比目前最先进的系统高出75%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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