Accurate indoor tracking using a mobile phone and non-overlapping camera sensor networks

Qiang Wang, Yan Liu, Juan Chen
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引用次数: 11

Abstract

Cameras are common in the public building, and become one of the popular sensors for the indoor tracking. However, a camera will produce much data and consume much energy. Consequently, the cameras, deployed in a large area, would have no overlapping field of views (fovs). This leads to we cannot determine the person's position in unobserved area correctly, due to the person's unpredicted motion change, such as taking turns. Smart phone-based dead reckoning (DR) method is recently observed to be an alternative for filling these cameras' gaps to realize seamless tracking. Therefore, in this paper, we propose to accurately track a person in indoor environment by employing particle filtering, which fuses the absolute position results from cameras and the relative position results from the smart phone-based DR method. Experiment results demonstrate the performance of the proposed joint tracking system. As we expected, the dead reckoning's drawbacks such as accumulative errors and the unavailability of the initial position, are solved by the cameras. As well, the positions' estimations between the cameras are filled with the DR method.
使用移动电话和不重叠的相机传感器网络进行精确的室内跟踪
摄像机在公共建筑中随处可见,成为室内跟踪的常用传感器之一。然而,相机将产生大量数据并消耗大量能源。因此,部署在大范围内的摄像机将没有重叠的视野(fovs)。这导致我们无法正确确定人在未观察区域的位置,因为人的不可预测的运动变化,如轮流。基于智能手机的航位推算(DR)方法最近被认为是填补这些相机空白以实现无缝跟踪的替代方法。因此,在本文中,我们提出采用粒子滤波的方法,将相机的绝对位置结果和基于智能手机的DR方法的相对位置结果融合在一起,实现室内环境中人的精确跟踪。实验结果验证了该联合跟踪系统的性能。正如我们所期望的那样,航位推算的缺点,如累积误差和初始位置的不可用性,都被相机解决了。同时,用DR方法对相机之间的位置估计进行填充。
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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