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Integrated IMU with Faster R-CNN Aided Visual Measurements from IP Cameras for Indoor Positioning

机译:集成IMU和来自IP摄像机的更快的R-CNN辅助视觉测量用于室内定位

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摘要

Considering the radio-based indoor positioning system pertaining to signal degradation due to the environmental factors, and rising popularity of IP (Internet Protocol) cameras in cities, a novel fusion of inertial measurement units (IMUs) with external IP cameras to determine the positions of moving users in indoor environments is presented. This approach uses a fine-tuned Faster R-CNN (Region Convolutional Neural Network) to detect users in images captured by cameras, and acquires visual measurements including ranges and angles of users with respect to the cameras based on the proposed monocular vision relatively measuring (MVRM) method. The results are determined by integrating the positions predicted by each user’s inertial measurement unit (IMU) and visual measurements using an EKF (Extended Kalman Filter). The results experimentally show that the ranging accuracy is affected by both the detected bounding box’s by Faster R-CNN height errors and diverse measuring distances, however, the heading accuracy is solely interfered with bounding box’s horizontal biases. The indoor obstacles including stationary obstacles and a pedestrian in our tests more significantly decrease the accuracy of ranging than that of heading, and the effect of a pedestrian on the heading errors is greater than stationary obstacles on that. We implemented a positioning test for a single user and an external camera in five indoor scenarios to evaluate the performance. The robust fused IMU/MVRM solution significantly decreases the positioning errors and shows better performance in dense multipath scenarios compared with the pure MVRM solution and ultra-wideband (UWB) solution.
机译:考虑到基于无线电的室内定位系统与环境因素导致的信号衰减有关,以及城市中IP(互联网协议)摄像机的日益普及,将惯性测量单元(IMU)与外部IP摄像机进行新颖的融合来确定目标位置介绍了在室内环境中移动用户的方法。这种方法使用微调的Faster R-CNN(区域卷积神经网络)来检测相机拍摄的图像中的用户,并根据相对测量的单眼视觉提议获取视觉测量值,包括用户相对于相机的范围和角度( MVRM)方法。通过将每个用户的惯性测量单元(IMU)预测的位置与使用EKF(扩展卡尔曼滤波器)的视觉测量值进行积分,可以确定结果。实验结果表明,测距精度受检测到的包围盒的Faster R-CNN高度误差和不同的测量距离的影响,但是,航向精度仅受包围盒的水平偏差的影响。在我们的测试中,包括障碍物和行人在内的室内障碍物比航向的障碍物更加明显地降低了测距精度,并且行人对航向误差的影响要大于航向障碍物。我们在五个室内场景中对单个用户和一台外接摄像机实施了定位测试,以评估性能。与纯MVRM解决方案和超宽带(UWB)解决方案相比,强大的融合式IMU / MVRM解决方案可显着减少定位误差,并在密集的多路径场景中显示出更好的性能。

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