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Aerial video and ladar imagery fusion for persistent urban vehicle tracking

机译:空中视频和拉长意象融合,用于持久的城市车辆跟踪

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We assess the impact of supplementing two-dimensional video with three-dimensional geometry for persistent vehicle tracking in complex urban environments. Using recent video data collected over a city with minimal terrain content, we first quantify erroneous sources of automated tracking termination and identify those which could be ameliorated by detailed height maps. They include imagery misregistration, roadway occlusion and vehicle deceleration. We next develop mathematical models to analyze the tracking value of spatial geometry knowledge in general and high resolution ladar imagery in particular. Simulation results demonstrate how 3D information could eliminate large numbers of false tracks passing through impenetrable structures. Spurious track rejection would permit Kalman filter coasting times to be significantly increased. Track lifetimes for vehicles occluded by trees and buildings as well as for cars slowing down at corners and intersections could consequently be prolonged. We find high resolution 3D imagery can ideally yield an 83% reduction in the rate of automated tracking failure.
机译:我们评估补充二维视频与三维几何形状,在复杂的城市环境中持久的车辆跟踪。使用最新的视频数据,具有最小的地形内容,我们首先量化了自动跟踪终止的错误来源,并确定了详细的高度地图可以改善的信息。它们包括图像误解,道路闭塞和车辆减速。我们接下来开发数学模型,以分析一般和高分辨率高层图像中的空间几何知识的跟踪值。仿真结果表明,3D信息如何消除通过不可穿透的结构的大量错误轨道。杂散的轨道拒绝将允许卡尔曼滤波器的惯性时间明显增加。跟踪由树木和建筑物封闭的车辆的寿命以及在角落和交叉口减慢的汽车可能会延长。我们发现高分辨率3D图像可以理想地产生83%的自动化跟踪失败率降低。

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