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Fusion of Region and Point-Feature Detections for Measurement Reconstruction in Multi-Target Kalman Tracking

机译:多目标卡尔曼跟踪中测量重建的区域和点特征检测的融合

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Object tracking in 2D video surveillance image data is one of the key needs for many follow-up operations such as object classification or activity recognition. In scenes with multiple objects crossing each other's way, there is a high potential for split and merge detections disturbing the tracking process. In these situations, it is helpful or even necessary to reconstruct the object-related measurements to support tracking approaches such as Kalman or Particle Filter. We present a way of fusing three different detection approaches taking benefit from their specific advantages to reconstruct measurements, if a split or merge situation is recognized. The resulting split and merge handling shows better results than using each detection approach individually without fusion. Furthermore, the tracking process is fast with a computation time less than one millisecond per image. Experimental results are given in example video scenes of an infrared camera located on a buoy for maritime surveillance.
机译:2D视频监控图像数据中的对象跟踪是许多后续操作的关键需要之一,例如对象分类或活动识别。在彼此交叉的多个对象的场景中,扰乱跟踪过程的分割和合并检测有很高的潜力。在这些情况下,重建对象相关测量以支持跟踪方法,例如卡尔曼或粒子滤波器是有帮助的甚至有必要的。我们提出了一种融合三种不同的检测方法,从他们的特定优势中受益于重建测量,如果识别出分裂或合并情况。由此产生的分割和合并处理显示出比在没有融合的情况下单独使用每个检测方法的更好的结果。此外,跟踪过程快速以每张图像小于1毫秒的计算时间。实验结果如实施例视频场景给出了位于海上监控的浮标上的红外相机的视频场景。

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