面向稳健行人跟踪的高阶传感器融合遮挡处理与轨迹管理方法

Seong-Geun Shin, Dae-Ryong Ahn, Hyuck-Kee Lee
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引用次数: 8

摘要

在目标跟踪领域,目标间的遮挡情况是影响跟踪算法性能的重要因素。本文提出了一种跟踪层的跟踪管理方法,以解决被检测目标之间的遮挡导致的跟踪不连续问题。这项工作是通过预测被检测物体之间的遮挡情况,并基于使用激光雷达和单目相机传感器的高级传感器融合方法中的轨道到轨道融合方法来管理轨道状态。根据被检测物体的宽度、长度、位置和方位角进行遮挡预测。轨迹管理系统从轨迹遮挡预测的结果,到轨迹的初始化、创建、确认、删除,对轨迹的遮挡状态进行管理。本文提出的方法在行人遮挡情况下得到了验证,实验结果显示了在行人遮挡情况下的预期性能。
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Occlusion handling and track management method of high-level sensor fusion for robust pedestrian tracking
In object tracking field, occlusion situations between objects are important factors that degrade the performance of tracking algorithms. In this paper, we present a track management method in the tracking level to solve the discontinuous tracking problem caused by occlusions between detected objects. This work is performed by predicting the occlusion situation between detected objects and managing the state of tracks based on an approach to track-to-track fusion in a high-level sensor fusion approach using a lidar and a monocular camera sensor. The occlusion prediction is computed by taking into account the width, length, position and azimuth angle of the detected objects. The track management system manages the occlusion state of the track from the result of occlusion prediction as well as the initialization, creation, confirmation and deletion of the tracks. The proposed approach has been verified in the occlusion situation between pedestrians, and our experimental results showed the intended performance in the occlusion situation between pedestrians.
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