特征级融合的自由形式的目标跟踪使用激光扫描仪和视频

N. Kaempchen, M. Buehler, K. Dietmayer
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引用次数: 76

摘要

提出了一种结合多层激光扫描仪和单目视频数据的可扩展特征级传感器融合体系结构。该方法旨在通过结合低级测量特征来最大化协同效应,同时尽可能保持融合架构的通用性。在真实交通场景中发现的各种物体形状的几何建模的新概念,包括自由形式模型,提高了目标跟踪的精度。与文献中已知的鲁棒算法相比,来自真实传感器数据的结果证明了新算法的性能。
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Feature-level fusion for free-form object tracking using laserscanner and video
A scalable feature-level sensor fusion architecture combining the data of a multi-layer laserscanner and a monocular video has been developed. The approach aims at a maximization of synergetic effects by combining low-level measurement features and at the same time trying to keep the fusion architecture as general as possible. A new concept for the geometric modeling of diverse object shapes found in real traffic scenes, including free form models, enhances the precision of the object tracking. Results from real sensor data demonstrate the performance of the new algorithms compared to robust algorithms known from the literature.
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