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High Level Sensor Data Fusion Approaches For Object Recognition In Road Environment

机译:用于道路环境中目标识别的高级传感器数据融合方法

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Application of high level fusion approaches demonstrate a sequence of significant advantages in multi sensor data fusion and automotive safety fusion systems are no exception to this. High level fusion can be applied to automotive sensor networks with complementary or/and redundant field of views. The advantage of this approach is that it ensures system modularity and allows benchmarking, as it does not permit feedbacks and loops inside the processing. In this paper two specific high level data fusion approaches are described including a brief architectural and algorithmic presentation. These approaches differ mainly in their data association part: (a) track level fusion approach solves it with the point to point association with emphasis on object continuity and multidimensional assignment, and (b) grid based fusion approach that proposes a generic way to model the environment and to perform sensor data fusion. The test case for these approaches is a multi sensor equipped PReVENT/ProFusion2 truck demonstrator vehicle.
机译:高级融合方法的应用证明了在多传感器数据融合中的一系列显着优势,而汽车安全融合系统也不例外。高级融合可以应用于具有互补或/和冗余视场的汽车传感器网络。这种方法的优势在于,它确保了系统的模块化并允许进行基准测试,因为它不允许处理内部出现反馈和循环。在本文中,描述了两种特定的高级数据融合方法,包括简要的体系结构和算法表示。这些方法的主要区别在于它们的数据关联部分:(a)轨道级融合方法通过点对点关联来解决它,重点是对象连续性和多维分配,(b)基于网格的融合方法提出了一种通用的建模方法环境并执行传感器数据融合。这些方法的测试案例是配备多传感器的PReVENT / ProFusion2卡车演示车。

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