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An Initial Investigation into Incorporating Human Reports into a Road-Constrained Random Set Tracker

机译:关于将人类报告纳入道路受限随机集跟踪器的初步调查

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Road-constrained tracking of multiple targets poses a challenge for standard tracking algorithms due to possible target/road ambiguities. The random set approach accepts the existence of ambiguity and tracks the probability density associated with each target/road hypothesis. Measurements from multiple sensors are used to update these densities via random set analogues of the Bayesian filtering equations. Reports from humans have the potential to complement and augment data provided by sensors. A challenge with incorporating human reports is that the reports' vagueness and ambiguity lead to many possible interpretations. We propose a method for incorporating human reports into a road-constrained random set tracker (RST). Our proposed approach involves mapping a human report into multiple plausible precise measurements. These precise measurements are used to update the global density in a manner similar to the sensor measurement case. We validated our approach using a simulated road network scenario, consisting of multiple sensors and targets and a simple human observer model. The human observer's reports contained coarse information about the number and relative location of the targets within a field of view. These human reports are mapped to multiple groups of plausible measurements consisting of ranges and bearing angles with large errors. The performance of the RST with and without the human reports is compared. A quantitative metric indicates that the inclusion of the human reports increases the belief of the RST in the correct target/road hypothesis.
机译:由于可能的目标/道路模糊性,对多个目标进行道路约束的跟踪对标准跟踪算法提出了挑战。随机集方法接受模棱两可的存在,并跟踪与每个目标/道路假设相关的概率密度。来自多个传感器的测量值用于通过贝叶斯滤波方程的随机集类似物来更新这些密度。人类的报告具有补充和增强传感器提供的数据的潜力。合并人工报告的一个挑战是报告的模糊性和歧义性导致许多可能的解释。我们提出了一种将人类报告合并到道路受限的随机集跟踪器(RST)中的方法。我们提出的方法涉及将人工报告映射到多个合理的精确度量中。这些精确的测量用于以类似于传感器测量情况的方式更新全局密度。我们使用模拟道路网络场景验证了我们的方法,该场景由多个传感器和目标以及一个简单的人类观察者模型组成。人类观察者的报告包含有关目标在视野内的数量和相对位置的粗略信息。这些人工报告被映射到由范围和方位角组成的,具有较大误差的多组合理测量值。比较了有无人工报告的RST的性能。定量指标表明,包含人类报告会增强RST在正确的目标/道路假设中的信念。

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