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On-road multi-vehicle tracking algorithm based on an improved particle filter

机译:基于改进粒子滤波的道路多车跟踪算法

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Forward collision avoidance systems have shown to be a particularly effective crash-avoidance technology. Multi-vehicle tracking capabilities play an important role in the real-world performance and effectiveness of such systems. In order to effectively and accurately track vehicles in a moving platform and in complicated road environments, the authors proposed a multi-vehicle tracking algorithm based on an improved particle filter. First, the authors used a vehicle disappearance detection and handling mechanism based on the normalised area of the minimum circumscribed rectangle of particle distributions. This mechanism is used to verify whether a new target is a vehicle and can also handle the vehicle exit during the tracking phase. Next, an improved particle filter-based framework, which includes a new process dynamical distribution, allowed for multi-vehicle tracking capabilities was used for vehicle tracking. Finally, an effective occlusion detection and handling mechanism was used to address the significant occlusion between vehicles. The combination of these added improvements in the algorithm results in the enhancement of the vehicle tracking rate in a variety of challenging conditions. Experimental tests carried out from different datasets show excellent performance in multi-vehicle tracking, in terms of accuracy in complex traffic situations and under different lighting conditions.
机译:前避撞系统已被证明是一种特别有效的避撞技术。多车辆跟踪功能在此类系统的实际性能和有效性中起着重要作用。为了有效,准确地跟踪运动平台和复杂道路环境中的车辆,作者提出了一种基于改进粒子滤波的多车辆跟踪算法。首先,作者基于粒子分布的最小外接矩形的归一化面积,使用了车辆消失检测和处理机制。该机制用于验证新目标是否为车辆,并且还可以在跟踪阶段处理车辆出口。接下来,基于改进的基于粒子过滤器的框架(包括新的过程动态分布)可用于多车辆跟踪功能,用于车辆跟踪。最后,有效的遮挡检测和处理机制用于解决车辆之间的明显遮挡。这些在算法中增加的改进的组合导致在各种挑战性条件下车辆跟踪率的提高。从不同的数据集进行的实验测试显示,在复杂交通情况下以及在不同照明条件下的准确性方面,多车跟踪具有出色的性能。

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