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FG-GMM-based Interactive Behavior Estimation for Autonomous Driving Vehicles in Ramp Merging Control *

机译:基于FG-GMM的匝道合并控制中自动驾驶车辆的交互行为估计*

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Interactive behavior is important for autonomous driving vehicles, especially for scenarios like ramp merging which require significant social interaction between autonomous driving vehicles and human-driven cars. This paper enhances our previous Probabilistic Graphical Model (PGM) merging control model for the interactive behavior of autonomous driving vehicles. To better estimate the interactive behavior for autonomous driving cars, a Factor Graph (FG) is used to describe the dependency among observations and estimate other cars’ intentions. Real trajectories are used to approximate the model instead of human-designed models or cost functions. Forgetting factors and a Gaussian Mixture Model (GMM) are also applied in the intention estimation process for stabilization, interpolation and smoothness. The advantage of the factor graph is that the relationship between its nodes can be described by self-defined functions, instead of probabilistic relationships as in PGM, giving more flexibility. Continuity of GMM also provides higher accuracy than the previous discrete speed transition model. The proposed method enhances the overall performance of intention estimation, in terms of collision rate and average distance between cars after merging, which means it is safer and more efficient.
机译:交互行为对于自动驾驶汽车非常重要,特别是对于坡道合并等需要自动驾驶汽车与人为驾驶汽车进行大量社交互动的场景而言。本文增强了我们先前针对自动驾驶车辆交互行为的概率图形模型(PGM)合并控制模型。为了更好地估计自动驾驶汽车的交互行为,使用因子图(FG)来描述观察结果之间的依存关系并估计其他汽车的意图。实际轨迹用于近似模型,而不是人工设计的模型或成本函数。遗忘因子和高斯混合模型(GMM)也被用于意图估计过程中,以实现稳定,内插和平滑。因子图的优点是可以通过自定义函数描述其节点之间的关系,而不是像PGM中那样通过概率关系来描述,从而提供了更大的灵活性。 GMM的连续性也比以前的离散速度转换模型提供更高的精度。提出的方法在碰撞率和合并后汽车之间的平均距离方面提高了意图估计的整体性能,这意味着它更安全,更有效。

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