Uncertainty modeling is critical in trajectory forecasting systems for both interpretation and safety reasons. To better predict the future trajectories of multiple agents, recent works have introduced interaction modules to capture interactions among agents. This approach leads to correlations among the predicted trajectories. However, the uncertainty brought by such correlations is neglected. To fill this gap, we propose a novel concept, collaborative uncertainty(CU), which models the uncertainty resulting from the interaction module. We build a general CU-based framework to make a prediction model to learn the future trajectory and the corresponding uncertainty. The CU-based framework is integrated as a plugin module to current state-of-the-art (SOTA) systems and deployed in two special cases based on multivariate Gaussian and Laplace distributions. In each case, we conduct extensive experiments on two synthetic datasets and two public, large-scale benchmarks of trajectory forecasting. The results are promising: 1) The results of synthetic datasets show that CU-based framework allows the model to appropriately approximate the ground-truth distribution. 2) The results of trajectory forecasting benchmarks demonstrate that the CU-based framework steadily helps SOTA systems improve their performances. Especially, the proposed CU-based framework helps VectorNet improve by 57cm regarding Final Displacement Error on nuScenes dataset. 3) The visualization results of CU illustrate that the value of CU is highly related to the amount of the interactive information among agents.
翻译:为了更好地预测多种物剂的未来轨迹,最近的工作引入了互动模块,以捕捉各种物剂之间的相互作用。这一方法导致预测轨迹之间的关联。然而,这种关联带来的不确定性被忽视。为了填补这一空白,我们提出了一个新颖的概念,即协作不确定性(CU),用以模拟互动模块产生的不确定性。我们建立了一个基于CU的一般框架,以提供一个预测模型,用以了解未来轨迹和相应的不确定性。基于CU的框架作为插件模块融入了当前最先进的(SOTA)系统,并在基于多变性高斯和拉普特分布的两个特殊案例中部署。在每种情况下,我们对两个合成数据集进行广泛实验,并用两个大规模公共轨迹预测基准来模拟互动模块产生的不确定性。我们建立基于CUB的合成数据集结果表明,基于CUB的框架可以使模型适当接近基于地面的不确定性分布。2 轨迹预报基准结果显示,基于CUB-CUF的模型有助于S-CUF有关S-CFS-CLL的数值,通过拟议的S-CUE-CS-CRismaisl 改进其最终值框架。