Reliable Multimodal Trajectory Prediction via Error Aligned Uncertainty Optimization

12/09/2022
by   Neslihan Köse, et al.
0

Reliable uncertainty quantification in deep neural networks is very crucial in safety-critical applications such as automated driving for trustworthy and informed decision-making. Assessing the quality of uncertainty estimates is challenging as ground truth for uncertainty estimates is not available. Ideally, in a well-calibrated model, uncertainty estimates should perfectly correlate with model error. We propose a novel error aligned uncertainty optimization method and introduce a trainable loss function to guide the models to yield good quality uncertainty estimates aligning with the model error. Our approach targets continuous structured prediction and regression tasks, and is evaluated on multiple datasets including a large-scale vehicle motion prediction task involving real-world distributional shifts. We demonstrate that our method improves average displacement error by 1.69 uncertainty correlation with model error by 17.22 Pearson correlation coefficient on two state-of-the-art baselines.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset