CVROApr 12, 2022

Bootstrap Motion Forecasting With Self-Consistent Constraints

arXiv:2204.05859v427 citationsh-index: 43
Originality Incremental advance
AI Analysis

This work addresses trajectory prediction for autonomous vehicles, showing incremental improvements through novel regularization and supervision techniques.

The paper tackles motion forecasting for vehicles by proposing a framework with dual consistency constraints and self-ensembling for multi-modality supervision, resulting in significant performance improvements on Argoverse and Waymo Open Motion benchmarks.

We present a novel framework to bootstrap Motion forecasting with Self-consistent Constraints (MISC). The motion forecasting task aims at predicting future trajectories of vehicles by incorporating spatial and temporal information from the past. A key design of MISC is the proposed Dual Consistency Constraints that regularize the predicted trajectories under spatial and temporal perturbation during training. Also, to model the multi-modality in motion forecasting, we design a novel self-ensembling scheme to obtain accurate teacher targets to enforce the self-constraints with multi-modality supervision. With explicit constraints from multiple teacher targets, we observe a clear improvement in the prediction performance. Extensive experiments on the Argoverse motion forecasting benchmark and Waymo Open Motion dataset show that MISC significantly outperforms the state-of-the-art methods. As the proposed strategies are general and can be easily incorporated into other motion forecasting approaches, we also demonstrate that our proposed scheme consistently improves the prediction performance of several existing methods.

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