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arxiv 2104.10133 v1 pith:PQBWS36I submitted 2021-04-20 cs.CV cs.LGcs.RO

Large Scale Interactive Motion Forecasting for Autonomous Driving : The Waymo Open Motion Dataset

classification cs.CV cs.LGcs.RO
keywords motionmodelsdatasetforecastinginteractiveagentjointplanning
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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As autonomous driving systems mature, motion forecasting has received increasing attention as a critical requirement for planning. Of particular importance are interactive situations such as merges, unprotected turns, etc., where predicting individual object motion is not sufficient. Joint predictions of multiple objects are required for effective route planning. There has been a critical need for high-quality motion data that is rich in both interactions and annotation to develop motion planning models. In this work, we introduce the most diverse interactive motion dataset to our knowledge, and provide specific labels for interacting objects suitable for developing joint prediction models. With over 100,000 scenes, each 20 seconds long at 10 Hz, our new dataset contains more than 570 hours of unique data over 1750 km of roadways. It was collected by mining for interesting interactions between vehicles, pedestrians, and cyclists across six cities within the United States. We use a high-accuracy 3D auto-labeling system to generate high quality 3D bounding boxes for each road agent, and provide corresponding high definition 3D maps for each scene. Furthermore, we introduce a new set of metrics that provides a comprehensive evaluation of both single agent and joint agent interaction motion forecasting models. Finally, we provide strong baseline models for individual-agent prediction and joint-prediction. We hope that this new large-scale interactive motion dataset will provide new opportunities for advancing motion forecasting models.

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Cited by 3 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. NuPlan: A closed-loop ML-based planning benchmark for autonomous vehicles

    cs.CV 2021-06 conditional novelty 8.0

    NuPlan is the first closed-loop benchmark for ML-based autonomous vehicle planning, with 1500h multi-city driving data, reactive simulation, and scenario-specific metrics.

  2. Argoverse 2: Next Generation Datasets for Self-Driving Perception and Forecasting

    cs.CV 2023-01 accept novelty 7.0

    Argoverse 2 introduces three new datasets with annotated sensor data, massive lidar collections, and challenging motion forecasting scenarios for autonomous driving research.

  3. PSI: A Benchmark for Human Interpretation and Response in Traffic Interactions

    cs.CV 2021-12 unverdicted novelty 5.0

    PSI is a benchmark dataset for pedestrian intention prediction, driver decision modeling, and reasoning generation in traffic interactions, enriched with human textual explanations.