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METEOR: A Dense, Heterogeneous, and Unstructured Traffic Dataset with Rare Behaviors

Rohan Chandra, Xijun Wang, Mridul Mahajan, Rahul Kala, Rishitha Palugulla, Chandrababu Naidu nallagopu, Alok Jain, Dinesh Manocha

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Abstract

We present a new traffic dataset, METEOR, which captures traffic patterns and multi-agent driving behaviors in unstructured scenarios. METEOR consists of more than 1000 one-minute videos, over 2 million annotated frames with bounding boxes and GPS trajectories for 16 unique agent categories, and more than 13 million bounding boxes for traffic agents. METEOR is a dataset for rare and interesting, multi- agent driving behaviors that are grouped into traffic violations, atypical interactions, and diverse scenarios. Every video in ME- TEOR is tagged using a diverse range of factors corresponding to weather, time of the day, road conditions, and traffic density. We use METEOR to benchmark perception methods for object detection and multi-agent behavior prediction. Our key finding is that state-of-the-art models for object detection and behavior prediction, which otherwise succeed on existing datasets such as Waymo, fail on the METEOR dataset. METEOR is a step towards developing more sophisticated perception models for dense, heterogeneous, and unstructured scenarios.

Index terms

Big Data in Robotics and Automation Data Sets for Robotic Vision Data Sets for Robot Learning