METEOR: A Massive Dense & Heterogeneous Behavior Dataset for Autonomous
Driving
- URL: http://arxiv.org/abs/2109.07648v1
- Date: Thu, 16 Sep 2021 01:01:55 GMT
- Title: METEOR: A Massive Dense & Heterogeneous Behavior Dataset for Autonomous
Driving
- Authors: Rohan Chandra, Mridul Mahajan, Rahul Kala, Rishitha Palugulla,
Chandrababu Naidu, Alok Jain, and Dinesh Manocha
- Abstract summary: We present a new and complex traffic dataset, METEOR, which captures traffic patterns in unstructured scenarios in India.
METEOR consists of more than 1000 one-minute video clips, over 2 million annotated frames with ego-vehicle trajectories, and more than 13 million bounding boxes for surrounding vehicles or traffic agents.
We use our novel dataset to evaluate the performance of object detection and behavior prediction algorithms.
- Score: 42.69638782267657
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We present a new and complex traffic dataset, METEOR, which captures traffic
patterns in unstructured scenarios in India. METEOR consists of more than 1000
one-minute video clips, over 2 million annotated frames with ego-vehicle
trajectories, and more than 13 million bounding boxes for surrounding vehicles
or traffic agents. METEOR is a unique dataset in terms of capturing the
heterogeneity of microscopic and macroscopic traffic characteristics.
Furthermore, we provide annotations for rare and interesting driving behaviors
such as cut-ins, yielding, overtaking, overspeeding, zigzagging, sudden lane
changing, running traffic signals, driving in the wrong lanes, taking wrong
turns, lack of right-of-way rules at intersections, etc. We also present
diverse traffic scenarios corresponding to rainy weather, nighttime driving,
driving in rural areas with unmarked roads, and high-density traffic scenarios.
We use our novel dataset to evaluate the performance of object detection and
behavior prediction algorithms. We show that state-of-the-art object detectors
fail in these challenging conditions and also propose a new benchmark test:
action-behavior prediction with a baseline mAP score of 70.74.
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