COOOL: Challenge Of Out-Of-Label A Novel Benchmark for Autonomous Driving
- URL: http://arxiv.org/abs/2412.05462v1
- Date: Fri, 06 Dec 2024 23:01:33 GMT
- Title: COOOL: Challenge Of Out-Of-Label A Novel Benchmark for Autonomous Driving
- Authors: Ali K. AlShami, Ananya Kalita, Ryan Rabinowitz, Khang Lam, Rishabh Bezbarua, Terrance Boult, Jugal Kalita,
- Abstract summary: We introduce a novel dataset for hazard detection, offering versatile evaluation metrics applicable across various tasks.
COOOL comprises over 200 collections of dashcam-oriented videos, annotated by human labelers to identify objects of interest.
Due to the dataset's size and data complexity, COOOL serves exclusively as an evaluation benchmark.
- Score: 5.766136300380401
- License:
- Abstract: As the Computer Vision community rapidly develops and advances algorithms for autonomous driving systems, the goal of safer and more efficient autonomous transportation is becoming increasingly achievable. However, it is 2024, and we still do not have fully self-driving cars. One of the remaining core challenges lies in addressing the novelty problem, where self-driving systems still struggle to handle previously unseen situations on the open road. With our Challenge of Out-Of-Label (COOOL) benchmark, we introduce a novel dataset for hazard detection, offering versatile evaluation metrics applicable across various tasks, including novelty-adjacent domains such as Anomaly Detection, Open-Set Recognition, Open Vocabulary, and Domain Adaptation. COOOL comprises over 200 collections of dashcam-oriented videos, annotated by human labelers to identify objects of interest and potential driving hazards. It includes a diverse range of hazards and nuisance objects. Due to the dataset's size and data complexity, COOOL serves exclusively as an evaluation benchmark.
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