The PREVENTION Challenge: How Good Are Humans Predicting Lane Changes?
- URL: http://arxiv.org/abs/2009.05331v2
- Date: Mon, 7 Jun 2021 23:49:54 GMT
- Title: The PREVENTION Challenge: How Good Are Humans Predicting Lane Changes?
- Authors: A. Quintanar, R. Izquierdo, I. Parra, D. Fern\'andez-Llorca, and M. A.
Sotelo
- Abstract summary: In this paper, human's ability to predict lane changes in highway scenarios is analyzed.
Users had to indicate the moment at which they considered that a lane change maneuver was taking place.
Results retrieved have been carefully analyzed and compared to ground truth labels.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: While driving on highways, every driver tries to be aware of the behavior of
surrounding vehicles, including possible emergency braking, evasive maneuvers
trying to avoid obstacles, unexpected lane changes, or other emergencies that
could lead to an accident. In this paper, human's ability to predict lane
changes in highway scenarios is analyzed through the use of video sequences
extracted from the PREVENTION dataset, a database focused on the development of
research on vehicle intention and trajectory prediction. Thus, users had to
indicate the moment at which they considered that a lane change maneuver was
taking place in a target vehicle, subsequently indicating its direction: left
or right. The results retrieved have been carefully analyzed and compared to
ground truth labels, evaluating statistical models to understand whether humans
can actually predict. The study has revealed that most participants are unable
to anticipate lane-change maneuvers, detecting them after they have started.
These results might serve as a baseline for AI's prediction ability evaluation,
grading if those systems can outperform human skills by analyzing hidden cues
that seem unnoticed, improving the detection time, and even anticipating
maneuvers in some cases.
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