Vehicle trajectory prediction in top-view image sequences based on deep
learning method
- URL: http://arxiv.org/abs/2102.01749v1
- Date: Tue, 2 Feb 2021 20:48:19 GMT
- Title: Vehicle trajectory prediction in top-view image sequences based on deep
learning method
- Authors: Zahra Salahshoori Nejad, Hamed Heravi, Ali Rahimpour Jounghani,
Abdollah Shahrezaie, Afshin Ebrahimi
- Abstract summary: Estimating and predicting surrounding vehicles' movement is essential for an automated vehicle and advanced safety systems.
A model with low computational complexity is proposed, which is trained by images taken from the road's aerial image.
The proposed model can predict the vehicle's future path in any freeway only by viewing the images related to the history of the target vehicle's movement and its neighbors.
- Score: 1.181206257787103
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Annually, a large number of injuries and deaths around the world are related
to motor vehicle accidents. This value has recently been reduced to some
extent, via the use of driver-assistance systems. Developing driver-assistance
systems (i.e., automated driving systems) can play a crucial role in reducing
this number. Estimating and predicting surrounding vehicles' movement is
essential for an automated vehicle and advanced safety systems. Moreover,
predicting the trajectory is influenced by numerous factors, such as drivers'
behavior during accidents, history of the vehicle's movement and the
surrounding vehicles, and their position on the traffic scene. The vehicle must
move over a safe path in traffic and react to other drivers' unpredictable
behaviors in the shortest time. Herein, to predict automated vehicles' path, a
model with low computational complexity is proposed, which is trained by images
taken from the road's aerial image. Our method is based on an encoder-decoder
model that utilizes a social tensor to model the effect of the surrounding
vehicles' movement on the target vehicle. The proposed model can predict the
vehicle's future path in any freeway only by viewing the images related to the
history of the target vehicle's movement and its neighbors. Deep learning was
used as a tool for extracting the features of these images. Using the HighD
database, an image dataset of the road's aerial image was created, and the
model's performance was evaluated on this new database. We achieved the RMSE of
1.91 for the next 5 seconds and found that the proposed method had less error
than the best path-prediction methods in previous studies.
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