2024
DOI: 10.3390/jimaging10120321
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DAT: Deep Learning-Based Acceleration-Aware Trajectory Forecasting

Ali Asghar Sharifi,
Ali Zoljodi,
Masoud Daneshtalab

Abstract: As the demand for autonomous driving (AD) systems has increased, the enhancement of their safety has become critically important. A fundamental capability of AD systems is object detection and trajectory forecasting of vehicles and pedestrians around the ego-vehicle, which is essential for preventing potential collisions. This study introduces the Deep learning-based Acceleration-aware Trajectory forecasting (DAT) model, a deep learning-based approach for object detection and trajectory forecasting, utilizing … Show more

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