Real-time road detection implementation of UNet architecture for autonomous driving

2022 IEEE 14th Image, Video, and Multidimensional Signal Processing Workshop (IVMSP)(2022)

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摘要
This paper presents a real-time implementation workflow of neural networks for autonomous driving tasks. The UNet structure is chosen for a road segmentation task, providing good performance for low complexity. The model is trained and validated using two datasets, KITTI (validation of the model with respect to state of art) and a local highway dataset (UHA dataset), collected by the laboratory research team. The performance of the model for road detection is evaluated using the F1 score metric. After a simulation validation on both sets, the model is integrated into a real vehicle through the RTMaps platform. The application is tested in real-time conditions, around the city, under various weather and light. Finally, the proposed model proves low complexity and good performance for real-time road detection tasks.
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关键词
UNet architecture,neural networks,autonomous driving,road segmentation,local highway dataset,UHA dataset,F1 score metric,real-time road detection,KITTI dataset,RTMaps
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