Convolutional Neural Networks have been successfully used to steer vehicles using only road-facing cameras. In this work, we investigate the use of Privileged Information for training an end-to-end lane following model. Starting from the prior assumption that such a model should spend a sizeable fraction of its focus on lane markings, we take advantage of lane geometry information available at training time to improve its performance. To this end, we constrain the class of learnable functions by imposing a prior stemming from a lane segmentation task. For each input frame, we compute the set of pixels that most contribute to the prediction of the model using the VisualBackProp method. These pixel-relevance heatmaps are then compared with gr...
Current autonomous driving policies based on deep learning are mostly learned from images of roads w...
Recent research on deep learning has been applied to a diversity of fields. In particular, numerous ...
In recent years, convolutional neural networks (CNNs) have been applied to several autonomous drivin...
peer reviewedConvolutional Neural Networks have been successfully used to steer vehicles using only ...
Lane detection is crucial for vehicle localization which makes it the foundation for automated drivi...
This paper aims to investigate direct imitation learning from human drivers for the task of lane kee...
This paper talks about lane detection. Specifically custom generator of synthetic images, usage duri...
Semantic segmentation based on convolutional neural networks, used in image regional pixel-wise clas...
Lane and road marker segmentation is crucial in autonomous driving, and many related methods have be...
The interest for autonomous driving assistance, and in the end, self-driving cars, has increased vas...
Convolutional network approach is utilized for training an end-to-end model that would let a car dri...
Lane detection is a crucial task in the field of autonomous driving and advanced driver assistance s...
The training of many existing end-to-end steering angle prediction models heavily relies on steering...
Lane detection represents a fundamental task for automated/autonomous vehicles. Current lane detecti...
Autonomous vehicles have numerous advantages compared to standard vehicles. They can reduce fuel con...
Current autonomous driving policies based on deep learning are mostly learned from images of roads w...
Recent research on deep learning has been applied to a diversity of fields. In particular, numerous ...
In recent years, convolutional neural networks (CNNs) have been applied to several autonomous drivin...
peer reviewedConvolutional Neural Networks have been successfully used to steer vehicles using only ...
Lane detection is crucial for vehicle localization which makes it the foundation for automated drivi...
This paper aims to investigate direct imitation learning from human drivers for the task of lane kee...
This paper talks about lane detection. Specifically custom generator of synthetic images, usage duri...
Semantic segmentation based on convolutional neural networks, used in image regional pixel-wise clas...
Lane and road marker segmentation is crucial in autonomous driving, and many related methods have be...
The interest for autonomous driving assistance, and in the end, self-driving cars, has increased vas...
Convolutional network approach is utilized for training an end-to-end model that would let a car dri...
Lane detection is a crucial task in the field of autonomous driving and advanced driver assistance s...
The training of many existing end-to-end steering angle prediction models heavily relies on steering...
Lane detection represents a fundamental task for automated/autonomous vehicles. Current lane detecti...
Autonomous vehicles have numerous advantages compared to standard vehicles. They can reduce fuel con...
Current autonomous driving policies based on deep learning are mostly learned from images of roads w...
Recent research on deep learning has been applied to a diversity of fields. In particular, numerous ...
In recent years, convolutional neural networks (CNNs) have been applied to several autonomous drivin...