This paper talks about lane detection. Specifically custom generator of synthetic images, usage during training of neural networks, testing on convolutional neural network (CNN) UNet model and possibilities of extension of this model to SALMnet (Structure-Aware Lane Marking Detection Network) via addding SGCA module (semantic-guided channel attention) and PDC module (pyramid deformable convolution). Training results from synthetic datasets show very accurate results, reaching around 95\,\% in accuracy (even 99\,\% for easier images). Trainings with real datasets show lower accuracy, depending on the difficulty of the dataset itself. TuSimple has easier and clearer images and reaches about 62\,\%. CuLane is much more complex and results show...
In the last few years, the amount of research in the field of self-driving cars has been immense wit...
Lane detection is an important and challenging part of autonomous driver assistance systems and othe...
Detecting lane markers reliably and accurately is a crucial yet challenging task. While modern deep...
Tato práce se zabývá detekcí jizdních pruhů. Konkrétně vlastního generátoru syntetických dat, jeho v...
This thesis is dedicated to the issue of driving lane borders recognition in frames of an onboard ca...
Studies on lane detection Lane identification methods, integration, and evaluation strategies square...
Lane detection represents a fundamental task for automated/autonomous vehicles. Current lane detecti...
Lane detection is a crucial task in the field of autonomous driving and advanced driver assistance s...
Semantic segmentation based on convolutional neural networks, used in image regional pixel-wise clas...
Lane detection is a crucial element for advanced driver assistance systems (ADAS) and fully autonom...
In order to improve vehicle driving safety in a low-cost manner, we used a monocular camera to study...
Lane detection is crucial for vehicle localization which makes it the foundation for automated drivi...
Numerous groups have applied a variety of deep learning techniques to computer vision problems in hi...
Lane marking recognition is one of the most crucial features for automotive vehicles as it is one of...
Lane detection plays a vital role in making the idea of the autonomous car a reality. Traditional la...
In the last few years, the amount of research in the field of self-driving cars has been immense wit...
Lane detection is an important and challenging part of autonomous driver assistance systems and othe...
Detecting lane markers reliably and accurately is a crucial yet challenging task. While modern deep...
Tato práce se zabývá detekcí jizdních pruhů. Konkrétně vlastního generátoru syntetických dat, jeho v...
This thesis is dedicated to the issue of driving lane borders recognition in frames of an onboard ca...
Studies on lane detection Lane identification methods, integration, and evaluation strategies square...
Lane detection represents a fundamental task for automated/autonomous vehicles. Current lane detecti...
Lane detection is a crucial task in the field of autonomous driving and advanced driver assistance s...
Semantic segmentation based on convolutional neural networks, used in image regional pixel-wise clas...
Lane detection is a crucial element for advanced driver assistance systems (ADAS) and fully autonom...
In order to improve vehicle driving safety in a low-cost manner, we used a monocular camera to study...
Lane detection is crucial for vehicle localization which makes it the foundation for automated drivi...
Numerous groups have applied a variety of deep learning techniques to computer vision problems in hi...
Lane marking recognition is one of the most crucial features for automotive vehicles as it is one of...
Lane detection plays a vital role in making the idea of the autonomous car a reality. Traditional la...
In the last few years, the amount of research in the field of self-driving cars has been immense wit...
Lane detection is an important and challenging part of autonomous driver assistance systems and othe...
Detecting lane markers reliably and accurately is a crucial yet challenging task. While modern deep...