For safe and reliable driving, it is essential that an autonomous vehicle can accurately perceive the surrounding environment. Modern sensor technologies used for perception, such as LiDAR and RADAR, deliver a large set of 3D measurement points known as a point cloud. There is a huge need to interpret the point cloud data to detect other road users, such as vehicles and pedestrians. Many research studies have proposed image-based models for 2D object detection. This thesis takes it a step further and aims to develop a LiDAR-based 3D object detection model that operates in real-time, with emphasis on autonomous driving scenarios. We propose 3D YOLO, an extension of YOLO (You Only Look Once), which is one of the fastest state-of-the-art 2D ob...
Environment perception within autonomous driving aims to provide a comprehensive and accurate model ...
This paper deals with human detection in the LiDAR data using the YOLO object detection neural netwo...
International audienceAccurate detection of objects in 3D point clouds is a central problem for auto...
For safe and reliable driving, it is essential that an autonomous vehicle can accurately perceive th...
Perceiving the environment is a crucial aspect of autonomous vehicles. To plan the route, the autono...
The rapid development of Autonomous Vehicles (AVs) increases the requirement for the accurate predic...
3D object detection systems based on deep neural network become a core component of self-driving veh...
Object detection is one of the most important research topics in autonomous vehicles. The detection ...
3D object detection is vital for autonomous driving. However, to train a 3D detector often requires ...
Recently, self-driving cars became a big challenge in the automobile industry. After the DARPA chall...
Perception for autonomous drive systems is the most essential function for safe and reliable driving...
Autonomous vehicles are becoming central for the future of mobility, supported by advances in deep l...
International audienceAccurate detection of objects in 3D point clouds is a central problem for auto...
3D object detection is a critical perception task in self-driving cars to ensure safetyduring operat...
3D object detection is the task of detecting the full 3D pose of objects relative to an autonomous p...
Environment perception within autonomous driving aims to provide a comprehensive and accurate model ...
This paper deals with human detection in the LiDAR data using the YOLO object detection neural netwo...
International audienceAccurate detection of objects in 3D point clouds is a central problem for auto...
For safe and reliable driving, it is essential that an autonomous vehicle can accurately perceive th...
Perceiving the environment is a crucial aspect of autonomous vehicles. To plan the route, the autono...
The rapid development of Autonomous Vehicles (AVs) increases the requirement for the accurate predic...
3D object detection systems based on deep neural network become a core component of self-driving veh...
Object detection is one of the most important research topics in autonomous vehicles. The detection ...
3D object detection is vital for autonomous driving. However, to train a 3D detector often requires ...
Recently, self-driving cars became a big challenge in the automobile industry. After the DARPA chall...
Perception for autonomous drive systems is the most essential function for safe and reliable driving...
Autonomous vehicles are becoming central for the future of mobility, supported by advances in deep l...
International audienceAccurate detection of objects in 3D point clouds is a central problem for auto...
3D object detection is a critical perception task in self-driving cars to ensure safetyduring operat...
3D object detection is the task of detecting the full 3D pose of objects relative to an autonomous p...
Environment perception within autonomous driving aims to provide a comprehensive and accurate model ...
This paper deals with human detection in the LiDAR data using the YOLO object detection neural netwo...
International audienceAccurate detection of objects in 3D point clouds is a central problem for auto...