Semantic Segmentation is essential to make self-driving vehicles autonomous, enabling them to understand their surroundings by assigning individual pixels to known categories. However, it operates on sensible data collected from the users' cars; thus, protecting the clients' privacy becomes a primary concern. For similar reasons, Federated Learning has been recently introduced as a new machine learning paradigm aiming to learn a global model while preserving privacy and leveraging data on millions of remote devices. Despite several efforts on this topic, no work has explicitly addressed the challenges of federated learning in semantic segmentation for driving so far. To fill this gap, we propose FedDrive, a new benchmark consisting of three...
Vehicular networks enable vehicles support real-time vehicular applications through training data. D...
This paper describes a framework for learning Automated Vehicles (AVs) driver models via knowledge s...
There are various techniques to approach learning in autonomous driving; however, all of them suffer...
Semantic Segmentation is essential to make self-driving vehicles autonomous, enabling them to unders...
In recent years, with the development of computation capability in devices, companies are eager to i...
Semantic segmentation is paramount for autonomous vehicles to have a deeper understanding of the sur...
Machine learning (ML) is widely used for key tasks in Connected and Automated Vehicles (CAV), includ...
Intelligent systems require the capability to perceive and interact with the surrounding environment...
Deep learning is a key approach for the environment perception function of Cooperative Intelligent T...
Semantic segmentation is key in autonomous driving. Using deep visual learning architectures is not ...
Despite the strong interests in creating data economy, automotive industries are creating data silos...
International audienceToday, Artificial Intelligence is still facing a major challenge which is the ...
Federated learning has emerged as a promising paradigm for privacy-preserving collaboration among di...
Semantic segmentation is paramount for autonomous vehicles to have a deeper understanding of the sur...
For autonomous vehicles and mobile robots to safely operate in the real world, i.e., the wild, scene...
Vehicular networks enable vehicles support real-time vehicular applications through training data. D...
This paper describes a framework for learning Automated Vehicles (AVs) driver models via knowledge s...
There are various techniques to approach learning in autonomous driving; however, all of them suffer...
Semantic Segmentation is essential to make self-driving vehicles autonomous, enabling them to unders...
In recent years, with the development of computation capability in devices, companies are eager to i...
Semantic segmentation is paramount for autonomous vehicles to have a deeper understanding of the sur...
Machine learning (ML) is widely used for key tasks in Connected and Automated Vehicles (CAV), includ...
Intelligent systems require the capability to perceive and interact with the surrounding environment...
Deep learning is a key approach for the environment perception function of Cooperative Intelligent T...
Semantic segmentation is key in autonomous driving. Using deep visual learning architectures is not ...
Despite the strong interests in creating data economy, automotive industries are creating data silos...
International audienceToday, Artificial Intelligence is still facing a major challenge which is the ...
Federated learning has emerged as a promising paradigm for privacy-preserving collaboration among di...
Semantic segmentation is paramount for autonomous vehicles to have a deeper understanding of the sur...
For autonomous vehicles and mobile robots to safely operate in the real world, i.e., the wild, scene...
Vehicular networks enable vehicles support real-time vehicular applications through training data. D...
This paper describes a framework for learning Automated Vehicles (AVs) driver models via knowledge s...
There are various techniques to approach learning in autonomous driving; however, all of them suffer...