International audienceOdometry techniques are key to autonomous robot navigation, since they enable self-localization in the environment. However, designing a robust odometry system is particularly challenging when camera and LiDAR are uninformative or unavailable. In this paper, we leverage recent advances in deep learning and variational inference to correct dynamical and observation models for state-space systems. The methodology trains Gaussian processes on the residual between the original model and the ground truth, and is applied on publicly available datasets for robot navigation based on two wheel encoders, a fiber optic gyro, and an Inertial Measurement Unit (IMU). We also propose to build an Extended Kalman Filter (EKF) on the le...
The last mile of a product delivery accounts for more than half of its total transportation cost. Th...
Information By the extrapolation of movement increments detected by differen-tial encoders, the posi...
International audienceThis paper fosters the idea that deep learning methods can be used to compleme...
International audienceOdometry techniques are key to autonomous robot navigation, since they enable ...
Location awareness is a fundamental need for intelligent systems, such as self-driving vehicles, del...
International audienceThis paper proposes a real-time approach for long-term inertial navigation bas...
Visual Inertial Odometry (VIO) is one of the most established state estimation methods for mobile pl...
For autonomous driving, it is important to obtain precise and high-frequency localization informatio...
This dissertation proposes a novel method called state-dependent sensor measurement models (SDSMMs)....
Visual Inertial Odometry (VIO) is one of the most established state estimation methods for mobile pl...
Extended Kalman filter (EKF) is one of the most widely used Bayesian estimation methods in the optim...
This paper introduces a novel proprioceptive state estimator for legged robots based on a learned di...
Autonomous vehicles require knowing their state in the environment to make a decision and achieve th...
This paper proposes a Learning Kalman Network (LKN) based monocular visual odometry (VO), i.e. LKN-V...
The last mile of a product delivery accounts for more than half of its total transportation cost. Th...
The last mile of a product delivery accounts for more than half of its total transportation cost. Th...
Information By the extrapolation of movement increments detected by differen-tial encoders, the posi...
International audienceThis paper fosters the idea that deep learning methods can be used to compleme...
International audienceOdometry techniques are key to autonomous robot navigation, since they enable ...
Location awareness is a fundamental need for intelligent systems, such as self-driving vehicles, del...
International audienceThis paper proposes a real-time approach for long-term inertial navigation bas...
Visual Inertial Odometry (VIO) is one of the most established state estimation methods for mobile pl...
For autonomous driving, it is important to obtain precise and high-frequency localization informatio...
This dissertation proposes a novel method called state-dependent sensor measurement models (SDSMMs)....
Visual Inertial Odometry (VIO) is one of the most established state estimation methods for mobile pl...
Extended Kalman filter (EKF) is one of the most widely used Bayesian estimation methods in the optim...
This paper introduces a novel proprioceptive state estimator for legged robots based on a learned di...
Autonomous vehicles require knowing their state in the environment to make a decision and achieve th...
This paper proposes a Learning Kalman Network (LKN) based monocular visual odometry (VO), i.e. LKN-V...
The last mile of a product delivery accounts for more than half of its total transportation cost. Th...
The last mile of a product delivery accounts for more than half of its total transportation cost. Th...
Information By the extrapolation of movement increments detected by differen-tial encoders, the posi...
International audienceThis paper fosters the idea that deep learning methods can be used to compleme...