In robotic applications, a key requirement for safe and efficient motion planning is the ability to map obstacle-free space in unknown, cluttered 3D environments. However, commodity-grade RGB-D cameras commonly used for sensing fail to register valid depth values on shiny, glossy, bright, or distant surfaces, leading to missing data in the map. To address this issue, we propose a framework leveraging probabilistic depth completion as an additional input for spatial mapping. We introduce a deep learning architecture providing uncertainty estimates for the depth completion of RGB-D images. Our pipeline exploits the inferred missing depth values and depth uncertainty to complement raw depth images and improve the speed and quality of free spac...
Learning to predict scene depth from RGB inputs is a challenging task both for indoor and outdoor ro...
International audienceSeveral works have focused on Simultaneous Localization and Mapping (SLAM), wh...
Low-cost range sensors represent an interesting class of sensors which are increasingly used for loc...
Safe and efficient path planning is crucial for autonomous mobile robots. A prerequisite for path pl...
We propose a new approach to 3D environment mapping from a mobile robot, using visual information pr...
Visual odometry, the process of tracking the trajectory of a moving camera based on its captured vid...
Visual odometry, the process of tracking the trajectory of a moving camera based on its captured vid...
This work proposes a robust visual odometry method for structured environments that combines point f...
This work proposes a robust visual odometry method for structured environments that combines point f...
This work proposes a robust visual odometry method for structured environments that combines point f...
3D indoor mapping is becoming increasingly critical for a variety of applications such as path plann...
Real-time mapping and navigation is a challenging task for robotics, which has been significantly mi...
A new methodology for 3D scene reconstruction, which can support effective robotic sensing and navig...
Depth images usually contain pixels with invalid measurements. This paper presents a deep learning a...
Simultaneous Localization And Mapping (SLAM) stands as one of the core techniques used by robots for...
Learning to predict scene depth from RGB inputs is a challenging task both for indoor and outdoor ro...
International audienceSeveral works have focused on Simultaneous Localization and Mapping (SLAM), wh...
Low-cost range sensors represent an interesting class of sensors which are increasingly used for loc...
Safe and efficient path planning is crucial for autonomous mobile robots. A prerequisite for path pl...
We propose a new approach to 3D environment mapping from a mobile robot, using visual information pr...
Visual odometry, the process of tracking the trajectory of a moving camera based on its captured vid...
Visual odometry, the process of tracking the trajectory of a moving camera based on its captured vid...
This work proposes a robust visual odometry method for structured environments that combines point f...
This work proposes a robust visual odometry method for structured environments that combines point f...
This work proposes a robust visual odometry method for structured environments that combines point f...
3D indoor mapping is becoming increasingly critical for a variety of applications such as path plann...
Real-time mapping and navigation is a challenging task for robotics, which has been significantly mi...
A new methodology for 3D scene reconstruction, which can support effective robotic sensing and navig...
Depth images usually contain pixels with invalid measurements. This paper presents a deep learning a...
Simultaneous Localization And Mapping (SLAM) stands as one of the core techniques used by robots for...
Learning to predict scene depth from RGB inputs is a challenging task both for indoor and outdoor ro...
International audienceSeveral works have focused on Simultaneous Localization and Mapping (SLAM), wh...
Low-cost range sensors represent an interesting class of sensors which are increasingly used for loc...