To foster human–robot interaction, autonomous robots need to understand the environment in which they operate. In this context, one of the main challenges is semantic segmentation, together with the recognition of important objects, which can aid robots during exploration, as well as when planning new actions and interacting with the environment. In this study, we extend a multi-view semantic segmentation system based on 3D Entangled Forests (3DEF) by integrating and refining two object detectors, Mask R-CNN and You Only Look Once (YOLO), with Bayesian fusion and iterated graph cuts. The new system takes the best of its components, successfully exploiting both 2D and 3D data. Our experiments show that our approach is competitive with the st...
Although much progress has been made in the field of robotic mapping, many challenges remain includi...
The growing importance of 3d scene understanding and interpretation is inher-ently connected to the ...
Most real-time SLAM systems can only achieve semi-dense mapping, and the robot lacks specific knowle...
This work focus on semantic segmentation over 3D data,firstly by research and study of the state of ...
Semantic segmentation, also called scene labeling, refers to the process of assigning a semantic lab...
Semantic segmentation is a crucial task in emerging robotic applications like autonomous driving and...
What may seem straightforward for the human perception system is still challenging for robots. Autom...
We present our approach for robotic perception in cluttered scenes that led to winning the recent Am...
Mobile robotic systems capable of autonomous navigation in non-structured environments depend on the...
We propose a semantic scene understanding system that is suitable for real robotic operations. The s...
Deployment of deep learning models in robotics as sensory information extractors can be a daunting t...
Allocentric semantic 3D maps are highly useful for a variety of human–machine interaction related ta...
Unmanned ground vehicles (UGVs) and other autonomous systems rely on sensors to understand their env...
Efficient models for semantic segmentation, in terms of memory, speed, and computation, could boost ...
In order to operate in human environments, a robot's semantic perception has to overcome open-world ...
Although much progress has been made in the field of robotic mapping, many challenges remain includi...
The growing importance of 3d scene understanding and interpretation is inher-ently connected to the ...
Most real-time SLAM systems can only achieve semi-dense mapping, and the robot lacks specific knowle...
This work focus on semantic segmentation over 3D data,firstly by research and study of the state of ...
Semantic segmentation, also called scene labeling, refers to the process of assigning a semantic lab...
Semantic segmentation is a crucial task in emerging robotic applications like autonomous driving and...
What may seem straightforward for the human perception system is still challenging for robots. Autom...
We present our approach for robotic perception in cluttered scenes that led to winning the recent Am...
Mobile robotic systems capable of autonomous navigation in non-structured environments depend on the...
We propose a semantic scene understanding system that is suitable for real robotic operations. The s...
Deployment of deep learning models in robotics as sensory information extractors can be a daunting t...
Allocentric semantic 3D maps are highly useful for a variety of human–machine interaction related ta...
Unmanned ground vehicles (UGVs) and other autonomous systems rely on sensors to understand their env...
Efficient models for semantic segmentation, in terms of memory, speed, and computation, could boost ...
In order to operate in human environments, a robot's semantic perception has to overcome open-world ...
Although much progress has been made in the field of robotic mapping, many challenges remain includi...
The growing importance of 3d scene understanding and interpretation is inher-ently connected to the ...
Most real-time SLAM systems can only achieve semi-dense mapping, and the robot lacks specific knowle...