We propose a semantic scene understanding system that is suitable for real robotic operations. The system solves different tasks (semantic segmentation and object detections) in an opportunistic and distributed fashion but still allows communication between modules to improve their respective performances. We propose the use of the semantic space to improve specific out-of-the-box object detectors and an update model to take the evidence from different detection into account in the semantic segmentation process. Our proposal is evaluated with the KITTI dataset, on the object detection benchmark and on five different sequences manually annotated for the semantic segmentation task, demonstrating the efficacy of our approach.Cesar Cadena, Anth...
The task of extracting a semantic video object is split into two subproblems, namely, object segmen...
We have seen tremendous progress in the computer vision community across the past decades. While ear...
The objective of this Thesis research is to develop algorithms for temporally consistent semantic se...
International Conference on Digital Image Computing: Techniques and Applications (DICTA), 5 figures,...
In this paper we study the role of context in existing state-of-the-art detection and segmentation a...
In this paper we study the role of context in existing state-of-the-art detection and segmentation a...
Scene understanding is one of the holy grails of computer vision. Despite decades of research on sce...
Abstract. Object detection and semantic segmentation are two strongly correlated tasks, yet typicall...
We present our approach for robotic perception in cluttered scenes that led to winning the recent Am...
Semantic segmentation is one of the most relevant techniques in the object detection field since it ...
What may seem straightforward for the human perception system is still challenging for robots. Autom...
Semantic segmentation, also called scene labeling, refers to the process of assigning a semantic lab...
International audienceReal-time scene understanding has become crucial in many applications such as ...
Indoor scene recognition and semantic information can be useful for social robots. Recently, in the ...
To foster human–robot interaction, autonomous robots need to understand the environment in which the...
The task of extracting a semantic video object is split into two subproblems, namely, object segmen...
We have seen tremendous progress in the computer vision community across the past decades. While ear...
The objective of this Thesis research is to develop algorithms for temporally consistent semantic se...
International Conference on Digital Image Computing: Techniques and Applications (DICTA), 5 figures,...
In this paper we study the role of context in existing state-of-the-art detection and segmentation a...
In this paper we study the role of context in existing state-of-the-art detection and segmentation a...
Scene understanding is one of the holy grails of computer vision. Despite decades of research on sce...
Abstract. Object detection and semantic segmentation are two strongly correlated tasks, yet typicall...
We present our approach for robotic perception in cluttered scenes that led to winning the recent Am...
Semantic segmentation is one of the most relevant techniques in the object detection field since it ...
What may seem straightforward for the human perception system is still challenging for robots. Autom...
Semantic segmentation, also called scene labeling, refers to the process of assigning a semantic lab...
International audienceReal-time scene understanding has become crucial in many applications such as ...
Indoor scene recognition and semantic information can be useful for social robots. Recently, in the ...
To foster human–robot interaction, autonomous robots need to understand the environment in which the...
The task of extracting a semantic video object is split into two subproblems, namely, object segmen...
We have seen tremendous progress in the computer vision community across the past decades. While ear...
The objective of this Thesis research is to develop algorithms for temporally consistent semantic se...