While most of the recent literature on semantic segmentation has focused on outdoor scenarios, the generation of accurate indoor segmentation maps has been partially under-investigated, although being a relevant task with applications in augmented reality, image retrieval, and personalized robotics. With the goal of increasing the accuracy of semantic segmentation in indoor scenarios, we develop and propose two novel boundary-level training objectives, which foster the generation of accurate boundaries between different semantic classes. In particular, we take inspiration from the Boundary and Active Boundary losses, two recent proposals which deal with the prediction of semantic boundaries, and propose modified geometric distance functio...
As Building Information Modelling (BIM) thrives, geometry becomes no longer sufficient; an ever incr...
We present an end-to-end trainable deep convolutional neural network (DCNN) for semantic segmentatio...
Semantic segmentation models are often affected by illumination changes, and fail to predict correct...
While most of the recent literature on semantic segmentation has focused on outdoor scenarios, the g...
Providing fine-grained and accurate segmentation maps of indoor scenes is a challenging task with re...
Scene understanding is a necessary prerequisite for robots acting autonomously in complex environmen...
The problem of visual localization and navigation in the 3D environment is a key to solving a vast ...
8 pages, 3 figuresInternational audienceThis work addresses multi-class segmentation of indoor scene...
Semantic segmentation, also called scene labeling, refers to the process of assigning a semantic lab...
We focus on the problem of semantic segmentation based on RGB-D data, with emphasis on analyzing clu...
This work addresses multi-class segmentation of indoor scenes with RGB-D in-puts. While this area of...
Abstract. A major limitation of existing models for semantic segmen-tation is the inability to ident...
In this paper, we propose a framework to recover a 3D cuboidal indoor scene with a novel detector-ba...
Abstract. A major limitation of existing models for semantic segmen-tation is the inability to ident...
Huang Y., Oramas Mogrovejo J., Tuytelaars T., Van Gool L., ''Do motion boundaries improve semantic s...
As Building Information Modelling (BIM) thrives, geometry becomes no longer sufficient; an ever incr...
We present an end-to-end trainable deep convolutional neural network (DCNN) for semantic segmentatio...
Semantic segmentation models are often affected by illumination changes, and fail to predict correct...
While most of the recent literature on semantic segmentation has focused on outdoor scenarios, the g...
Providing fine-grained and accurate segmentation maps of indoor scenes is a challenging task with re...
Scene understanding is a necessary prerequisite for robots acting autonomously in complex environmen...
The problem of visual localization and navigation in the 3D environment is a key to solving a vast ...
8 pages, 3 figuresInternational audienceThis work addresses multi-class segmentation of indoor scene...
Semantic segmentation, also called scene labeling, refers to the process of assigning a semantic lab...
We focus on the problem of semantic segmentation based on RGB-D data, with emphasis on analyzing clu...
This work addresses multi-class segmentation of indoor scenes with RGB-D in-puts. While this area of...
Abstract. A major limitation of existing models for semantic segmen-tation is the inability to ident...
In this paper, we propose a framework to recover a 3D cuboidal indoor scene with a novel detector-ba...
Abstract. A major limitation of existing models for semantic segmen-tation is the inability to ident...
Huang Y., Oramas Mogrovejo J., Tuytelaars T., Van Gool L., ''Do motion boundaries improve semantic s...
As Building Information Modelling (BIM) thrives, geometry becomes no longer sufficient; an ever incr...
We present an end-to-end trainable deep convolutional neural network (DCNN) for semantic segmentatio...
Semantic segmentation models are often affected by illumination changes, and fail to predict correct...