We propose a novel approach to semantic scene labeling in urban scenarios, which aims to combine excellent recognition performance with highest levels of computational efficiency. To that end, we exploit efficient tree-structured models on two levels: pixels and superpixels. At the pixel level, we propose to unify pixel labeling and the extraction of semantic texton features within a single architecture, so-called encode-and-classify trees. At the superpixel level, we put forward a multi-cue segmentation tree that groups superpixels at multiple granularities. Through learning, the segmentation tree effectively exploits and aggregates a wide range of complementary information present in the data. A tree-structured CRF is then used ...
In this work we propose a hierarchical approach for labeling semantic objects and regions in scenes....
Abstract Semantic segmentation of an image scene provides semantic information of image regions whil...
Riemenschneider H., Bodis-Szomor A., Weissenberg J., Van Gool L., ''Learning where to classify in mu...
We propose a novel approach to semantic scene labeling in urban scenarios, which aims to combine exc...
9 pages, 4 figuresInternational audienceScene parsing, or semantic segmentation, consists in labelin...
Many scene understanding tasks are formulated as a labelling problem that tries to assign a label to...
In this paper we propose an approach to multi-class semantic segmentation of urban areas in high-res...
Many scene understanding tasks are formulated as a labelling problem that tries to assign a label to...
In this paper we propose an approach to multi-class semantic segmentation of urban areas in high-res...
Scene parsing, or semantic segmentation, consists in la-beling each pixel in an image with the categ...
International audienceScene labeling consists in labeling each pixel in an image with the category o...
We propose a convolutional network with hierarchical classifiers for per-pixel semantic segmentation...
This paper proposes a novel image parsing framework to solve the semantic pixel labeling problem fro...
Training convolutional networks for semantic segmentation requires per-pixel ground truth labels, wh...
This paper introduces a multi-level classification framework for the semantic annotation of urban ma...
In this work we propose a hierarchical approach for labeling semantic objects and regions in scenes....
Abstract Semantic segmentation of an image scene provides semantic information of image regions whil...
Riemenschneider H., Bodis-Szomor A., Weissenberg J., Van Gool L., ''Learning where to classify in mu...
We propose a novel approach to semantic scene labeling in urban scenarios, which aims to combine exc...
9 pages, 4 figuresInternational audienceScene parsing, or semantic segmentation, consists in labelin...
Many scene understanding tasks are formulated as a labelling problem that tries to assign a label to...
In this paper we propose an approach to multi-class semantic segmentation of urban areas in high-res...
Many scene understanding tasks are formulated as a labelling problem that tries to assign a label to...
In this paper we propose an approach to multi-class semantic segmentation of urban areas in high-res...
Scene parsing, or semantic segmentation, consists in la-beling each pixel in an image with the categ...
International audienceScene labeling consists in labeling each pixel in an image with the category o...
We propose a convolutional network with hierarchical classifiers for per-pixel semantic segmentation...
This paper proposes a novel image parsing framework to solve the semantic pixel labeling problem fro...
Training convolutional networks for semantic segmentation requires per-pixel ground truth labels, wh...
This paper introduces a multi-level classification framework for the semantic annotation of urban ma...
In this work we propose a hierarchical approach for labeling semantic objects and regions in scenes....
Abstract Semantic segmentation of an image scene provides semantic information of image regions whil...
Riemenschneider H., Bodis-Szomor A., Weissenberg J., Van Gool L., ''Learning where to classify in mu...