Scene parsing is an important problem in the field of computer vision. Though many existing scene parsing approaches have obtained encouraging results, they fail to overcome within-category inconsistency and intercategory similarity of superpixels. To reduce the aforementioned problem, a novel method is proposed in this paper. The proposed approach consists of three main steps: 1) posterior category probability density function (PDF) is learned by an efficient low-rank representation classifier (LRRC); 2) prior contextual constraint PDF on the map of pixel categories is learned by Markov random fields; and 3) final parsing results are yielded up to the maximum a posterior process based on the two learned PDFs. In this case, the nature of be...
14 pagesInternational audienceIn the past few years, significant progresses have been made in scene ...
<p>Scene perception is a fundamental aspect of vision. Humans are capable of analyzing behaviorally-...
In this paper we present a Bayesian framework for parsing images into their constituent visual patte...
Scene parsing aims to recognize the object category of every pixel in scene images, and it plays a c...
In computer vision, scene parsing is the problem of labelling every pixel in an image or video with ...
In this paper, we present a simple and effective approach to the image parsing (or labeling image re...
We present a generic and robust approach for scene categorization. A complex scene is described by p...
We present a generic and robust approach for scene categorization. A complex scene is described by p...
<p> Scene parsing is an important task in computer vision and many issues still need to be solved. ...
This paper presents a scalable scene parsing algorithm based on image retrieval and superpixel match...
<p> Effective parsing of video through the spatial and temporal domains is vital to many computer v...
Scene parsing, or semantic segmentation, consists in la-beling each pixel in an image with the categ...
Abstract. Scene parsing is a technique that consist on giving a label to all pixels in an image acco...
9 pages, 4 figuresInternational audienceScene parsing, or semantic segmentation, consists in labelin...
This paper proposes a non-parametric approach to scene parsing inspired by the work of Tighe and Laz...
14 pagesInternational audienceIn the past few years, significant progresses have been made in scene ...
<p>Scene perception is a fundamental aspect of vision. Humans are capable of analyzing behaviorally-...
In this paper we present a Bayesian framework for parsing images into their constituent visual patte...
Scene parsing aims to recognize the object category of every pixel in scene images, and it plays a c...
In computer vision, scene parsing is the problem of labelling every pixel in an image or video with ...
In this paper, we present a simple and effective approach to the image parsing (or labeling image re...
We present a generic and robust approach for scene categorization. A complex scene is described by p...
We present a generic and robust approach for scene categorization. A complex scene is described by p...
<p> Scene parsing is an important task in computer vision and many issues still need to be solved. ...
This paper presents a scalable scene parsing algorithm based on image retrieval and superpixel match...
<p> Effective parsing of video through the spatial and temporal domains is vital to many computer v...
Scene parsing, or semantic segmentation, consists in la-beling each pixel in an image with the categ...
Abstract. Scene parsing is a technique that consist on giving a label to all pixels in an image acco...
9 pages, 4 figuresInternational audienceScene parsing, or semantic segmentation, consists in labelin...
This paper proposes a non-parametric approach to scene parsing inspired by the work of Tighe and Laz...
14 pagesInternational audienceIn the past few years, significant progresses have been made in scene ...
<p>Scene perception is a fundamental aspect of vision. Humans are capable of analyzing behaviorally-...
In this paper we present a Bayesian framework for parsing images into their constituent visual patte...