In this paper we propose a novel nonparametric approach for object recognition and scene parsing using dense scene alignment. Given an input image, we retrieve its best matches from a large database with annotated images using our modified, coarse-to-fine SIFT flow algorithm that aligns the structures within two images. Based on the dense scene correspondence obtained from the SIFT flow, our system warps the existing annotations, and integrates multiple cues in a Markov random field framework to segment and recognize the query image. Promising experimental results have been achieved by our nonparametric scene parsing system on a challenging database. Compared to existing object recognition approaches that require training for each object ca...
9 pages, 4 figuresInternational audienceScene parsing, or semantic segmentation, consists in labelin...
Urban scene parsing, segmenting interested objects and identifying their categories in urban scenes,...
Abstract. In this paper, we propose a robust supervised label transfer method for the semantic segme...
In computer vision, scene parsing is the problem of labelling every pixel in an image or video with ...
Abstract—While image alignment has been studied in different areas of computer vision for decades, a...
While image alignment has been studied in different areas of computer vision for decades, aligning i...
Abstract. Scene parsing is the problem of assigning a semantic label to every pixel in an image. Tho...
In this paper we propose a novel nonparametric image parsing method for the image parsing problem in...
In this paper, we investigate how, given an image, similar images sharing the same global descriptio...
In this paper, we present a simple and effective approach to the image parsing (or labeling image re...
Scene parsing aims to recognize the object category of every pixel in scene images, and it plays a c...
This paper proposes a non-parametric approach to scene parsing inspired by the work of Tighe and Laz...
We propose a fast, accurate matching method for estimating dense pixel correspondences across scenes...
Abstract. Gradient-descent methods have exhibited fast and reliable performance for image alignment ...
Scene parsing, or segmenting all the objects in an image and identifying their categories, is one of...
9 pages, 4 figuresInternational audienceScene parsing, or semantic segmentation, consists in labelin...
Urban scene parsing, segmenting interested objects and identifying their categories in urban scenes,...
Abstract. In this paper, we propose a robust supervised label transfer method for the semantic segme...
In computer vision, scene parsing is the problem of labelling every pixel in an image or video with ...
Abstract—While image alignment has been studied in different areas of computer vision for decades, a...
While image alignment has been studied in different areas of computer vision for decades, aligning i...
Abstract. Scene parsing is the problem of assigning a semantic label to every pixel in an image. Tho...
In this paper we propose a novel nonparametric image parsing method for the image parsing problem in...
In this paper, we investigate how, given an image, similar images sharing the same global descriptio...
In this paper, we present a simple and effective approach to the image parsing (or labeling image re...
Scene parsing aims to recognize the object category of every pixel in scene images, and it plays a c...
This paper proposes a non-parametric approach to scene parsing inspired by the work of Tighe and Laz...
We propose a fast, accurate matching method for estimating dense pixel correspondences across scenes...
Abstract. Gradient-descent methods have exhibited fast and reliable performance for image alignment ...
Scene parsing, or segmenting all the objects in an image and identifying their categories, is one of...
9 pages, 4 figuresInternational audienceScene parsing, or semantic segmentation, consists in labelin...
Urban scene parsing, segmenting interested objects and identifying their categories in urban scenes,...
Abstract. In this paper, we propose a robust supervised label transfer method for the semantic segme...