This paper presents a simple and effective nonparametric approach to the problem of image parsing, or labeling image regions (in our case, superpixels produced by bottom-up segmentation) with their categories. This approach requires no training, and it can easily scale to datasets with tens of thousands of images and hundreds of labels. It works by scene-level matching with global image descriptors, followed by superpixel-level matching with local features and e�cient Markov random fi eld (MRF) optimization for incorporating neighborhood context. Our MRF setup can also compute a simultaneous labeling of image regions into semantic classes (e.g., tree, building, car) and geometric classes (sky, vertical, ground). Our system outperforms the s...
Abstract. This paper proposes a class-specified segmentation method, which can not only segment fore...
Recently there has been an increasing interest in image segmentation due to the needs of locating ob...
Image over-segmentation is formalized as the approximation problem when a large image is segmented i...
This paper presents a simple and effective nonparametric approach to the problem of image parsing, o...
Scene parsing, or segmenting all the objects in an image and identifying their categories, is one of...
In this paper, we present an adaptive nonparametric solution to the image parsing task, namely, anno...
In this paper, we present a simple and effective approach to the image parsing (or labeling image re...
In superpixel-based image parsing, the image is first segmented into visually consistent small regio...
Image segmentation is a partitioning of an image into distinct groups of pixels (“regions”), each re...
In computer vision, scene parsing is the problem of labelling every pixel in an image or video with ...
This paper proposes a non-parametric approach to scene parsing inspired by the work of Tighe and Laz...
Recent applications in computer vision have come to rely on superpixel segmentation as a pre-process...
Abstract. Scene parsing is the problem of assigning a semantic label to every pixel in an image. Tho...
Automatically and ideally segmenting the semantic region of each object in an image will greatly imp...
9 pages, 4 figuresInternational audienceScene parsing, or semantic segmentation, consists in labelin...
Abstract. This paper proposes a class-specified segmentation method, which can not only segment fore...
Recently there has been an increasing interest in image segmentation due to the needs of locating ob...
Image over-segmentation is formalized as the approximation problem when a large image is segmented i...
This paper presents a simple and effective nonparametric approach to the problem of image parsing, o...
Scene parsing, or segmenting all the objects in an image and identifying their categories, is one of...
In this paper, we present an adaptive nonparametric solution to the image parsing task, namely, anno...
In this paper, we present a simple and effective approach to the image parsing (or labeling image re...
In superpixel-based image parsing, the image is first segmented into visually consistent small regio...
Image segmentation is a partitioning of an image into distinct groups of pixels (“regions”), each re...
In computer vision, scene parsing is the problem of labelling every pixel in an image or video with ...
This paper proposes a non-parametric approach to scene parsing inspired by the work of Tighe and Laz...
Recent applications in computer vision have come to rely on superpixel segmentation as a pre-process...
Abstract. Scene parsing is the problem of assigning a semantic label to every pixel in an image. Tho...
Automatically and ideally segmenting the semantic region of each object in an image will greatly imp...
9 pages, 4 figuresInternational audienceScene parsing, or semantic segmentation, consists in labelin...
Abstract. This paper proposes a class-specified segmentation method, which can not only segment fore...
Recently there has been an increasing interest in image segmentation due to the needs of locating ob...
Image over-segmentation is formalized as the approximation problem when a large image is segmented i...