Scene parsing aims to recognize the object category of every pixel in scene images, and it plays a central role in image content understanding and computer vision applications. However, accurate scene parsing from unconstrained real-world data is still a challenging task. In this paper, we present the non-parametric Spatially Constrained Local Prior (SCLP) for scene parsing on realistic data. For a given query image, the non-parametric SCLP is learnt by first retrieving a subset of most similar training images to the query image and then collecting prior information about object co-occurrence statistics between spatial image blocks and between adjacent superpixels from the retrieved subset. The SCLP is powerful in capturing both long- and s...
This thesis focuses on three topics in visual scene understanding, sorted from low level to high lev...
Abstract. The amount of labeled training data required for image in-terpretation tasks is a major dr...
We consider object recognition as the process of attaching meaningful labels to specific regions of ...
© 2016 IEEE.Semantic context is an important and useful cue for scene parsing in complicated natural...
Scene parsing is an important problem in the field of computer vision. Though many existing scene pa...
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...
In this paper we propose a novel nonparametric approach for object recognition and scene parsing usi...
Scene parsing, or segmenting all the objects in an image and identifying their categories, is one of...
Abstract. Scene parsing is the problem of assigning a semantic label to every pixel in an image. Tho...
In this paper, we present an adaptive nonparametric solution to the image parsing task, namely, anno...
Scene image classification and retrieval not only have a great impact on scene image management, but...
This paper presents a scalable scene parsing algorithm based on image retrieval and superpixel match...
While smoothness priors are ubiquitous in analysis of visual information, dictionary learning for im...
From the issue entitled "Special issue on Machine Learning for Vision, Guest Editors: William Freema...
This thesis focuses on three topics in visual scene understanding, sorted from low level to high lev...
Abstract. The amount of labeled training data required for image in-terpretation tasks is a major dr...
We consider object recognition as the process of attaching meaningful labels to specific regions of ...
© 2016 IEEE.Semantic context is an important and useful cue for scene parsing in complicated natural...
Scene parsing is an important problem in the field of computer vision. Though many existing scene pa...
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...
In this paper we propose a novel nonparametric approach for object recognition and scene parsing usi...
Scene parsing, or segmenting all the objects in an image and identifying their categories, is one of...
Abstract. Scene parsing is the problem of assigning a semantic label to every pixel in an image. Tho...
In this paper, we present an adaptive nonparametric solution to the image parsing task, namely, anno...
Scene image classification and retrieval not only have a great impact on scene image management, but...
This paper presents a scalable scene parsing algorithm based on image retrieval and superpixel match...
While smoothness priors are ubiquitous in analysis of visual information, dictionary learning for im...
From the issue entitled "Special issue on Machine Learning for Vision, Guest Editors: William Freema...
This thesis focuses on three topics in visual scene understanding, sorted from low level to high lev...
Abstract. The amount of labeled training data required for image in-terpretation tasks is a major dr...
We consider object recognition as the process of attaching meaningful labels to specific regions of ...