Results 1 - 10
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246
Top-down and bottom-up cues for scene text recognition
- In CVPR
, 2012
"... Scene text recognition has gained significant attention from the computer vision community in recent years. Recognizing such text is a challenging problem, even more so than the recognition of scanned documents. In this work, we focus on the problem of recognizing text extracted from street images. ..."
Abstract
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Cited by 52 (6 self)
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. We present a framework that exploits both bottom-up and top-down cues. The bottom-up cues are derived from individual character detections from the image. We build a Conditional Random Field model on these detections to jointly model the strength of the detections and the interactions between them
High-level bottom-up cues for top-down parsing of facade images
- Second Joint 3DIM/3DPVT Conference: 3D Imaging, Modeling, Processing, Visualization et Transmission
, 2012
"... HAL is a multi-disciplinary open access archive for the deposit and dissemination of sci-entific research documents, whether they are pub-lished or not. The documents may come from teaching and research institutions in France or abroad, or from public or private research centers. L’archive ouverte p ..."
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Cited by 5 (2 self)
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HAL is a multi-disciplinary open access archive for the deposit and dissemination of sci-entific research documents, whether they are pub-lished or not. The documents may come from teaching and research institutions in France or abroad, or from public or private research centers. L’archive ouverte pluridisciplinaire HAL, est destinée au dépôt et a ̀ la diffusion de documents scientifiques de niveau recherche, publiés ou non, émanant des établissements d’enseignement et de recherche français ou étrangers, des laboratoires publics ou privés.
1 OBJCUT: Efficient Segmentation using Top-Down and Bottom-Up Cues
"... We present a probabilistic method for segmenting instances of a particular object category within an image. Our approach overcomes the deficiencies of previous segmentation techniques based on traditional grid conditional random fields (CRF), namely that (i) they require the user to provide seed pix ..."
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probabilistic model which includes shape potentials for the object to incorporate top-down information that is global across the image, in addition to the grid clique potentials which provide the bottom-up information used in previous approaches. The shape potentials are provided by the pose of the object
Combine Top-Down and Bottom-Up Cues to Segment Speech
, 2012
"... Publication details, including instructions for authors and subscription information: ..."
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Publication details, including instructions for authors and subscription information:
Author manuscript, published in "3DIMPVT, Zürich: Switzerland (2012)" High-Level Bottom-Up Cues for Top-Down Parsing of Facade Images
, 2012
"... We address the problem of parsing images of building facades. The goal is to segment images, assigning to the resulting regions semantic labels that correspond to the basic architectural elements. We assume a top-down parsing framework based on a 2D shape grammar that encodes a prior knowledge on th ..."
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on the possible composition of facades. The algorithm explores the space of feasible solutions by generating the possible configurations of the facade and comparing it to the input data by means of a local, pixelor patch-based classifier. We propose new bottom-up cues for the algorithm, both for evaluation of a
Scalable Tracing of Electron Micrographs by Fusing Top Down and Bottom Up Cues using Hypergraph Diffusion
"... Abstract. A novel framework for robust 3D tracing in Electron Micrographs is presented. The proposed framework is built using ideas from hypergraph diffusion, and achieves two main objectives. Firstly, the approach scales to trace hundreds of targets without noticeable increase in runtime complexity ..."
Abstract
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Cited by 4 (3 self)
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complexity. Secondly, the framework yields flexibility to fuse top down (global cues as hyperedges) and bottom up (local superpixels as nodes) information. Subsequently, a procedure for auto-seeding to initialize the tracing procedure is proposed. The paper concludes with experimental validation on a
Author manuscript, published in "PAMI (2010)" 1 OBJCUT: Efficient Segmentation using Top-Down and Bottom-Up Cues
, 2013
"... We present a probabilistic method for segmenting instances of a particular object category within an image. Our approach overcomes the deficiencies of previous segmentation techniques based on traditional grid conditional random fields (CRF), namely that (i) they require the user to provide seed pix ..."
Abstract
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probabilistic model which includes shape potentials for the object to incorporate top-down information that is global across the image, in addition to the grid clique potentials which provide the bottom-up information used in previous approaches. The shape potentials are provided by the pose of the object
Learning to combine bottom-up and top-down segmentation
- in: European Conference on Computer Vision
"... Abstract. Bottom-up segmentation based only on low-level cues is a notoriously difficult problem. This difficulty has lead to recent top-down segmentation algorithms that are based on class-specific image information. Despite the success of top-down algorithms, they often give coarse segmentations t ..."
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Cited by 132 (0 self)
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Abstract. Bottom-up segmentation based only on low-level cues is a notoriously difficult problem. This difficulty has lead to recent top-down segmentation algorithms that are based on class-specific image information. Despite the success of top-down algorithms, they often give coarse segmentations
Integration of Bottom--Up and Top--Down Cues for Visual Attention Using Non--Linear Relaxation
, 1994
"... Active and selective perception seeks regions of interest in an image in order to reduce the computational complexity associated with time--consuming processes such as object recognition. We describe in this paper a visual attention system that extracts regions of interest by integrating multiple im ..."
Abstract
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Cited by 38 (6 self)
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image cues. Bottom--up cues are detected by decomposing the image into a number of feature and conspicuity maps, while a--priori knowledge (i.e. models) about objects is used to generate top--down attention cues. Bottom--up and top-- down information is combined through a non--linear relaxation process
Integration of Bottom--Up and Top--Down Cues for Visual Attention Using Non--Linear Relaxation
, 1994
"... Active and selective perception seeks regions of interest in an image in order to reduce the computational complexity associated with time--consuming processes such as object recognition. We describe in this paper a visual attention system that extracts regions of interest by integrating multiple ..."
Abstract
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multiple image cues. Bottom--up cues are detected by decomposing the image into a number of feature and conspicuity maps, while a--priori knowledge (i.e. models) about objects is used to generate top--down attention cues. Bottom--up and top--down information is combined through a non--linear relaxation
Results 1 - 10
of
246