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Tree-based classifiers for bilayer video segmentation
- In CVPR
, 2007
"... This paper presents an algorithm for the automatic segmentation of monocular videos into foreground and background layers. Correct segmentations are produced even in the presence of large background motion with nearly stationary foreground. There are three key contributions. The first is the introdu ..."
Abstract
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Cited by 21 (3 self)
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This paper presents an algorithm for the automatic segmentation of monocular videos into foreground and background layers. Correct segmentations are produced even in the presence of large background motion with nearly stationary foreground. There are three key contributions. The first is the introduction of a novel motion representation, “motons”, inspired by research in object recognition. Second, we propose learning the segmentation likelihood from the spatial context of motion. The learning is efficiently performed by Random Forests. The third contribution is a general taxonomy of tree-based classifiers, which facilitates theoretical and experimental comparisons of several known classification algorithms, as well as spawning new ones. Diverse visual cues such as motion, motion context, colour, contrast and spatial priors are fused together by means of a Conditional Random Field (CRF) model. Segmentation is then achieved by binary min-cut. Our algorithm requires no initialization. Experiments on many video-chat type sequences demonstrate the effectiveness of our algorithm in a variety of scenes. The segmentation results are comparable to those obtained by stereo systems. 1. Introduction and
The Genetic Kernel Support Vector Machine: Description and Evaluation
- Artificial Intelligence Review
, 2005
"... Abstract. The Support Vector Machine (SVM) has emerged in recent years as a popular approach to the classification of data. One problem that faces the user of an SVM is how to choose a kernel and the specific parameters for that kernel. Applications of an SVM therefore require a search for the optim ..."
Abstract
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Cited by 18 (0 self)
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Abstract. The Support Vector Machine (SVM) has emerged in recent years as a popular approach to the classification of data. One problem that faces the user of an SVM is how to choose a kernel and the specific parameters for that kernel. Applications of an SVM therefore require a search for the optimum settings for a particular problem. This paper proposes a classification technique, which we call the Genetic Kernel SVM (GK SVM), that uses Genetic Programming to evolve a kernel for a SVM classifier. Results of initial experiments with the proposed technique are presented. These results are compared with those of a standard SVM classifier using the Polynomial, RBF and Sigmoid kernel with various parameter settings.
A GA-based feature selection and parameters optimization for support vector machines
, 2006
"... ..."
Data Centering in Feature Space
, 2003
"... This paper presents a family of methods for data translation in feature space, to be used in conjunction with kernel machines. The translations are performed using only kernel evaluations in input space. We use the methods to improve the numerical properties of kernel machines. Experiments wit ..."
Abstract
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Cited by 7 (0 self)
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This paper presents a family of methods for data translation in feature space, to be used in conjunction with kernel machines. The translations are performed using only kernel evaluations in input space. We use the methods to improve the numerical properties of kernel machines. Experiments with synthetic and real data demonstrate the effectiveness of data centering and highlight other interesting aspects of translation in feature space.
The Genetic Evolution of Kernels for Support Vector Machine Classifiers
- In 15th Irish Conference on Artificial Intelligence
, 2004
"... Abstract. The Support Vector Machine (SVM) has emerged in recent years as a popular approach to the classification of data. One problem that faces the user of an SVM is how to choose a kernel and the specific parameters for that kernel. Applications of an SVM therefore require a search for the optim ..."
Abstract
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Cited by 4 (0 self)
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Abstract. The Support Vector Machine (SVM) has emerged in recent years as a popular approach to the classification of data. One problem that faces the user of an SVM is how to choose a kernel and the specific parameters for that kernel. Applications of an SVM therefore require a search for the optimum settings for a particular problem. This paper proposes a classification technique, which we call the Genetic Kernel SVM (GK SVM), that uses Genetic Programming to evolve a kernel for a SVM classifier. Results of initial experiments with the proposed technique are presented. These results are compared with those of a standard SVM classifier using the Polynomial or RBF kernel with various parameter settings. 1
for support vector machines
"... A GA-based feature selection and parameters optimization ..."
Abstract
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Cited by 1 (0 self)
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A GA-based feature selection and parameters optimization
Conference on Data Mining | DMIN'06 | 357 Feature Similarity Based Redundancy Reduction for Gene Selection
"... Abstract—In this paper we propose a feature similarity based redundancy reduction (FSRR) algorithm for high-dimensional gene expression data analysis. FSRR has two steps. First, the relevance of each feature is evaluated. Second, based on the relevance, the redundant features are removed by feature ..."
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Abstract—In this paper we propose a feature similarity based redundancy reduction (FSRR) algorithm for high-dimensional gene expression data analysis. FSRR has two steps. First, the relevance of each feature is evaluated. Second, based on the relevance, the redundant features are removed by feature similarity. The efficiency and effectiveness of our algorithm is established through an experimental study using gene expression data. Four state-of-art feature ranking algorithms and three feature similarity measures are compared and discussed in our work. The results indicate that our algorithm has the capability of finding a well-suited feature set and improving the classification accuracy. 1.
Bilayer Segmentation of Webcam Videos Using Tree-based Classifiers
"... Abstract—This paper presents an automatic segmentation algorithm for video frames captured by a (monocular) webcam that closely approximates depth segmentation from a stereo camera. The frames are segmented into foreground and background layers that comprise a subject (participant) and other objects ..."
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Abstract—This paper presents an automatic segmentation algorithm for video frames captured by a (monocular) webcam that closely approximates depth segmentation from a stereo camera. The frames are segmented into foreground and background layers that comprise a subject (participant) and other objects and individuals. The algorithm produces correct segmentations even in the presence of large background motion with a nearly stationary foreground. This research makes three key contributions: First, we introduce a novel motion representation, referred to as “motons”, inspired by research in object recognition. Second, we propose estimating the segmentation likelihood from the spatial context of motion. The estimation is efficiently learnt by random forests. Third, we introduce a general taxonomy of tree-based classifiers that facilitates both theoretical and experimental comparisons of several known classification algorithms and generates new ones. In our bilayer segmentation algorithm, diverse visual cues such as motion, motion context, colour, contrast, and spatial priors are fused by means of a conditional random field (CRF) model. Segmentation is then achieved by binary min-cut. Experiments on many sequences of our videochat application demonstrate that our algorithm, which requires no initialization, is effective in a variety of scenes, and the segmentation results are comparable to those obtained by stereo systems.
Specificity prediction of adenylation domains in
, 2005
"... nonribosomal peptide synthetases (NRPS) using transductive support vector machines (TSVMs) ..."
Abstract
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nonribosomal peptide synthetases (NRPS) using transductive support vector machines (TSVMs)

