Discriminative latent variable models (LVM) are frequently applied to various visualrecognition tasks. In these systems the latent (hidden) variables provide a formalism formodeling structured variation of visual features. Conventionally, latent variables are de-fined on the variation of the foreground (positive) class. In this work we augment LVMsto includenegativelatent variables corresponding to the background class. We formalizethe scoring function of such a generalized LVM (GLVM). Then we discuss a frameworkfor learning a model based on the GLVM scoring function. We theoretically showcasehow some of the current visual recognition methods can benefit from this generalization.Finally, we experiment on a generalized form of Deformable Par...
The Gaussian process latent variable model (GP-LVM) has been identified to be an effective probabili...
Real world data is not random: The variability in the data-sets that arise in computer vision, sign...
The naive Bayes model makes the often unrealistic assumption that the feature variables are mutually...
Two important components of a visual recognition system are representation and model. Both involves ...
Two important components of a visual recognition system are representation and model. Both involves ...
Two important components of a visual recognition system are representation and model. Both involves ...
This paper describes a discriminatively trained, multiscale, deformable part model for object detect...
Visual object recognition is one of the key human capabilities that we would like machines to have. ...
Visual Recognition is a central problem in computer vision, and it has numerous potential applicatio...
Recent machine learning advances in computer vision and speech recognition have been largely driven ...
Recent machine learning advances in computer vision and speech recognition have been largely driven ...
講演日: 平成25年5月27日講演場所: 情報科学研究科大講義室L1Developing computer vision algorithms to interpret scenes of human...
In this paper, we show how to train a deformable part model (DPM) fast—typically in less than 20 min...
In this paper, we show how to train a deformable part model (DPM) fast—typically in less than 20 min...
Real world data is not random: The variability in the data-sets that arise in computer vision, sign...
The Gaussian process latent variable model (GP-LVM) has been identified to be an effective probabili...
Real world data is not random: The variability in the data-sets that arise in computer vision, sign...
The naive Bayes model makes the often unrealistic assumption that the feature variables are mutually...
Two important components of a visual recognition system are representation and model. Both involves ...
Two important components of a visual recognition system are representation and model. Both involves ...
Two important components of a visual recognition system are representation and model. Both involves ...
This paper describes a discriminatively trained, multiscale, deformable part model for object detect...
Visual object recognition is one of the key human capabilities that we would like machines to have. ...
Visual Recognition is a central problem in computer vision, and it has numerous potential applicatio...
Recent machine learning advances in computer vision and speech recognition have been largely driven ...
Recent machine learning advances in computer vision and speech recognition have been largely driven ...
講演日: 平成25年5月27日講演場所: 情報科学研究科大講義室L1Developing computer vision algorithms to interpret scenes of human...
In this paper, we show how to train a deformable part model (DPM) fast—typically in less than 20 min...
In this paper, we show how to train a deformable part model (DPM) fast—typically in less than 20 min...
Real world data is not random: The variability in the data-sets that arise in computer vision, sign...
The Gaussian process latent variable model (GP-LVM) has been identified to be an effective probabili...
Real world data is not random: The variability in the data-sets that arise in computer vision, sign...
The naive Bayes model makes the often unrealistic assumption that the feature variables are mutually...