The aim of this work is to learn generative models of object deformations in an unsupervised manner. Initially, we introduce an Expectation Maximization approach to estimate ma linear basis for deformations by maximizing the likelihood of the training set under an Active Appearance Model (AAM). This approach is shown to successfully capture the global shape variations of objects like faces, cars and hands. However the AAM representation cannot deal with articulated objects, like cows and horses. We therefore extend our approach to a representation that allows for multiple parts with the relationships between them modeled by a Markov Random Field (MRF). Finally, we propose an algorithm for efficiently performing inference on part-based MRF o...
The Active Appearance Model (AAM) is a powerful method for modeling and segmenting deformable visual...
Deformable Parts Models (DPM) are the current state-of-the-art for object detection. Nevertheless th...
We propose statistical learning methods for approximating implicit surfaces and computing dense 3D d...
The aim of this work is to learn generative models of object deformations in an unsupervised manner....
We present a method to learn object class models from unlabeled and unsegmented cluttered scenes for...
Deformable objects are everywhere. Faces, cars, bicy-cles, chairs etc. Recently, there has been a we...
Deformable objects are everywhere. Faces, cars, bicy-cles, chairs etc. Recently, there has been a we...
We propose machine learning methods for the estimation of deformation fields that transform two give...
We introduce morphable part models for smart shape manipulation using an assembly of deformable part...
We introduce a Probabilistic Grammar-Markov Model (PGMM) which couples probabilistic context-free gr...
We describe an unsupervised method for learning a probabilistic grammar of an object from a set of t...
Non-linear statistical models of deformation provide methods to learn a priori shape and deformation...
Despite significant recent progress, machine vision systems lag considerably behind their biological...
Robot manipulators typically rely on complete knowledge of object geometry in order to plan motions...
The active appearance model (AAM) is a powerful method for modeling and segmenting deformable visual...
The Active Appearance Model (AAM) is a powerful method for modeling and segmenting deformable visual...
Deformable Parts Models (DPM) are the current state-of-the-art for object detection. Nevertheless th...
We propose statistical learning methods for approximating implicit surfaces and computing dense 3D d...
The aim of this work is to learn generative models of object deformations in an unsupervised manner....
We present a method to learn object class models from unlabeled and unsegmented cluttered scenes for...
Deformable objects are everywhere. Faces, cars, bicy-cles, chairs etc. Recently, there has been a we...
Deformable objects are everywhere. Faces, cars, bicy-cles, chairs etc. Recently, there has been a we...
We propose machine learning methods for the estimation of deformation fields that transform two give...
We introduce morphable part models for smart shape manipulation using an assembly of deformable part...
We introduce a Probabilistic Grammar-Markov Model (PGMM) which couples probabilistic context-free gr...
We describe an unsupervised method for learning a probabilistic grammar of an object from a set of t...
Non-linear statistical models of deformation provide methods to learn a priori shape and deformation...
Despite significant recent progress, machine vision systems lag considerably behind their biological...
Robot manipulators typically rely on complete knowledge of object geometry in order to plan motions...
The active appearance model (AAM) is a powerful method for modeling and segmenting deformable visual...
The Active Appearance Model (AAM) is a powerful method for modeling and segmenting deformable visual...
Deformable Parts Models (DPM) are the current state-of-the-art for object detection. Nevertheless th...
We propose statistical learning methods for approximating implicit surfaces and computing dense 3D d...