Modeling object is one of the core problems in computer vision. A good object model can be applied to multiple visual recognition tasks. In this thesis, we use compositional relations to model the objects and parts for articulated objects, which is very challenging due to the large variability by subtypes, viewpoints and poses. Intuitively, objects are composed of parts, and each part is then composed of subparts. By recursively applying the compositional relations, we can obtain a hierarchical structure of the object, which is called compositional model. Compared to the popular black-box deep learning system, our model enjoys the advantages of explainability, and adaptivity to more complex scenarios. There are three challenges for the comp...
One of the fundamental problems of computer vision is to detect and localize objectssuch as humans a...
Underlying recognition is an organization of objects and their parts into classes and hierarchies. A...
I propose a learning algorithm for learning hierarchical models for object recognition. The model ar...
This paper performs a complexity analysis of a class of serial and parallel compositional models of ...
Segmenting semantic objects from images and parsing them into their respective semantic parts are fu...
Compositional Models represent objects in terms of object parts and their spatial relations. These ...
It is very attractive to formulate vision in terms of pattern theory [26], where patterns are define...
Abstract—Most objects are composed of parts which have a semantic meaning. A handle can have many di...
This paper performs a complexity analysis of a class of serial and parallel compositional models of ...
In this paper, we address the task of detecting semantic parts on partially occluded objects. We con...
Scene understanding remains a significant challenge in the computer vision community. The visual psy...
We present an efficient method for learning part-based object class models. The models include locat...
Detecting and describing objects is one of the fundamental challenges in computer vision. Teaching c...
Interpretation of complex scenes involves analysing multiple objects being composed of several parts...
Visual scene representation learning is an important research problem in the field of computer visio...
One of the fundamental problems of computer vision is to detect and localize objectssuch as humans a...
Underlying recognition is an organization of objects and their parts into classes and hierarchies. A...
I propose a learning algorithm for learning hierarchical models for object recognition. The model ar...
This paper performs a complexity analysis of a class of serial and parallel compositional models of ...
Segmenting semantic objects from images and parsing them into their respective semantic parts are fu...
Compositional Models represent objects in terms of object parts and their spatial relations. These ...
It is very attractive to formulate vision in terms of pattern theory [26], where patterns are define...
Abstract—Most objects are composed of parts which have a semantic meaning. A handle can have many di...
This paper performs a complexity analysis of a class of serial and parallel compositional models of ...
In this paper, we address the task of detecting semantic parts on partially occluded objects. We con...
Scene understanding remains a significant challenge in the computer vision community. The visual psy...
We present an efficient method for learning part-based object class models. The models include locat...
Detecting and describing objects is one of the fundamental challenges in computer vision. Teaching c...
Interpretation of complex scenes involves analysing multiple objects being composed of several parts...
Visual scene representation learning is an important research problem in the field of computer visio...
One of the fundamental problems of computer vision is to detect and localize objectssuch as humans a...
Underlying recognition is an organization of objects and their parts into classes and hierarchies. A...
I propose a learning algorithm for learning hierarchical models for object recognition. The model ar...