International audienceIn this work we address the problem of boundary detection by combining ideas and approaches from biological and computational vision. Initially, we propose a simple and efficient architecture that is inspired from models of biological vision. Subsequently, we interpret and learn the system using computer vision techniques: First, we present analogies between the system components and computer vision techniques and interpret the network as minimizing a cost functional, thereby establishing a link with variational techniques. Second, based on Mean Field Theory the equations describing the network behavior are interpreted statistically. Third, we build on this interpretation to develop an algorithm to learn the network we...
A large gap exists at present between computational theories of vision and their possible implemen...
A significant barrier to applying the techniques of machine learning to the domain of object boundar...
Abstract. Segmentation of complete neurons in 3D electron microscopy images is an important task in ...
International audienceIn this work we address the problem of boundary detection by combining ideas a...
International audienceIn this work we address the problem of boundary detection by combining ideas a...
This report presents a joint study of biological and computational vision. First we briefly review t...
This report presents a joint study of biological and computational vision. First we briefly review t...
This paper describes a simple model-based approach to boundary detection for blob shaped objects. A ...
Boundaries are the key cue to differentiate objects from each other and the background. However whet...
Abstract:- Edge signals play an important role in image processing. If correctly configured, they ca...
Boundary detection constitutes a crucial step in many com-puter vision tasks. We present a learning ...
Graduation date: 2004Image segmentation continues to be a fundamental problem in computer vision and...
Computer image processing often involves three processing stages : 1. detecting and extracting edges...
Efforts to automate the reconstruction of neural circuits from 3D electron microscopic (EM) brain im...
We present an approach to solving computer vision problems in which the goal is to produce a high-di...
A large gap exists at present between computational theories of vision and their possible implemen...
A significant barrier to applying the techniques of machine learning to the domain of object boundar...
Abstract. Segmentation of complete neurons in 3D electron microscopy images is an important task in ...
International audienceIn this work we address the problem of boundary detection by combining ideas a...
International audienceIn this work we address the problem of boundary detection by combining ideas a...
This report presents a joint study of biological and computational vision. First we briefly review t...
This report presents a joint study of biological and computational vision. First we briefly review t...
This paper describes a simple model-based approach to boundary detection for blob shaped objects. A ...
Boundaries are the key cue to differentiate objects from each other and the background. However whet...
Abstract:- Edge signals play an important role in image processing. If correctly configured, they ca...
Boundary detection constitutes a crucial step in many com-puter vision tasks. We present a learning ...
Graduation date: 2004Image segmentation continues to be a fundamental problem in computer vision and...
Computer image processing often involves three processing stages : 1. detecting and extracting edges...
Efforts to automate the reconstruction of neural circuits from 3D electron microscopic (EM) brain im...
We present an approach to solving computer vision problems in which the goal is to produce a high-di...
A large gap exists at present between computational theories of vision and their possible implemen...
A significant barrier to applying the techniques of machine learning to the domain of object boundar...
Abstract. Segmentation of complete neurons in 3D electron microscopy images is an important task in ...