This paper focuses on the issue of image segmentation with convex shape prior. Firstly, we use binary function to represent convex object(s). The convex shape prior turns out to be a simple quadratic inequality constraint on the binary indicator function associated with each object. An image segmentation model incorporating convex shape prior into a probability-based method is proposed. Secondly, a new algorithm is designed to solve involved optimization problem, which is a challenging task because of the quadratic inequality constraint. To tackle this difficulty, we relax and linearize the quadratic inequality constraint to reduce it to solve a sequence of convex minimization problems. For each convex problem, an efficient proximal alterna...
Abstract Image segmentation is a fundamental and challenging task in image processing and computer v...
International audienceThis work is about the use of regularized optimal-transport distances for conv...
This paper demonstrates a customized application of the classical proximal point algorithm (PPA) to ...
Segmenting an image into multiple components is a central task in computer vision. In many practical...
Abstract. Convexity is known as an important cue in human vision. We propose shape convexity as a ne...
Abstract. In this paper, we propose an alternating proximal gradient method that solves convex minim...
none4siFirst Online: 06 September 2017A convex non-convex variational model is proposed for multipha...
Abstract—In this paper we present and investigate an ap-proach to fast multi-label color image segme...
Motivated by a variational formulation of the motion segmentation problem, we propose a fully implic...
International audienceStereo matching is an active area of research in image processing. In a recent...
This thesis investigates the role of optimization in two areas of Computer Science: Computer Vision ...
International audienceWe investigate in this work a versatile convex framework for multiple image se...
Abstract. The Mumford–Shah model is one of the most important image segmentation models and has been...
International audienceProximal splitting algorithms play a central role in finding the numerical sol...
This thesis investigates the role of optimization in two areas of Computer Science: Computer Vision ...
Abstract Image segmentation is a fundamental and challenging task in image processing and computer v...
International audienceThis work is about the use of regularized optimal-transport distances for conv...
This paper demonstrates a customized application of the classical proximal point algorithm (PPA) to ...
Segmenting an image into multiple components is a central task in computer vision. In many practical...
Abstract. Convexity is known as an important cue in human vision. We propose shape convexity as a ne...
Abstract. In this paper, we propose an alternating proximal gradient method that solves convex minim...
none4siFirst Online: 06 September 2017A convex non-convex variational model is proposed for multipha...
Abstract—In this paper we present and investigate an ap-proach to fast multi-label color image segme...
Motivated by a variational formulation of the motion segmentation problem, we propose a fully implic...
International audienceStereo matching is an active area of research in image processing. In a recent...
This thesis investigates the role of optimization in two areas of Computer Science: Computer Vision ...
International audienceWe investigate in this work a versatile convex framework for multiple image se...
Abstract. The Mumford–Shah model is one of the most important image segmentation models and has been...
International audienceProximal splitting algorithms play a central role in finding the numerical sol...
This thesis investigates the role of optimization in two areas of Computer Science: Computer Vision ...
Abstract Image segmentation is a fundamental and challenging task in image processing and computer v...
International audienceThis work is about the use of regularized optimal-transport distances for conv...
This paper demonstrates a customized application of the classical proximal point algorithm (PPA) to ...