Unsupervised identical object segmentation remains a challenging problem in vision research due to the difficulties in obtaining high-level structural knowledge about the scene. In this paper, we present an algorithm based on level set with a novel similarity constraint term for identical objects segmentation. The key component of the proposed algorithm is to embed the similarity constraint into curve evolution, where the evolving speed is high in regions of similar appearance and becomes low in areas with distinct contents. The algorithm starts with a pair of seed matches (e. g. SIFT) and evolve the small initial circle to form large similar regions under the similarity constraint. The similarity constraint is related to local alignment wi...
In this work, we introduce a simple and flexible method for video object segmentation based on simil...
A novel scheme for image segmentation is presented. An image segmentation criterion is proposed that...
Methods based on local, viewpoint invariant features have proven capable of recognizing objects in s...
We suggest a novel variational approach for mutual segmentation of two images of the same object. Th...
In this dissertation, we investigate structural similarity, belief propagation, and radial basis fu...
We address the problem of segmenting multiple similar objects by optimizing a Chan-Vese-like [1] fun...
International audienceIn this paper, we propose a level set method for shape-driven object extractio...
In order to solve the problems that CV model can’t segment object which is partially occluded ...
This paper presents a hybrid level set method for object segmentation. The method deconstructs segme...
© 2018 IEEE. This paper presents a hybrid level set method for object segmentation. The method decon...
The main goal of this thesis is to develop robust computational methods to address some of the open ...
International audienceIn this paper, we present a general frame for a system of automatic modelling ...
Shape symmetry is an important cue for image understanding. In the absence of more detailed prior sh...
We present a novel Object Recognition approach based on affine invariant regions. It actively counte...
Figure 1: Overview of proposed object segmentation algorithm using examples. Given a test image and ...
In this work, we introduce a simple and flexible method for video object segmentation based on simil...
A novel scheme for image segmentation is presented. An image segmentation criterion is proposed that...
Methods based on local, viewpoint invariant features have proven capable of recognizing objects in s...
We suggest a novel variational approach for mutual segmentation of two images of the same object. Th...
In this dissertation, we investigate structural similarity, belief propagation, and radial basis fu...
We address the problem of segmenting multiple similar objects by optimizing a Chan-Vese-like [1] fun...
International audienceIn this paper, we propose a level set method for shape-driven object extractio...
In order to solve the problems that CV model can’t segment object which is partially occluded ...
This paper presents a hybrid level set method for object segmentation. The method deconstructs segme...
© 2018 IEEE. This paper presents a hybrid level set method for object segmentation. The method decon...
The main goal of this thesis is to develop robust computational methods to address some of the open ...
International audienceIn this paper, we present a general frame for a system of automatic modelling ...
Shape symmetry is an important cue for image understanding. In the absence of more detailed prior sh...
We present a novel Object Recognition approach based on affine invariant regions. It actively counte...
Figure 1: Overview of proposed object segmentation algorithm using examples. Given a test image and ...
In this work, we introduce a simple and flexible method for video object segmentation based on simil...
A novel scheme for image segmentation is presented. An image segmentation criterion is proposed that...
Methods based on local, viewpoint invariant features have proven capable of recognizing objects in s...