To date, most instance segmentation approaches are based on supervised learning that requires a considerable amount of annotated object contours as training ground truth. Here, we propose a framework that searches for the target object based on a shape prior. The shape prior model is learned with a variational autoencoder that requires only a very limited amount of training data: In our experiments, a few dozens of object shape patches from the target dataset, as well as purely synthetic shapes, were sufficient to achieve results en par with supervised methods with full access to training data on two out of three cell segmentation datasets. Our method with a synthetic shape prior was superior to pre-trained supervised models with access to ...
©2008 IEEE. Personal use of this material is permitted. However, permission to reprint/republish thi...
One of the main constraints of machine learning is the common lack of annotated data. This constrain...
International audienceActive contours are adapted to image segmentation by energy minimization. The ...
We propose two methods for object segmentation by combining learned shape priors with local features...
Object detection or localization gradually progresses from coarse to fine digital image inference. I...
Semantic segmentation that aims at grouping discrete pixels into connected regions is a fundamental ...
The performance of existing single-view 3D reconstruction methods heavily relies on large-scale 3D a...
This book proposes a new approach to handle the problem of limited training data. Common approaches ...
Abstract. This paper introduces shape priors that benefit 2-dimensional, interactive contouring, whi...
We present Polite Teacher, a simple yet effective method for the task of semi-supervised instance se...
The final publication is available at Springer via http://dx.doi.org/10.1007/s11042-020-09235-4Image...
International audienceThe aim of this work is to learn a shape prior model for an object class and t...
The problem of image segmentation is known to become particularly challenging in the case of partial...
The present paper introduces sparsely supervised instance segmentation, with the datasets being full...
The ability to finely segment different instances of various objects in an environment forms a criti...
©2008 IEEE. Personal use of this material is permitted. However, permission to reprint/republish thi...
One of the main constraints of machine learning is the common lack of annotated data. This constrain...
International audienceActive contours are adapted to image segmentation by energy minimization. The ...
We propose two methods for object segmentation by combining learned shape priors with local features...
Object detection or localization gradually progresses from coarse to fine digital image inference. I...
Semantic segmentation that aims at grouping discrete pixels into connected regions is a fundamental ...
The performance of existing single-view 3D reconstruction methods heavily relies on large-scale 3D a...
This book proposes a new approach to handle the problem of limited training data. Common approaches ...
Abstract. This paper introduces shape priors that benefit 2-dimensional, interactive contouring, whi...
We present Polite Teacher, a simple yet effective method for the task of semi-supervised instance se...
The final publication is available at Springer via http://dx.doi.org/10.1007/s11042-020-09235-4Image...
International audienceThe aim of this work is to learn a shape prior model for an object class and t...
The problem of image segmentation is known to become particularly challenging in the case of partial...
The present paper introduces sparsely supervised instance segmentation, with the datasets being full...
The ability to finely segment different instances of various objects in an environment forms a criti...
©2008 IEEE. Personal use of this material is permitted. However, permission to reprint/republish thi...
One of the main constraints of machine learning is the common lack of annotated data. This constrain...
International audienceActive contours are adapted to image segmentation by energy minimization. The ...