We present a principled framework for inferring pixel labels in weakly-annotated image datasets. Most previous, example-based approaches to computer vision rely on a large corpus of densely labeled images. However, for large, modern image datasets, such labels are expensive to obtain and are often unavailable. We establish a large-scale graphical model spanning all labeled and unlabeled images, then solve it to infer pixel labels jointly for all images in the dataset while enforcing consistent annotations over similar visual patterns. This model requires significantly less labeled data and assists in resolving ambiguities by propagating inferred annotations from images with stronger local visual evidences to images with weaker local evidenc...
Weakly supervised image segmentation is an important yet challenging task in image processing and pa...
The recent successes in computer vision have been mostly around using a huge corpus of intricately l...
We propose a novel framework for semantically segmenting images at the pixel-level given a dataset l...
It is very attractive to exploit weakly-labeled image dataset for multi-label annotation application...
It is very attractive to exploit weakly-labeled image dataset for multi-label annotation application...
Semantic segmentation is a challenging problemthat can benefit numerous robotics applicati...
This work proposes and validates a simple but effective approach to train dense semantic segmentatio...
A fundamental key-point for the recent success of deep learning models is the availability of large ...
Automatic image annotation is among the fundamental problems in computer vision and pattern recognit...
A fundamental key-point for the recent success of deep learning models is the availability of large ...
International audienceIn this paper, we propose a probabilistic graphical model to represent weakly ...
A weakly supervised semantic segmentation (WSSS) method aims to learn a segmentation model from weak...
Weakly supervised image segmentation is an important yet challenging task in image processing and pa...
Weakly supervised image segmentation is an important yet challenging task in image processing and pa...
This work was partially supported by National Natural Science Foundation of China (61573363 and 6157...
Weakly supervised image segmentation is an important yet challenging task in image processing and pa...
The recent successes in computer vision have been mostly around using a huge corpus of intricately l...
We propose a novel framework for semantically segmenting images at the pixel-level given a dataset l...
It is very attractive to exploit weakly-labeled image dataset for multi-label annotation application...
It is very attractive to exploit weakly-labeled image dataset for multi-label annotation application...
Semantic segmentation is a challenging problemthat can benefit numerous robotics applicati...
This work proposes and validates a simple but effective approach to train dense semantic segmentatio...
A fundamental key-point for the recent success of deep learning models is the availability of large ...
Automatic image annotation is among the fundamental problems in computer vision and pattern recognit...
A fundamental key-point for the recent success of deep learning models is the availability of large ...
International audienceIn this paper, we propose a probabilistic graphical model to represent weakly ...
A weakly supervised semantic segmentation (WSSS) method aims to learn a segmentation model from weak...
Weakly supervised image segmentation is an important yet challenging task in image processing and pa...
Weakly supervised image segmentation is an important yet challenging task in image processing and pa...
This work was partially supported by National Natural Science Foundation of China (61573363 and 6157...
Weakly supervised image segmentation is an important yet challenging task in image processing and pa...
The recent successes in computer vision have been mostly around using a huge corpus of intricately l...
We propose a novel framework for semantically segmenting images at the pixel-level given a dataset l...