International audienceIn this work, we propose a new unsupervised image segmentation approach based on mutual information maximization between different constructed views of the inputs. Taking inspiration from autoregressive generative models that predict the current pixel from past pixels in a raster-scan ordering created with masked convolutions, we propose to use different orderings over the inputs using various forms of masked convolutions to construct different views of the data. For a given input, the model produces a pair of predictions with two valid orderings, and is then trained to maximize the mutual information between the two outputs. These outputs can either be low-dimensional features for representation learning or output clu...
We approach the object recognition problem as the process of attaching meaningful labels to specific...
Which one comes first: segmentation or recognition? We propose a unified framework for carrying out ...
The development of convolutional neural networks for deep learning has significantly contributed to ...
International audienceIn this work, we propose a new unsupervised image segmentation approach based ...
International audienceA novel technique for unsupervised learning in feature space is presented. The...
Unsupervised algorithms which do not make use of labels are commonly found in computer vision and ar...
Thesis (Ph.D.)--University of Washington, 2020Unsupervised learning is the branch of machine learnin...
Modern computer vision systems heavily rely on statistical machine learning models, which typically ...
This PhD. Thesis consists of two well differentiated parts, each of them focusing on one particular ...
We present a novel clustering objective that learns a neural network classifier from scratch, given ...
International audienceObject segmentation is a crucial problem that is usually solved by using super...
International audiencePixel labeling problem stands among the most commonly considered topics in ima...
We propose a framework for Bayesian unsupervised image segmentation with descriptive, learnable mode...
An instance with a bad mask might make a composite image that uses it look fake. This encourages us ...
International audienceCo-segmentation is defined as jointly partitioning multiple images depicting t...
We approach the object recognition problem as the process of attaching meaningful labels to specific...
Which one comes first: segmentation or recognition? We propose a unified framework for carrying out ...
The development of convolutional neural networks for deep learning has significantly contributed to ...
International audienceIn this work, we propose a new unsupervised image segmentation approach based ...
International audienceA novel technique for unsupervised learning in feature space is presented. The...
Unsupervised algorithms which do not make use of labels are commonly found in computer vision and ar...
Thesis (Ph.D.)--University of Washington, 2020Unsupervised learning is the branch of machine learnin...
Modern computer vision systems heavily rely on statistical machine learning models, which typically ...
This PhD. Thesis consists of two well differentiated parts, each of them focusing on one particular ...
We present a novel clustering objective that learns a neural network classifier from scratch, given ...
International audienceObject segmentation is a crucial problem that is usually solved by using super...
International audiencePixel labeling problem stands among the most commonly considered topics in ima...
We propose a framework for Bayesian unsupervised image segmentation with descriptive, learnable mode...
An instance with a bad mask might make a composite image that uses it look fake. This encourages us ...
International audienceCo-segmentation is defined as jointly partitioning multiple images depicting t...
We approach the object recognition problem as the process of attaching meaningful labels to specific...
Which one comes first: segmentation or recognition? We propose a unified framework for carrying out ...
The development of convolutional neural networks for deep learning has significantly contributed to ...