International audienceWe introduce a sparse scattering deep convolutional neural network, which provides a simple model to analyze properties of deep representation learning for classification. Learning a single dictionary matrix with a classifier yields a higher classification accuracy than AlexNet over the ImageNet 2012 dataset. The network first applies a scattering transform that linearizes variabilities due to geometric transformations such as translations and small deformations. A sparse l1 dictionary coding reduces intra-class variability while preserving class separation through projections over unions of linear spaces. It is implemented in a deep convolutional network with a homotopy algorithm having an exponential convergence. A c...
Multi-layer models of sparse coding (deep dictionary learning) and dimensionality reduction (PCANet)...
Scene recognition remains one of the most challenging problems in image understanding. With the help...
Natural images have the intrinsic property that they can be sparsely represented as a linear combina...
This thesis studies empirical properties of deep convolutional neural networks, and in particular th...
International audienceScattering networks are a class of designed Convolutional Neural Networks (CNN...
International audienceWe use the scattering network as a generic and fixed ini-tialization of the fi...
Sparse coding can learn good robust representation to noise and model more higher-order representati...
We introduce a deep scattering network, which computes invariants with iterated con-tractions adapte...
International audienceOn account of its many successes in inference tasks and imaging applications, ...
Computational imaging through scatter generally is accomplished by first characterizing the scatteri...
Deep dictionary learning seeks multiple dictionaries at different image scales to capture complement...
Applying sparse coding on large dataset for image classification is a long standing problem in the f...
The dictionary learning problem, representing data as a combination of a few atoms, has long stood a...
The aim of single image super-resolution (SR) is to gener- ate a high-resolution (HR) image from a l...
Multi-layer models of sparse coding (deep dictionary learning) and dimensionality reduction (PCANet)...
Scene recognition remains one of the most challenging problems in image understanding. With the help...
Natural images have the intrinsic property that they can be sparsely represented as a linear combina...
This thesis studies empirical properties of deep convolutional neural networks, and in particular th...
International audienceScattering networks are a class of designed Convolutional Neural Networks (CNN...
International audienceWe use the scattering network as a generic and fixed ini-tialization of the fi...
Sparse coding can learn good robust representation to noise and model more higher-order representati...
We introduce a deep scattering network, which computes invariants with iterated con-tractions adapte...
International audienceOn account of its many successes in inference tasks and imaging applications, ...
Computational imaging through scatter generally is accomplished by first characterizing the scatteri...
Deep dictionary learning seeks multiple dictionaries at different image scales to capture complement...
Applying sparse coding on large dataset for image classification is a long standing problem in the f...
The dictionary learning problem, representing data as a combination of a few atoms, has long stood a...
The aim of single image super-resolution (SR) is to gener- ate a high-resolution (HR) image from a l...
Multi-layer models of sparse coding (deep dictionary learning) and dimensionality reduction (PCANet)...
Scene recognition remains one of the most challenging problems in image understanding. With the help...
Natural images have the intrinsic property that they can be sparsely represented as a linear combina...