Autoencoders are a type of unsupervised neural networks, which can be used to solve various tasks, e.g., dimensionality reduction, image compression, and image denoising. An AE has two goals: (i) compress the original input to a low-dimensional space at the bottleneck of the network topology using an encoder, (ii) reconstruct the input from the representation at the bottleneck using a decoder. Both encoder and decoder are optimized jointly by minimizing a distortion-based loss which implicitly forces the model to keep only those variations of input data that are required to reconstruct the and to reduce redundancies. In this paper, we propose a scheme to explicitly penalize feature redundancies in the bottleneck representation. To this end,...
Autoencoders and their variations provide unsupervised models for learning low-dimensional represent...
Deep convolutional neural networks have shown remarkable performance in the image classification dom...
We present a representation learning method that learns features at multiple dif-ferent levels of sc...
Autoencoders are certainly among the most studied and used Deep Learning models: the idea behind the...
The success of modern machine learning algorithms depends crucially on efficient data representation...
End-to-end deep trainable models are about to exceed the performance of the traditional handcrafted ...
We present a self-supervised method to disentangle factors of variation in high-dimensional data tha...
A common belief in designing deep autoencoders (AEs), a type of unsupervised neural network, is that...
An autoencoder is a layered neural network whose structure can be viewed as consisting of an encoder...
Today, many image coding scenarios do not have a human as final intended user, but rather a machine ...
This is the author’s version of a work that was accepted for publication in Neurocomputing. Changes ...
Efficient model compression techniques are required to deploy deep neural networks (DNNs) on edge de...
Autoencoders are data-specific compression algorithms learned automatically from examples. The predo...
The auto-encoder model plays a crucial role in the success of deep learning. During the pre-training...
Abstract. We present a modification of the bottleneck neural network for dimensionality reduction. W...
Autoencoders and their variations provide unsupervised models for learning low-dimensional represent...
Deep convolutional neural networks have shown remarkable performance in the image classification dom...
We present a representation learning method that learns features at multiple dif-ferent levels of sc...
Autoencoders are certainly among the most studied and used Deep Learning models: the idea behind the...
The success of modern machine learning algorithms depends crucially on efficient data representation...
End-to-end deep trainable models are about to exceed the performance of the traditional handcrafted ...
We present a self-supervised method to disentangle factors of variation in high-dimensional data tha...
A common belief in designing deep autoencoders (AEs), a type of unsupervised neural network, is that...
An autoencoder is a layered neural network whose structure can be viewed as consisting of an encoder...
Today, many image coding scenarios do not have a human as final intended user, but rather a machine ...
This is the author’s version of a work that was accepted for publication in Neurocomputing. Changes ...
Efficient model compression techniques are required to deploy deep neural networks (DNNs) on edge de...
Autoencoders are data-specific compression algorithms learned automatically from examples. The predo...
The auto-encoder model plays a crucial role in the success of deep learning. During the pre-training...
Abstract. We present a modification of the bottleneck neural network for dimensionality reduction. W...
Autoencoders and their variations provide unsupervised models for learning low-dimensional represent...
Deep convolutional neural networks have shown remarkable performance in the image classification dom...
We present a representation learning method that learns features at multiple dif-ferent levels of sc...