Neural compression algorithms are typically based on autoencoders that require specialized encoder and decoder architectures for different data modalities. In this paper, we propose COIN++, a neural compression framework that seamlessly handles a wide range of data modalities. Our approach is based on converting data to implicit neural representations, i.e. neural functions that map coordinates (such as pixel locations) to features (such as RGB values). Then, instead of storing the weights of the implicit neural representation directly, we store modulations applied to a meta-learned base network as a compressed code for the data. We further quantize and entropy code these modulations, leading to large compression gains while reducing encodi...
Computer images consist of huge data and thus require more memory space. The compressed image requir...
An image consists of significant info along with demands much more space within the memory. The part...
A variety of compression methods based on encoding images as weights of a neural network have been r...
Neural compression algorithms are typically based on autoencoders that require specialized encoder a...
ABSTRACT It is shown that neural networks (NNs) achieve excellent performances in image compressio...
Neural compression is the application of neural networks and other machine learning methods to data ...
The problem considered is the effective compression of image data. Compared to the many methods whic...
Recently Implicit Neural Representations (INRs) gained attention as a novel and effective representa...
Today, many image coding scenarios do not have a human as final intended user, but rather a machine ...
We propose a new indirect encoding scheme for neural net-works in which the weight matrices are repr...
ABSTRACT It is shown that neural networks (NNs) achieve excellent performances in image compression...
We present an approach for compressing volumetric scalar fields using implicit neural representation...
This paper demonstrates how the Cellular Neural Network Universal Machine (CNNUM) architecture can b...
Abstract — This paper presents a tutorial overview of neural networks as signal processing tools for...
In the past decade, research in machine learning has been principally focused on the development of ...
Computer images consist of huge data and thus require more memory space. The compressed image requir...
An image consists of significant info along with demands much more space within the memory. The part...
A variety of compression methods based on encoding images as weights of a neural network have been r...
Neural compression algorithms are typically based on autoencoders that require specialized encoder a...
ABSTRACT It is shown that neural networks (NNs) achieve excellent performances in image compressio...
Neural compression is the application of neural networks and other machine learning methods to data ...
The problem considered is the effective compression of image data. Compared to the many methods whic...
Recently Implicit Neural Representations (INRs) gained attention as a novel and effective representa...
Today, many image coding scenarios do not have a human as final intended user, but rather a machine ...
We propose a new indirect encoding scheme for neural net-works in which the weight matrices are repr...
ABSTRACT It is shown that neural networks (NNs) achieve excellent performances in image compression...
We present an approach for compressing volumetric scalar fields using implicit neural representation...
This paper demonstrates how the Cellular Neural Network Universal Machine (CNNUM) architecture can b...
Abstract — This paper presents a tutorial overview of neural networks as signal processing tools for...
In the past decade, research in machine learning has been principally focused on the development of ...
Computer images consist of huge data and thus require more memory space. The compressed image requir...
An image consists of significant info along with demands much more space within the memory. The part...
A variety of compression methods based on encoding images as weights of a neural network have been r...