International audienceThis paper explores the problem of learning transforms for image compression via autoencoders. Usually, the rate-distortion performances of image compression are tuned by varying the quantization step size. In the case of autoen-coders, this in principle would require learning one transform per rate-distortion point at a given quantization step size. Here, we show that comparable performances can be obtained with a unique learned transform. The different rate-distortion points are then reached by varying the quantization step size at test time. This approach saves a lot of training time
The data of natural images is not stationary, and the coding complexity of images varies from region...
End-to-end deep trainable models are about to exceed the performance of the traditional handcrafted ...
Neural-based image and video codecs are significantly more power-efficient when weights and activati...
International audienceThis paper explores the problem of learning transforms for image compression v...
National audienceThis work relates to image compression via a transform learned by an auto-encoder. ...
Deep-learned variational auto-encoders (VAE) have shown remarkable capabilities for lossy image comp...
With the development of deep learning techniques, the combination of deep learning with image compre...
International audienceWe tackle the problem of producing compact models, maximizing their accuracy f...
International audienceThis paper considers the problem of image compression with shallow sparse auto...
International audienceThis paper addresses the problem of image compression using sparse representat...
It has been witnessed that learned image compression has outperformed conventional image coding tech...
Ces vingt dernières années, la quantité d’images et de vidéos transmises a augmenté significativemen...
Learned lossy image compression has demonstrated impressive progress via end-to-end neural network t...
This article examines the problem of compressing a uniformly quantized independent and identically d...
Image compression standards rely on predictive coding, transform coding, quantization and entropy co...
The data of natural images is not stationary, and the coding complexity of images varies from region...
End-to-end deep trainable models are about to exceed the performance of the traditional handcrafted ...
Neural-based image and video codecs are significantly more power-efficient when weights and activati...
International audienceThis paper explores the problem of learning transforms for image compression v...
National audienceThis work relates to image compression via a transform learned by an auto-encoder. ...
Deep-learned variational auto-encoders (VAE) have shown remarkable capabilities for lossy image comp...
With the development of deep learning techniques, the combination of deep learning with image compre...
International audienceWe tackle the problem of producing compact models, maximizing their accuracy f...
International audienceThis paper considers the problem of image compression with shallow sparse auto...
International audienceThis paper addresses the problem of image compression using sparse representat...
It has been witnessed that learned image compression has outperformed conventional image coding tech...
Ces vingt dernières années, la quantité d’images et de vidéos transmises a augmenté significativemen...
Learned lossy image compression has demonstrated impressive progress via end-to-end neural network t...
This article examines the problem of compressing a uniformly quantized independent and identically d...
Image compression standards rely on predictive coding, transform coding, quantization and entropy co...
The data of natural images is not stationary, and the coding complexity of images varies from region...
End-to-end deep trainable models are about to exceed the performance of the traditional handcrafted ...
Neural-based image and video codecs are significantly more power-efficient when weights and activati...