Altres ajuts: acords transformatius de la UABA key aspect of image coding systems is the probability model employed to code the data. The more precise the probability estimates inferred by the model, the higher the coding efficiency achieved. In general, probability models adjust the estimates after coding every new symbol. The main difficulty to apply such a strategy to a highly parallel coding engine is that many symbols are coded simultaneously, so the probability adaptation requires a different approach. The strategy employed in previous works utilizes stationary estimates collected a priori from a training set. Its main drawback is that statistics are dependent of the image type, so different images require different training sets. Thi...
This work examines performance characteristics of multiple shared-memory implementations of a probab...
In this paper, we propose the embedding of a prediction mechanism into a part of the coding structur...
Human beings exhibit rapid learning when presented with a small number of images of a new object. A ...
Abstract—Parallel processing is key to augmenting the throughput of image codecs. Despite numerous e...
Parallel processing is key to augmenting the throughput of image codecs. Despite numerous efforts to...
Considering a small image region and specifying a joint probability distribution which describes the...
International audienceIn this paper, we propose to enhance learned image compression systems with a ...
The set of all possible visual images is huge, but not all of these are equally likely to be encount...
We develop a probability model for natural images, based on empirical observation of their statistic...
We investigate the task of compressing an image using different probability models for different reg...
A mathematical structure used to express image processing transforms, the AFATL image algebra has pr...
The hyperparameter in image restoration by the Bayes formula is an important quantity. This communic...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present a new parallel algorithm for probabilistic graphical model optimization. The algorithm re...
Image coding systems have been traditionally tailored for multiple instruction, multiple data (MIMD)...
This work examines performance characteristics of multiple shared-memory implementations of a probab...
In this paper, we propose the embedding of a prediction mechanism into a part of the coding structur...
Human beings exhibit rapid learning when presented with a small number of images of a new object. A ...
Abstract—Parallel processing is key to augmenting the throughput of image codecs. Despite numerous e...
Parallel processing is key to augmenting the throughput of image codecs. Despite numerous efforts to...
Considering a small image region and specifying a joint probability distribution which describes the...
International audienceIn this paper, we propose to enhance learned image compression systems with a ...
The set of all possible visual images is huge, but not all of these are equally likely to be encount...
We develop a probability model for natural images, based on empirical observation of their statistic...
We investigate the task of compressing an image using different probability models for different reg...
A mathematical structure used to express image processing transforms, the AFATL image algebra has pr...
The hyperparameter in image restoration by the Bayes formula is an important quantity. This communic...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present a new parallel algorithm for probabilistic graphical model optimization. The algorithm re...
Image coding systems have been traditionally tailored for multiple instruction, multiple data (MIMD)...
This work examines performance characteristics of multiple shared-memory implementations of a probab...
In this paper, we propose the embedding of a prediction mechanism into a part of the coding structur...
Human beings exhibit rapid learning when presented with a small number of images of a new object. A ...