Lossy data compression is a particular type of informational encoding utilizing approximations in order to efficiently tradeoff accuracy in favour of smaller file sizes. The transmission and storage of images is a typical example of this in the modern digital world. However the reconstructed images often suffer from degradation and display observable visual artifacts. Convolutional Neural Networks have garnered much attention in all corners of Computer Vision, including the tasks of image compression and artifact reduction. We study how lossy compression can be extended to higher dimensional images with varying viewpoints, known as light fields. Domain Randomization is explored in detail, and used to generate the largest light field dataset...
International audienceThis paper describes a light field scalable compression scheme based on the sp...
International audienceLight field imaging has recently known a regain of interest due to the availab...
In this article we present a novel dictionary learning framework designed for compression and sampli...
Lossy data compression is a particular type of informational encoding utilizing approximations in or...
International audienceThis paper describes a novel light field compression scheme using a depth imag...
The current trend in imaging technology is to go beyond the 2D representation of the world captured ...
International audienceDeep generative models have proven to be effective priors for solving a variet...
International audienceLight fields are typically represented by multi-view images, and enable post-c...
Light field (LF) imaging has gained significant attention due to its recent success in microscopy, 3...
International audienceWe propose a learning-based method for lossless light field compression. The a...
The contributions of this thesis are new modeling and compression algorithms for stereo images, disp...
International audienceThis paper describes a light field compression scheme based on a novel homogra...
International audienceCompressive light field photography enables light field acquisition using a si...
In recent years, light field imaging has attracted the attention of the academic and industrial comm...
The light field camera provides rich textural and geometric information, but it is still challenging...
International audienceThis paper describes a light field scalable compression scheme based on the sp...
International audienceLight field imaging has recently known a regain of interest due to the availab...
In this article we present a novel dictionary learning framework designed for compression and sampli...
Lossy data compression is a particular type of informational encoding utilizing approximations in or...
International audienceThis paper describes a novel light field compression scheme using a depth imag...
The current trend in imaging technology is to go beyond the 2D representation of the world captured ...
International audienceDeep generative models have proven to be effective priors for solving a variet...
International audienceLight fields are typically represented by multi-view images, and enable post-c...
Light field (LF) imaging has gained significant attention due to its recent success in microscopy, 3...
International audienceWe propose a learning-based method for lossless light field compression. The a...
The contributions of this thesis are new modeling and compression algorithms for stereo images, disp...
International audienceThis paper describes a light field compression scheme based on a novel homogra...
International audienceCompressive light field photography enables light field acquisition using a si...
In recent years, light field imaging has attracted the attention of the academic and industrial comm...
The light field camera provides rich textural and geometric information, but it is still challenging...
International audienceThis paper describes a light field scalable compression scheme based on the sp...
International audienceLight field imaging has recently known a regain of interest due to the availab...
In this article we present a novel dictionary learning framework designed for compression and sampli...