Variational Autoencoders (VAEs) have seen widespread use in learned image compression. They are used to learn expressive latent representations on which downstream compression methods can operate with high efficiency. Recently proposed ‘bits-back’ methods can indirectly encode the latent representation of images with codelength close to the relative entropy between the latent posterior and the prior. However, due to the underlying algorithm, these methods can only be used for lossless compression, and they only achieve their nominal efficiency when compressing multiple images simultaneously; they are inefficient for compressing single images. As an alternative, we propose a novel method, Relative Entropy Coding (REC), that can directly enco...
An effective data compressor is becoming increasingly critical to today\u27s scientific research, an...
Questing for learned lossy image coding (LIC) with superior compression performance and computation ...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Variational Autoencoders (VAEs) have seen widespread use in learned image compression. They are used...
Relative entropy coding (REC) algorithms encode a sample from a target distribution $Q$ using a prop...
We develop a simple and elegant method for lossless compression using latent variable models, which ...
A universal method of decoding transform-coded images using the principle of minimum relative entrop...
© 2021 European Signal Processing Conference, EUSIPCO. All rights reserved.The use of neural network...
Recently, learned image compression methods have outperformed traditional hand-crafted ones includin...
This work develops iterative algorithms for decoding cascade-coded images by Relative Entropy (RE) m...
This paper explores a new paradigm for decomposing an image by seeking a compressed representation o...
Learned image compression has recently shown the potential to outperform the standard codecs. State-...
Recently, learned image compression has achieved remarkable performance. The entropy model, which es...
The growing adoption of point clouds as an imaging modality has stimulated the search for efficient ...
Prior to this work, lossless image compression schemes implicitly assumed that an image is scanned i...
An effective data compressor is becoming increasingly critical to today\u27s scientific research, an...
Questing for learned lossy image coding (LIC) with superior compression performance and computation ...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Variational Autoencoders (VAEs) have seen widespread use in learned image compression. They are used...
Relative entropy coding (REC) algorithms encode a sample from a target distribution $Q$ using a prop...
We develop a simple and elegant method for lossless compression using latent variable models, which ...
A universal method of decoding transform-coded images using the principle of minimum relative entrop...
© 2021 European Signal Processing Conference, EUSIPCO. All rights reserved.The use of neural network...
Recently, learned image compression methods have outperformed traditional hand-crafted ones includin...
This work develops iterative algorithms for decoding cascade-coded images by Relative Entropy (RE) m...
This paper explores a new paradigm for decomposing an image by seeking a compressed representation o...
Learned image compression has recently shown the potential to outperform the standard codecs. State-...
Recently, learned image compression has achieved remarkable performance. The entropy model, which es...
The growing adoption of point clouds as an imaging modality has stimulated the search for efficient ...
Prior to this work, lossless image compression schemes implicitly assumed that an image is scanned i...
An effective data compressor is becoming increasingly critical to today\u27s scientific research, an...
Questing for learned lossy image coding (LIC) with superior compression performance and computation ...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...