Autoencoders are composed of coding and decoding units, hence they hold the inherent potential of high-performance data compression and signal compressed sensing. The main disadvantages of current autoencoders comprise the following several aspects: the research objective is not data reconstruction but feature representation; the performance evaluation of data recovery is neglected; it is hard to achieve lossless data reconstruction by pure autoencoders, even by pure deep learning. This paper aims for image reconstruction of autoencoders, employs cascade decoders-based autoencoders, perfects the performance of image reconstruction, approaches gradually lossless image recovery, and provides solid theory and application basis for autoencoders...
Error-bounded lossy compression is becoming an indispensable technique for the success of today's sc...
Many machine vision applications require predictions for every pixel of the input image (for example...
Auto-encoders play a fundamental role in unsupervised feature learning and learning initial paramete...
The world is experiencing an increasing boom in computer vision. This is more and more used in many...
International audienceThis paper considers the problem of image compression with shallow sparse auto...
Autoencoders are certainly among the most studied and used Deep Learning models: the idea behind the...
In recent decades, digital image processing has gained enormous popularity. Consequently, a number o...
The extensive use of images in many fields increased the demand for image compression algorithms to ...
Image compression can save billions of dollars in the industry by reducing the bits needed to store ...
Abstract Compressed sensing (CS) is a signal processing framework, which reconstructs a signal from ...
A large number of deep learning methods applied to computer vision problems require encoder-decoder ...
Recently, learned image compression algorithms have shown incredible performance compared to classic...
Autoencoders are data-specific compression algorithms learned automatically from examples. The predo...
Autoencoders learn data representations through reconstruction. Robust training is the key factor af...
AutoEncoders are the simplest and most powerful type of Artificial Neural Network in Artificial Inte...
Error-bounded lossy compression is becoming an indispensable technique for the success of today's sc...
Many machine vision applications require predictions for every pixel of the input image (for example...
Auto-encoders play a fundamental role in unsupervised feature learning and learning initial paramete...
The world is experiencing an increasing boom in computer vision. This is more and more used in many...
International audienceThis paper considers the problem of image compression with shallow sparse auto...
Autoencoders are certainly among the most studied and used Deep Learning models: the idea behind the...
In recent decades, digital image processing has gained enormous popularity. Consequently, a number o...
The extensive use of images in many fields increased the demand for image compression algorithms to ...
Image compression can save billions of dollars in the industry by reducing the bits needed to store ...
Abstract Compressed sensing (CS) is a signal processing framework, which reconstructs a signal from ...
A large number of deep learning methods applied to computer vision problems require encoder-decoder ...
Recently, learned image compression algorithms have shown incredible performance compared to classic...
Autoencoders are data-specific compression algorithms learned automatically from examples. The predo...
Autoencoders learn data representations through reconstruction. Robust training is the key factor af...
AutoEncoders are the simplest and most powerful type of Artificial Neural Network in Artificial Inte...
Error-bounded lossy compression is becoming an indispensable technique for the success of today's sc...
Many machine vision applications require predictions for every pixel of the input image (for example...
Auto-encoders play a fundamental role in unsupervised feature learning and learning initial paramete...