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In an attempt to overcome these challenges, researchers from Google introduced “Sample What You Can’t Compress,” which couples autoencoder-based representation learning with diffusion models. This ...
This study aims to explore an autoencoder-based method for generating brain MRI images of patients with Autism Spectrum Disorder (ASD) and non-ASD individuals, and to discriminate ASD based on the ...
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Memristor-based storage system with convolutional autoencoder-based image compression network Journal: Nature Communications Published: 2024-02-07 DOI: 10.1038/s41467-024-45312-0 Affiliations: 2 ...
Finally, the autoencoder encodes images in two paths to achieve efficient compression and higher image quality when reconstructing images. The main path completes the compression task with a low bit ...
Convolutional Neural Network (CNN) Image Compression - neuralnetwork-jpeg/Deep CNN Autoencoder - Image Compression copy.ipynb at master · sumn2u/neuralnetwork-jpeg ...
Secure transmission of images over a communication channel, with limited data transfer capacity, possesses compression and encryption schemes. A deep learning based hybrid image compression-encryption ...
In a new paper, University of Oxford researchers introduce a novel image compression approach that outperforms the JPEG standard at low bitrates, even without entropy coding or learning a distribution ...