Command Palette
Search for a command to run...
Yann Dubois Benjamin Bloem-Reddy Karen Ullrich Chris J. Maddison

Abstract
Most data is automatically collected and only ever "seen" by algorithms. Yet, data compressors preserve perceptual fidelity rather than just the information needed by algorithms performing downstream tasks. In this paper, we characterize the bit-rate required to ensure high performance on all predictive tasks that are invariant under a set of transformations, such as data augmentations. Based on our theory, we design unsupervised objectives for training neural compressors. Using these objectives, we train a generic image compressor that achieves substantial rate savings (more than $1000\times$ on ImageNet) compared to JPEG on 8 datasets, without decreasing downstream classification performance.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| image-compression-on-caltech101 | Lossyless Compressor | Bit rate: 1340 |
| image-compression-on-cars-196 | Lossyless Compressor | Bit rate: 1470 |
| image-compression-on-cifar-10 | Lossyless Compressor | Bit rate: 1410 |
| image-compression-on-food-101 | Lossyless Compressor | Bit rate: 1270 |
| image-compression-on-oxford-iiit-pets | Lossyless Compressor | Bit rate: 1210 |
| image-compression-on-pcam | Lossyless Compressor | Bit rate: 1490 |
| image-compression-on-stl-10 | Lossyless Compressor | Bit rate: 1340 |
Build AI with AI
From idea to launch — accelerate your AI development with free AI co-coding, out-of-the-box environment and best price of GPUs.