Command Palette
Search for a command to run...
Implicit Dual-domain Convolutional Network for Robust Color Image Compression Artifact Reduction
Zheng Bolun ; Chen Yaowu ; Tian Xiang ; Zhou Fan ; Liu Xuesong

Abstract
Several dual-domain convolutional neural network-based methods showoutstanding performance in reducing image compression artifacts. However, theysuffer from handling color images because the compression processes forgray-scale and color images are completely different. Moreover, these methodstrain a specific model for each compression quality and require multiple modelsto achieve different compression qualities. To address these problems, weproposed an implicit dual-domain convolutional network (IDCN) with the pixelposition labeling map and the quantization tables as inputs. Specifically, weproposed an extractor-corrector framework-based dual-domain correction unit(DCU) as the basic component to formulate the IDCN. A dense block wasintroduced to improve the performance of extractor in DRU. The implicitdual-domain translation allows the IDCN to handle color images with thediscrete cosine transform (DCT)-domain priors. A flexible version of IDCN(IDCN-f) was developed to handle a wide range of compression qualities.Experiments for both objective and subjective evaluations on benchmark datasetsshow that IDCN is superior to the state-of-the-art methods and IDCN-f exhibitsexcellent abilities to handle a wide range of compression qualities with littleperformance sacrifice and demonstrates great potential for practicalapplications.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| jpeg-artifact-correction-on-icb-quality-10 | IDCN | PSNR: 31.71 PSNR-B: 32.02 SSIM: 0.809 |
| jpeg-artifact-correction-on-icb-quality-10-1 | IDCN | PSNR: 32.50 PSNR-B: 32.42 SSIM: 0.826 |
| jpeg-artifact-correction-on-icb-quality-20 | IDCN | PSNR: 33.99 PSNR-B: 34.37 SSIM: 0.838 |
| jpeg-artifact-correction-on-icb-quality-20-1 | IDCN | PSNR: 34.30 PSNR-B: 34.18 SSIM: 0.851 |
| jpeg-artifact-correction-on-live1-quality-10 | IDCN | PSNR: 27.63 PSNR-B: 27.63 SSIM: 0.816 |
| jpeg-artifact-correction-on-live1-quality-10-1 | IDCN | PSNR: 29.71 PSNR-B: 29.66 SSIM: 0.838 |
| jpeg-artifact-correction-on-live1-quality-20 | IDCN | PSNR: 30.04 PSNR-B: 30.01 SSIM: 0.882 |
| jpeg-artifact-correction-on-live1-quality-20-1 | IDCN | PSNR: 32.09 PSNR-B: 32.00 SSIM: 0.9006 |
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.