Implicit Dual-domain Convolutional Network for Robust Color Image Compression Artifact Reduction

18 Oct 2018  ·  Bolun Zheng, Yaowu Chen, Xiang Tian, Fan Zhou, Xuesong Liu ·

Several dual-domain convolutional neural network-based methods show outstanding performance in reducing image compression artifacts. However, they suffer from handling color images because the compression processes for gray-scale and color images are completely different. Moreover, these methods train a specific model for each compression quality and require multiple models to achieve different compression qualities. To address these problems, we proposed an implicit dual-domain convolutional network (IDCN) with the pixel position labeling map and the quantization tables as inputs. Specifically, we proposed an extractor-corrector framework-based dual-domain correction unit (DCU) as the basic component to formulate the IDCN. A dense block was introduced to improve the performance of extractor in DRU. The implicit dual-domain translation allows the IDCN to handle color images with the discrete 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 datasets show that IDCN is superior to the state-of-the-art methods and IDCN-f exhibits excellent abilities to handle a wide range of compression qualities with little performance sacrifice and demonstrates great potential for practical applications.

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Task Dataset Model Metric Name Metric Value Global Rank Benchmark
JPEG Artifact Correction ICB (Quality 10 Color) IDCN PSNR 31.71 # 3
PSNR-B 32.02 # 3
SSIM 0.809 # 3
JPEG Artifact Correction ICB (Quality 10 Grayscale) IDCN PSNR 32.50 # 4
PSNR-B 32.42 # 4
SSIM 0.826 # 4
JPEG Artifact Correction ICB (Quality 20 Color) IDCN PSNR 33.99 # 3
PSNR-B 34.37 # 2
SSIM 0.838 # 3
JPEG Artifact Correction ICB (Quality 20 Grayscale) IDCN PSNR 34.30 # 5
PSNR-B 34.18 # 4
SSIM 0.851 # 5
JPEG Artifact Correction LIVE1 (Quality 10 Color) IDCN PSNR 27.63 # 3
PSNR-B 27.63 # 1
SSIM 0.816 # 2
JPEG Artifact Correction Live1 (Quality 10 Grayscale) IDCN PSNR 29.71 # 2
PSNR-B 29.66 # 1
SSIM 0.838 # 2
JPEG Artifact Correction LIVE1 (Quality 20 Color) IDCN PSNR 30.04 # 2
PSNR-B 30.01 # 1
SSIM 0.882 # 1
JPEG Artifact Correction LIVE1 (Quality 20 Grayscale) IDCN PSNR 32.09 # 3
PSNR-B 32.00 # 1
SSIM 0.9006 # 2

Methods