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Single Stage Adaptive Multi-Attention Network for Image Restoration

  • Anas Zafar
  • , Danyal Aftab
  • , Rizwan Qureshi
  • , Xinqi Fan
  • , Pingjun Chen
  • , Jia Wu
  • , Hazrat Ali
  • , Shah Nawaz
  • , Sheheryar Khan
  • , Mubarak Shah

Research output: Contribution to journalArticlepeer-review

29 Citations (Scopus)

Abstract

Recently attention-based networks have been successful for image restoration tasks. However, existing methods are either computationally expensive or have limited receptive fields, adding constraints to the model. They are also less resilient in spatial and contextual aspects and lack pixel-to-pixel correspondence, which may degrade feature representations. In this paper, we propose a novel and computationally efficient architecture Single Stage Adaptive Multi-Attention Network (SSAMAN) for image restoration tasks, particularly for image denoising and image deblurring. SSAMAN efficiently addresses computational challenges and expands receptive fields, enhancing robustness in spatial and contextual feature representation. Its Adaptive Multi-Attention Module (AMAM), which consists of Adaptive Pixel Attention Branch (APAB) and an Adaptive Channel Attention Branch (ACAB), uniquely integrates channel and pixel-wise dimensions, significantly improving sensitivity to edges, shapes, and textures. We perform extensive experiments and ablation studies to validate the performance of SSAMAN. Our model shows stateof-the-art results on various benchmarks, for example, on image denoising tasks, SSAMAN achieves a notable 40.08 dB PSNR on SIDD dataset, outperforming Restormer by 0.06 dB PSNR, with 41.02% less computational cost, and achieves a 40.05 dB PSNR on the DND dataset. For image deblurring, SSAMAN achieves 33.53 dB PSNR on GoPro dataset. Code and models are available
at Github.
Original languageEnglish
Pages (from-to)2924-2935
Number of pages12
JournalIEEE Transactions on Image Processing
Volume33
DOIs
Publication statusPublished - 12 Apr 2024

Keywords

  • Attention Networks
  • Adaptive Multi Attention module
  • Adaptive Pixel Attention
  • Image Processing, Computer-Assisted/methods
  • Image restoration
  • Computer vision
  • deep learning (DL)

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