On the Benefit of Parameter-Driven Approaches For The Modeling and The Prediction of Satisfied User Ratio For Compressed Video
Jingwen Zhu, Patrick Le Callet, Anne-Flore Perrin, Sriram Sethuraman, Kumar Rahul
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This study proposes an image domain restoration network for metal artifact reduction in clinical computed tomography images. Specifically, we have proposed a pool and excite module to identify the streaking artifacts in the hidden latent space via learning a sigmoidal mask and a novel gated convolution layer, which utilises the previously learned gating weights for the reduction of metal artifacts. Our formulation of gated convolution is unique and custom-made to deal with metal artifacts. Extensive experiments on real CT images show that our method accomplishes significant improvement over the current state-of-the-art methods without requiring additional data, e.g., projection data, metal trace, etc.