Reference-Based Jpeg Image Artifacts Removal
Weigang Song, Jiahuan Ji, Baojiang Zhong
-
SPS
IEEE Members: $11.00
Non-members: $15.00Length: 00:08:19
in this paper, we propose a novel solution, termed DML-IQA, for the image quality assessment (IQA) tasks. DML-IQA holds a dual-branch network architecture and builds the IQA model through a deep mutual learning (DML) strategy. Specifically, the two branches extract stable feature representations by feeding different transformed images into the classical CNNs. The DML strategy first calculates the prediction loss of each branch and the consistency loss across two branches, followed by updating the network iteratively to converge. Overall, DML-IQA has the following advantages: 1) It is flexible to adapt to diverse backbones for tackling the IQA issues in both the laboratory and wild; 2) It improves the baseline?s performance by approximately 1%~2%, especially performs well in the case of small samples. Extensive experiments on four public datasets show that the proposed DML-IQA can handle the IQA tasks with considerable effectiveness and generalization.