No-reference image quality assessment with multi-scale weighted residuals and channel attention mechanism

被引:0
作者
Changzhong Wang
Xiang Lv
Weiping Ding
Xiaodong Fan
机构
[1] Bohai University,College of Mathematics
[2] Nantong university,College of Information Science and Technology
来源
Soft Computing | 2022年 / 26卷
关键词
Multi-scale; No-reference image quality assessment; Channel attention; Active weighted mapping strategy;
D O I
暂无
中图分类号
学科分类号
摘要
With the rapid development of deep learning, no-reference image quality assessment (NR-IQA) based on convolutional neural network (CNN) plays an important role in image processing. Currently, most CNN-based NR-IQA methods focus primarily on the global features of images while ignoring detail-rich local features and channel dependencies. In fact, there are subtle differences in detail between distorted and reference images, as well as differences in the contribution of different channels to IQA. Furthermore, multi-scale feature extraction can be used to fuse the detailed information from images with different resolutions, and the combination of global and local features is critical in extracting image features. As a result, in this paper, a multi-scale residual CNN with an attention mechanism (MsRCANet) is proposed for NR-IQA. Specifically, a multi-scale residual block is first used to extract features from distorted images. Then, the residual learning with active weighted mapping strategy and channel attention mechanism is used to further process image features to obtain more abundant information. Finally, the fusion strategy and full connection layer are used to evaluate image quality. The experimental results on four synthetic databases and three in-the-wild IQA databases, as well as cross-database validation results, show that the proposed method has good generalization ability and can be compared with the most advanced methods.
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页码:13449 / 13465
页数:16
相关论文
共 102 条
  • [1] Anish M(2012)No-reference image quality assessment in the spatial domain IEEE Trans Image Process 12 4695-4708
  • [2] Anush K(2017)Deep neural networks for no-reference and full-reference image quality assessment IEEE Trans Image Process 27 206-219
  • [3] Alan Bovik C(2020)No-reference image quality assessment: an attention driven approach IEEE Trans Image Process 29 6496-6506
  • [4] Bosse S(2019)No-reference color image quality assessment: from entropy to perceptual quality J Image Video Proc 77 1-14
  • [5] Maniry D(2015)Massive online crowdsourced study of subjective and objective picture quality IEEE Trans Image Process 25 372-387
  • [6] Mller K(2019)Generating image distortion maps using convolutional autoencoders with application to no reference image quality assessment IEEE Signal Process Lett 26 89-93
  • [7] Chen D(2017)Perceptual quality prediction on authentically distorted images using a bag of features approach J Vis 17 32-3830
  • [8] Wang Y(2019)Lightness-aware contrast enhancement for images with different illumination conditions Multimed Tools Appl 78 3817-796
  • [9] Gao W(2016)Image detail enhancement with spatially guided filters Signal Process Official Publ Eur Assoc Signal Process 120 789-1740
  • [10] Chen X(2014)Convolutional neural networks for no-reference image quality assessment Proceedings of IEEE conference on computer vision and pattern recognition, Jun. 2014 1733-220