Infrared and Laser Engineering, Volume. 47, Issue 7, 703004(2018)

Deep learning of full-reference image quality assessment based on human visual properties

Yao Wang1,2,3, Liu Yunpeng1,3, and Zhu Changbo1,2,4
Author Affiliations
  • 1[in Chinese]
  • 2[in Chinese]
  • 3[in Chinese]
  • 4[in Chinese]
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    References(15)

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    [10] [10] Li Y, Po L M, Feng L, et al. No-reference image quality assessment with deep convolutional neural networks[C]// IEEE International Conference on Digital Signal Processing, 2017: 685-689.

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    Yao Wang, Liu Yunpeng, Zhu Changbo. Deep learning of full-reference image quality assessment based on human visual properties[J]. Infrared and Laser Engineering, 2018, 47(7): 703004

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    Paper Information

    Category: 特约专栏—“深度学习及其应用”

    Received: Apr. 10, 2018

    Accepted: May. 20, 2018

    Published Online: Aug. 30, 2018

    The Author Email:

    DOI:10.3788/irla201847.0703004

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