基于生物视觉标准模型特征的无参考型图像质量评价方法
杨亚威, 李俊山, 张士杰, 芦鸿雁, 胡双演. 基于生物视觉标准模型特征的无参考型图像质量评价方法[J]. 液晶与显示, 2014, 29(6): 1016.
YANG Yawei, LI Junshan, ZHANG Shijie, LU Hongyan, HU Shuangyan. Non reference image quality assessment approach based on standard model features of biological vision[J]. Chinese Journal of Liquid Crystals and Displays, 2014, 29(6): 1016.
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杨亚威, 李俊山, 张士杰, 芦鸿雁, 胡双演. 基于生物视觉标准模型特征的无参考型图像质量评价方法[J]. 液晶与显示, 2014, 29(6): 1016. YANG Yawei, LI Junshan, ZHANG Shijie, LU Hongyan, HU Shuangyan. Non reference image quality assessment approach based on standard model features of biological vision[J]. Chinese Journal of Liquid Crystals and Displays, 2014, 29(6): 1016.