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Q-DNN: A quality-aware deep neural network for blind assessment of enhanced images

机译:Q-DNN:一种质量意识的深度神经网络,用于增强图像的盲评估

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Image enhancement is widely popular due to its capability of producing "better" visual quality for specific applications. Although many enhancement algorithms have been developed in recent years, the studies towards blind assessment of enhanced images are still very lacking. In this paper, we propose a data-driven blind image quality assessment (BIQA) method based on the quality-aware deep neural network (Q-DNN). Unlike the conventional hand-crafted features designed for measuring the degradation level of specific distortion types, a supervised learning model is utilized in our Q-DNN, which is capable of adaptively updating the feature extractor and quality regressor for describing the visual artifacts caused by different image enhancement tasks. Experimental results on two challenging enhanced image databases show that the proposed method is significantly superior to the state-of-the-art BIQA metrics.
机译:由于其为特定应用的“更好”的视觉质量产生了“更好”的视觉质量,图像增强很受欢迎。近年来已经开发了许多增强算法,但对增强图像的盲目评估的研究仍然非常缺乏。在本文中,我们提出了一种基于质量意识的深神经网络(Q-DNN)的数据驱动的盲图像质量评估(BIQA)方法。与设计用于测量特定失真类型的劣化水平的传统手工制作功能不同,我们的Q-DNN在Q-DNN中使用了监督学习模型,其能够自适应地更新特征提取器和质量回归,用于描述由不同引起的视觉伪像图像增强任务。两个具有挑战性的增强图像数据库的实验结果表明,该方法明显优于最先进的BIQA度量。

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