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No-reference image quality assessment based on deep learning method

机译:基于深度学习方法的无参考图像质量评估

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In this work, we adopt the use of deep learning method for no-reference image quality assessment. With the development of deep neural networks technology, foundational and deep features of images could be captured without much prior knowledge. So a sparse autoencoder (SAE) was trained to express a 32 × 32 pixels image into a feature vector. Then the original images were cut into serial sub-images with the size of 32 × 32 pixels which can fix the input size of SAE. After that, the features vector of each sub-image was extracted separately and the information was fused with two strategies for the image quality assessment task. The best strategy in this work is that each sub-score is calculated by a Support Vector Regression (SVR) machine with the input of sub-image feature vector and estimate the image quality by averaging the scores to get the final score for the original image. Moreover, the effectiveness of our proposed method was confirmed by the experimental results in the TID2013 image quality assessment database.
机译:在这项工作中,我们采用深度学习方法进行无参考图像质量评估。随着深度神经网络技术的发展,无需很多先验知识就可以捕获图像的基础和深层特征。因此,训练了一个稀疏自动编码器(SAE)以将32×32像素的图像表达为特征向量。然后将原始图像切成32×32像素大小的串行子图像,可以固定SAE的输入大小。之后,分别提取每个子图像的特征向量,并将信息与两种策略融合以完成图像质量评估任务。这项工作中最好的策略是,每个子分数由支持向量回归(SVR)机器使用子图像特征向量的输入来计算,并通过对分数取平均以获得原始图像的最终分数来估计图像质量。此外,TID2013图像质量评估数据库中的实验结果证实了我们提出的方法的有效性。

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