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Distortion based image quality index

机译:基于失真的图像质量指标

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摘要

In this paper, we tackle the problem of no-reference image quality assessment. This paper proposes a non-distortion-specific image quality evaluator, i.e., deep learning based blind image quality index DL-BIQI, which trained several deep models to estimate the visual quality. Since different distortion types lead to the different influence on images, each model is designed for a specific distortion type. Meanwhile, another deep classification model is proposed to estimate the presence of a set of distortions in the testing image. The final visual quality is obtained by a probability-weighted summation. Experiments were conducted on the LIVE dataset [1] to evaluate its effectiveness. The performance of the proposed method achieves 0.951 for SROCC. It outperforms the state-of-the-art methods for comparison. Besides, it is shown that the proposed deep classification model achieves 93.7% accuracy on the LIVE dataset.
机译:在本文中,我们解决了无参考图像质量评估的问题。本文提出了一种非失真特定的图像质量评估器,即基于深度学习的盲图像质量指标DL-BIQI,它训练了几种深度模型来估计视觉质量。由于不同的失真类型导致对图像的不同影响,因此每种模型都针对特定的失真类型进行设计。同时,提出了另一个深度分类模型来估计测试图像中一组失真的存在。最终的视觉质量是通过概率加权求和获得的。在LIVE数据集[1]上进行了实验,以评估其有效性。对于SROCC,该方法的性能达到0.951。它优于最新的比较方法。此外,结果表明,所提出的深度分类模型在LIVE数据集上的准确率达到93.7%。

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