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EGB: Image Quality Assessment based on Ensemble of Gradient Boosting

机译:EGB:基于梯度升压集合的图像质量评估

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Multimedia services are constantly trying to deliver better image quality to users. To meet this need, they must have an effective and reliable tool to assess the perceptual image quality. This is particularly true for image restoration (IR) algorithms, where the image quality assessment (IQA) metric plays a key role in the development of these latter. For instance, the recent advances in IR algorithms, which are mainly due to the adoption of generative adversarial network (GAN)-based methods, have clearly shown the need for a reliable IQA metric highly correlated with human judgment. In this paper, we propose an ensemble of gradient boosting (EGB) metric based on selected features similarity and ensemble learning. First, we analyzed the capability of features extracted by different layers of deep convolutional neural network (CNN) to characterize the perceptual quality distance between the reference and distorted/processed images. We observed that a subset of these layers is more relevant to the IQA task. Accordingly, we exploited these selected layers to compute the features similarity, which are then used as input to a regression network to predict the image quality score. The regression network consists of three gradient boosting regression models that are combined to derive the final quality score. Experiments were performed on the perceptual image processing algorithms (PIPAL) dataset, which has been used in the NTIRE 2021 perceptual image quality assessment challenge. The results show that the proposed metric significantly outperforms the state-of-the-art methods for IQA task. The source code is available at: https://github.com/Dounia18/EGB.
机译:多媒体服务不断尝试向用户提供更好的图像质量。为了满足这种需求,他们必须具有有效且可靠的工具来评估感知图像质量。这对于图像恢复(IR)算法尤其如此,其中图像质量评估(IQA)度量在这些后者的开发中起着关键作用。例如,IR算法最近的主要原因主要是由于采用了生成的对抗网络(GaN)的方法,已经清楚地表明了对与人类判断高度相关的可靠IQA度量的需求。在本文中,我们提出了一种基于所选择的特征相似性和集合学习的梯度升压(EGB)度量的集合。首先,我们分析了由深卷积神经网络(CNN)的不同层提取的特征的能力,以表征参考和失真/处理图像之间的感知质量距离。我们观察到这些层的子集与IQA任务更相关。因此,我们利用这些所选择的层来计算特征相似性,然后将其用作回归网络的输入来预测图像质量分数。回归网络由三个渐变升压回归模型组成,组合以导出最终质量分数。对感知图像处理算法(PIPAL)数据集进行实验,该数据集已用于NTIRE 2021感知图像质量评估挑战。结果表明,该拟议度量显着优于IQA任务的最先进方法。源代码可用于:https://github.com/dounia18/GB。

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