A Vision Enhancement Network for Image Quality Assessment

Xinyu Jiang, Jiangbo Xu, Ruoyu Zou
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Abstract

With the development and update of electronic equipment, image quality assessment has become one of the hot topics. Recently, digital image processing and convolutional neural networks (CNN) have made significant progress. However, the models based on human vision characteristics and neural feedback have poor performance in previous studies. Inspired by this, we propose a CNN-based network, vision enhancement network (VE-Net). It can filter images adaptively according to the key regions. Key regions are extracted with the incentive support method from deep information learned by CNN. The adaptive filter uses Laplacian filter and Gaussian filter. Laplacian filter adopts a linear lifting algorithm, aiming to attach the image texture to the original image. Squared earth mover’s distance (EMD) loss is selected to predict the image aesthetic score distribution. VE-Net is evaluated on AVA dataset for the regression task and the classification task. Experiments show the superiority of VE-Net.
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用于图像质量评估的视觉增强网络
随着电子设备的发展和更新,图像质量评估已成为一个热门话题。近年来,数字图像处理和卷积神经网络(CNN)取得了重大进展。然而,基于人类视觉特征和神经反馈的模型在以往的研究中表现不佳。受此启发,我们提出了一种基于cnn的网络,视觉增强网络(VE-Net)。它可以根据关键区域对图像进行自适应滤波。用激励支持法从CNN学习到的深度信息中提取关键区域。自适应滤波器采用拉普拉斯滤波器和高斯滤波器。拉普拉斯滤波采用线性提升算法,目的是将图像纹理附加到原始图像上。选择方推土机的距离损失(EMD)来预测图像的美学分数分布。在AVA数据集上评估VE-Net的回归任务和分类任务。实验证明了VE-Net的优越性。
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