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首页> 外文期刊>Journal of visual communication & image representation >Screen content image quality assessment based on convolutional neural networks
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Screen content image quality assessment based on convolutional neural networks

机译:基于卷积神经网络的屏幕内容图像质量评估

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Screen content image (SCI) is a composite image including textual and pictorial regions resulting in many difficulties in image quality assessment (IQA). Large SCIs are divided into image patches to increase training samples for CNN training of IQA model, and this brings two problems: (1) local quality of each image patch is not equal to subjective differential mean opinion score (DMOS) of an entire image; (2) importance of different image patches is not same for quality assessment. In this paper, we propose a novel no-reference (NR) IQA model based on the convolutional neural network (CNN) for assessing the perceptual quality of SCIs. Our model conducts two designs solving problems which benefits from two strategies. For the first strategy, to imitate full-reference (FR) CNN-based model behavior, a CNN-based model is designed for both FR and NR IQA, and performance of NR-IQA part improves when the image patch scores predicted by FR-IQA part are adopted as the ground-truth to train NR-IQA part. For the second strategy, image patch qualities of one entire SCI are fused to obtain the SCI quality with an adaptive weighting method taking account the effect of the different image patch contents. Experimental results verify that our model outperforms all test NR IQA methods and most FR IQA methods on the screen content image quality assessment database (SIQAD). On the cross-database evaluation, the proposed method outperforms the existing NR IQA method in terms of at least 2.4 percent in PLCC and 2.8 percent in SRCC, which shows high generalization ability and high effectiveness of our model, (C) 2019 Elsevier Inc. All rights reserved.
机译:屏幕内容图像(SCI)是一种复合图像,包括文本和图案区域,导致图像质量评估(IQA)中的许多困难。大型SCIS分为图像补丁,以增加IQA模型的CNN培训的训练样本,这带来了两个问题:(1)每个图像补丁的本地质量不等于整个图像的主观差分均值意见分数(DMOS); (2)不同图像补丁的重要性对于质量评估不相同。在本文中,我们提出了一种基于卷积神经网络(CNN)的新型无参考(NR)IQA模型,用于评估SCI的感知质量。我们的模型进行了两个设计解决了两种策略的问题。对于第一种策略,为了模仿基于CNN的模型行为,设计了一种基于CNN的模型,为FR和NR IQA设计,并且当通过FR-预测的图像修补程序分数时,NR-IQA部分的性能提高了IQA部分被作为培训NR-IQA部分的地面真理。对于第二策略,融合一个整个SCI的图像补丁质量,以获得具有自适应加权方法的SCI质量,以考虑不同图像修补程序内容的效果。实验结果验证了我们的模型优于所有测试NR IQA方法以及屏幕内容图像质量评估数据库(SIQAD)上的大多数FR IQA方法。在交叉数据库评估中,所提出的方法在PLCC中的至少2.4%和SRCC中的2.8%,表现出我们模型的高概率和高效率,(C)2019年Elsevier Inc.的普遍性能力和高效率,从而优于现有的NR IQA方法。版权所有。

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