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Multi-task Deep Learning for No-Reference Screen Content Image Quality Assessment

机译:多任务深度学习无参考屏幕内容图像质量评估

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The past decades have witnessed growing development of image quality assessment (IQA) for natural images (NIs). However, since screen content images (SCIs) exhibit different visual characteristics from the NIs, few of NIs-oriented IQA methods can be directly applied on SCIs. In this paper, we present a quality prediction approach specially designed for SCIs, which is based on multi-task deep learning. First, we split a SCI into 32 × 32 patches and design a novel convolutional neural network (CNN) to predict the quality score of each SCI patch. Then, we propose an effective adaptive weighting algorithm for patch-level quality score aggregation. The proposed CNN is built on an end-to-end multitask learning framework, which integrates the histogram of oriented gradient (HOG) features prediction task to the SCI quality prediction task for learning a better mapping between input SCI patch and its quality score. The proposed adaptive weighting algorithm for patch-level quality score aggregation further improves the representation ability of each SCI patch. Experimental results on two-largest SCI-oriented databases demonstrate that our proposed method is superior to the state-of-the-art no-reference IQA methods and most of the full-reference IQA methods.
机译:过去几十年目睹了自然图像(NIS)的图像质量评估(IQA)的日益增长的发展。然而,由于筛选内容图像(SCI)从NIS表现出不同的视觉特性,因此可以直接在SCI上直接施加NIS导向的IQA方法中的一些。在本文中,我们提出了专为SCI设计的优质预测方法,这是基于多任务深度学习的。首先,我们将SCI分成32×32个补丁并设计一种新型卷积神经网络(CNN),以预测每个SCI补丁的质量得分。然后,我们提出了一种有效的自适应加权算法,用于补丁级质量分数聚合。所提出的CNN是基于端到端的多任务学习框架构建的,该框架集成了面向导向梯度(HOG)的直方图,其特征在于学习输入SCI补丁和其质量分数之间更好地映射的SCI质量预测任务。提出的补丁级质量分数聚合的自适应加权算法进一步提高了每个SCI补丁的表示能力。实验结果对二大SCI导向的数据库表明,我们的提出方法优于最先进的无参考IQA方法和大多数全引用IQA方法。

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