Blind image quality assessment (BIQA), which aims to accurately predict the image quality without any pristine reference information, has been extensively concerned in the past decades. Especially, with the help of deep neural networks, great progress has been achieved. However, it remains less investigated on BIQA for night-time images (NTIs) which usually suffers from complicated authentic distortions such as reduced visibility, low contrast, additive noises, and color distortions. These diverse authentic degradations particularly challenges the design of effective deep neural network for blind NTI quality evaluation (NTIQE). In this paper, we propose a novel deep decomposition and bilinear pooling network (DDB-Net) to better address this issue. The DDB-Net contains three modules, i.e., an image decomposition module, a feature encoding module, and a bilinear pooling module. The image decomposition module is inspired by the Retinex theory and involves decoupling the input NTI into an illumination layer component responsible for illumination information and a reflection layer component responsible for content information. Then, the feature encoding module involves learning feature representations of degradations that are rooted in the two decoupled components separately. Finally, by modeling illumination-related and content-related degradations as two-factor variations, the two feature sets are bilinearly pooled together to form a unified representation for quality prediction. The superiority of the proposed DDB-Net has been well validated by extensive experiments on several benchmark datasets. The source code will be made available soon.
翻译:盲人图像质量评估(BIQA)旨在准确预测图像质量,而没有任何原始参考信息,但在过去几十年中一直受到广泛关注。特别是,在深神经网络的帮助下,已经取得了巨大进展。然而,对于夜间图像(NTIs),在BIQA上,它仍然较少调查,因为夜间图像通常受到复杂的真实扭曲,如可见度降低、对比度低、添加噪音和色彩扭曲。这些不同的真实降解,特别对设计有效的深神经网络网络以进行盲NTI质量评估(NTIQE)提出了挑战。在本文中,我们建议建立一个新的深度分解和双线联合网络(DDB-Net)网络,以便更好地解决这一问题。DDDD-Net包含三个模块,即图像分解模块、特征编码模块和双线集合模块。图像分解模块受Retinex理论的启发,涉及将NTIS的输入分解成一个污染层,负责信息及内容的反射层组件。然后,功能化模块模块包含两个与降解有关的特性的模型,最终的分解为两组。