Doermann David
IEEE Trans Image Process. 2016 Sep;25(9):4444-4457. doi: 10.1109/TIP.2016.2585880. Epub 2016 Jun 28.
Blind image quality assessment (BIQA) research aims to develop a perceptual model to evaluate the quality of distorted images automatically and accurately without access to the non-distorted reference images. The state-of-the-art general purpose BIQA methods can be classified into two categories according to the types of features used. The first includes handcrafted features which rely on the statistical regularities of natural images. These, however, are not suitable for images containing text and artificial graphics. The second includes learning-based features which invariably require large codebook or supervised codebook updating procedures to obtain satisfactory performance. These are time-consuming and not applicable in practice. In this paper, we propose a novel general purpose BIQA method based on high order statistics aggregation (HOSA), requiring only a small codebook. HOSA consists of three steps. First, local normalized image patches are extracted as local features through a regular grid, and a codebook containing 100 codewords is constructed by K-means clustering. In addition to the mean of each cluster, the diagonal covariance and coskewness (i.e., dimension-wise variance and skewness) of clusters are also calculated. Second, each local feature is softly assigned to several nearest clusters and the differences of high order statistics (mean, variance and skewness) between local features and corresponding clusters are softly aggregated to build the global quality aware image representation. Finally, support vector regression is adopted to learn the mapping between perceptual features and subjective opinion scores. The proposed method has been extensively evaluated on ten image databases with both simulated and realistic image distortions, and shows highly competitive performance to the state-of-the-art BIQA methods.
盲图像质量评估(BIQA)研究旨在开发一种感知模型,以便在无法获取未失真参考图像的情况下自动且准确地评估失真图像的质量。根据所使用特征的类型,当前最先进的通用BIQA方法可分为两类。第一类包括依赖自然图像统计规律的手工特征。然而,这些特征不适用于包含文本和人工图形的图像。第二类包括基于学习的特征,这些特征总是需要大型码本或监督码本更新过程才能获得令人满意的性能。这些过程既耗时又在实践中不适用。在本文中,我们提出了一种基于高阶统计聚合(HOSA)的新型通用BIQA方法,该方法仅需要一个小型码本。HOSA包括三个步骤。首先,通过规则网格提取局部归一化图像块作为局部特征,并通过K均值聚类构建一个包含100个码字的码本。除了每个聚类的均值外,还计算聚类的对角协方差和余偏度(即维度方向的方差和偏度)。其次,将每个局部特征软分配到几个最近的聚类,并将局部特征与相应聚类之间的高阶统计量(均值、方差和偏度)差异进行软聚合,以构建全局质量感知图像表示。最后,采用支持向量回归来学习感知特征与主观意见得分之间的映射。所提出的方法已在十个包含模拟和真实图像失真的图像数据库上进行了广泛评估,并与当前最先进的BIQA方法相比显示出极具竞争力的性能。