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Natural scene statistics model independent no-reference image quality assessment using patch based discrete cosine transform

机译:自然场景统计模型独立无参考图像质量评估使用贴片离散余弦变换

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摘要

Most of no-reference image quality assessment (NR-IQA) techniques reported in literature have utilized transform coefficients, which are modeled using curve fitting to extract features based on natural scene statistics (NSS). The performance of NR-IQA techniques that utilize curve-fitting suffers from degradation in performance because the distribution of curve fitted NSS features deviate from the statistical distribution of a distorted image. Although deep convolutional neural networks (DCNNs) have been used for NR-IQA that are NSS model-independent but their performance is dependent upon the size of training data. The available datasets for NR-IQA are small, therefore data augmentation is used that affects the performance of DCNN based NR-IQA techniques and is also computationally expensive. This work proposes a new patch-based NR-IQA technique, which utilizes features extracted from discrete cosine transform coefficients. The proposed technique is curve fitting independent and helps in avoiding errors in the statistical distribution of NSS features. It relies on global statistics to estimate image quality based on local patches, which allow us to decompose the statistics of images. The proposed technique divides the image into patches and extracts nine handcrafted features i.e., entropy, mean, variance, skewness, kurtosis, mobility, band power, energy, complexity, and peak to peak value. The extracted features are used with a support vector regression model to predict the image quality score. The experimental results have shown that the proposed technique is database and image content-independent. It shows better performance over a majority of distortion types and on images taken in real-time.
机译:文献中报告的大多数无参考图像质量评估(NR-IQA)技术已经利用了转换系数,这些技术使用曲线拟合建模以基于自然场景统计(NSS)提取特征。利用曲线拟合的NR-IQA技术的性能遭受性能的降低,因为曲线装配NSS特征的分布偏离扭曲图像的统计分布。虽然深度卷积神经网络(DCNNS)已被用于NR-IQA,但NSS模型无关,但它们的性能取决于培训数据的大小。 NR-IQA的可用数据集很小,因此使用数据增强,从而影响基于DCNN的NR-IQA技术的性能,并且也在计算昂贵。这项工作提出了一种基于补丁的NR-IQA技术,它利用从离散余弦变换系数提取的功能。所提出的技术是曲线拟合独立的,有助于避免NSS特征的统计分布中的错误。它依赖于全局统计数据来基于本地修补程序估算图像质量,这使我们能够分解图像的统计信息。所提出的技术将图像划分为贴片,提取九个手工特征,即熵,平均值,方差,偏斜,峰值,移动性,带功率,能量,复杂性和峰值到峰值。提取的特征与支持向量回归模型一起使用,以预测图像质量分数。实验结果表明,所提出的技术是数据库和图像无关。它显示出在大多数失真类型和实时拍摄的图像上的性能更好。

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