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Investigating Potential Combinations of Visual Features towards Improvement of Full-Reference and No-Reference Image Quality Assessment

机译:研究视觉特征的潜在组合,以改善全参考和无参考图像质量评估

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摘要

Objective assessment of image quality is the process of automatic assignment of a scalar score to an image such that the rating or score corresponds to the score provided by the Human Visual System (HVS). Despite extensive studies since the last two decades, it remains a challenging problem in image processing due to the presence of different types of distortions and limited knowledge of the HVS. Existing approaches for assessing the perceptual quality of images have relied on a number of methodologies that directly apply known properties of the HVS, construct hypotheses considering the HVS as a blackbox and use hybrid approaches that apply both of the techniques. All of these methodologies have relied on different types of visual features for Image Quality Assessment (IQA). In this dissertation, we have studied the problem of different types of IQA from the feature extraction point of view and showed that effective combinations of simple visual features can be used to develop IQA approaches having competitive performance with the state-of-the-art. Our work is divided into four parts each having the final goal to bring about performance improvement in the areas of Full-Reference (FR) and No-Reference (NR)-IQA. We have gradually moved from FR to NR-IQA in the works presented in this dissertation. First, we propose improvements in two existing FR-IQA techniques by introducing changes in the features used. Next, we propose a new FR-IQA technique by extracting image saliency as global features and combining them with the local features of gradient and variance to improve the performance. For NR-IQA, we propose a novel technique for sharpness detection in natural images using simple features. The performance of this method provides improvement over the existing methods. After working with the specific purpose NR-IQA, we propose a general purpose technique using suitable features such that no training with pristine or distorted images or subjective quality scores is required. This technique, despite having no reliance on training, provides competitive performance with the state-of-the-art techniques. The main contribution of the dissertation lies in identification and analysis of effective features and their combinations for improving three different sub-areas of IQA.
机译:图像质量的客观评估是将标量分数自动分配给图像的过程,以使评分或分数与人类视觉系统(HVS)提供的分数相对应。尽管在过去的二十年中进行了广泛的研究,但是由于存在不同类型的失真以及对HVS的了解有限,因此图像处理仍然是一个具有挑战性的问题。现有的用于评估图像的感知质量的方法已经依赖于许多方法,这些方法直接应用HVS的已知属性,构造将HVS视为黑匣子的假设,并使用同时应用这两种技术的混合方法。所有这些方法都依靠不同类型的视觉功能进行图像质量评估(IQA)。在本文中,我们从特征提取的角度研究了不同类型的IQA问题,并表明简单视觉特征的有效组合可用于开发具有最新性能的IQA方法。我们的工作分为四个部分,每个部分的最终目标是在全参考(FR)和无参考(NR)-IQA领域中实现性能改进。在本文提出的工作中,我们已逐渐从FR转向NR-IQA。首先,我们通过引入所用功能的变化来提出对两种现有FR-IQA技术的改进。接下来,我们提出了一种新的FR-IQA技术,该技术通过提取图像显着性作为全局特征并将其与梯度和方差的局部特征相结合来提高性能。对于NR-IQA,我们提出了一种使用简单功能在自然图像中进行清晰度检测的新技术。该方法的性能提供了对现有方法的改进。在使用了特定目的的NR-IQA之后,我们提出了使用适当功能的通用技术,这样就不需要使用原始图像或失真图像或主观质量评分进行训练。尽管不依赖培训,但该技术仍可以通过最先进的技术提供出色的性能。论文的主要贡献在于对有效特征及其组合的识别和分析,以改善IQA的三个不同子领域。

著录项

  • 作者

    Saha Ashirbani;

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  • 年度 2015
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  • 原文格式 PDF
  • 正文语种 English
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