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首页> 外文期刊>IEEE transactions on multimedia >Pre-Attention and Spatial Dependency Driven No-Reference Image Quality Assessment
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Pre-Attention and Spatial Dependency Driven No-Reference Image Quality Assessment

机译:注意力和空间相关性驱动的无参考图像质量评估

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The excessive emulation of the human visual system and the lack of connection between chromatic data and distortion have been the major bottlenecks in developing image quality assessment. To address this issue, we develop a new no-reference (NR) image quality assessment (IQA) metric that accounts for the impact of pre-attention and spatial dependency on the perceived quality of distorted images. The resulting model, dubbed the Pre-attention and Spatial-dependency driven Quality Assessment (PSQA) predictor, introduces the pre-attention theory to emulate early phase visual perception by refining luminance-channel data. Chromatic data are also processed concurrently by transforming images from RGB to the perceptually optimized SCIELAB color space. Considering that the gray-tone spatial dependency matrix conveys important texture properties that are closely related to visual quality, this matrix, as a mathematical solution for subsequent visual process emulation, is calculated along with its statistical features on both gray and color channels. To clarify the influence of different regression procedures on model output, support vector regression and AdaBoosting Back Propagation (BP) neural networks are adopted separately to train the prediction models. We thoroughly evaluated PSQA on four public image quality databases: LIVE, TID2013, CSIQ, and VCL. The experimental results show that PSQA delivers highly competitive performance compared with top-rank NR and full-reference IQA metrics.
机译:人类视觉系统的过度仿真以及彩色数据和失真之间缺乏联系已成为发展图像质量评估的主要瓶颈。为了解决此问题,我们开发了一种新的无参考(NR)图像质量评估(IQA)度量标准,该度量标准说明了预先注意和空间依赖性对失真图像的感知质量的影响。由此产生的模型被称为“预注意和空间依赖性驱动的质量评估(PSQA)预测器”,它引入了“预注意”理论来通过细化亮度通道数据来模拟早期视觉感知。色度数据也可以通过将图像从RGB转换为经过感知优化的SCIELAB颜色空间来同时处理。考虑到灰阶空间相关性矩阵传达了与视觉质量密切相关的重要纹理属性,该矩阵作为后续视觉过程仿真的数学解决方案,连同其在灰色和彩色通道上的统计特征一起进行了计算。为了阐明不同回归程序对模型输出的影响,分别采用支持向量回归和AdaBoosting反向传播(BP)神经网络来训练预测模型。我们在四个公共图像质量数据库上对PSQA进行了彻底评估:LIVE,TID2013,CSIQ和VCL。实验结果表明,与顶级NR和全参考IQA指标相比,PSQA具有极高的竞争力。

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