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Perceptual quality assessment of color images using adaptive signal representation

机译:使用自适应信号表示的彩色图像的感知质量评估

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Perceptual image distortion measures can play a fundamental role in evaluating and optimizing imaging systems and image processing algorithms. Many existing measures are formulated to represent "just noticeable differences" (JNDs), as measured in psychophysical experiments on human subjects. But some image distortions, such as those arising from small changes in the intensity of the ambient illumination, are far more tolerable to human observers than those that disrupt the spatial structure of intensities and colors. Here, we introduce a framework in which we quantify these perceptual distortions in terms of "just intolerable differences" (JIDs). As in (Wang & Simoncelli, Proc. ICIP 2005), we first construct a set of spatio-chromatic basis functions to approximate (as a first-order Taylor series) a set of "non-structural" distortions that result from changes in lighting/imaging/viewing conditions. These basis functions are defined on local image patches, and are adaptive, in that they are computed as functions of the undistorted reference image. This set is then augmented with a complete basis arising from a linear approximation of the CIELAB color space. Each basis function is weighted by a scale factor to convert it into units corresponding to JIDs. Each patch of the error image is represented using this weighted overcomplete basis, and the overall distortion metric is computed by summing the squared coefficients over all such (overlapping) patches. We implement an example of this metric, incorporating invariance to small changes in the viewing and lighting conditions, and demonstrate that the resulting distortion values are more consistent with human perception than those produced by CIELAB or S-CIELAB.
机译:感知图像失真措施可以在评估和优化成像系统和图像处理算法中起着基本作用。根据人类受试者的心理物理实验测量,制定了许多现有措施以表示“只是明显的差异”(JNDS)。但是一些图像扭曲,例如来自环境照明强度的小变化的扭曲,对人类观察者来说比那些破坏强度和颜色的空间结构的观察者更容易忍受。在这里,我们介绍了一个框架,其中我们在“只是无法忍受的差异”(JID)方面量化这些感知扭曲。如(王和Simoncelli,Proc。ICIP 2005),我们首先构建一组时空 - 色基函数来近似(作为一阶泰勒系列)一组“非结构性”扭曲,从照明的变化导致/映像/查看条件。这些基本函数在本地图像修补程序上定义,并且是自适应的,因为它们被计算为未置换的参考图像的函数。然后通过从Cielab颜色空间的线性近似引起的完整基础来增强该组。每个基础函数都由比例因子加权,以将其转换为对应于JID的单元。使用该加权超便于基础表示错误图像的每个斑块,并且通过求出所有此类(重叠的)块的平方系数来计算整体失真度量。我们实现了该度量的示例,将不变性的较小变化结合到视图和照明条件下的小变化,并证明所得的变形值与人类感知更一致,而不是Cielab或S-Cielab产生的那些。

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