TDMEC是一种评价视觉系统中获取的彩色图像质量的新方法

A. Samani, K. Panetta, S. Agaian
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引用次数: 8

摘要

在机器人成像系统中,在图像采集过程中,图像经常受到加性高斯噪声和颜色分量中的加性噪声的影响。这些失真可能是由于光照不足、温度过高或电子电路噪声引起的。成像传感器需要对最适合人类视觉系统的图像进行实时增强,通常需要进行参数选择和优化。这是通过使用图像增强的质量度量来实现的。大多数图像质量评估算法需要自己选择参数以最好地评估图像质量。有些测量需要参考图像与测试图像一起使用以进行比较。在本文中,我们引入了一个无参数无参考的度量,可以确定最适合人类视觉感知的视觉愉悦图像。我们提出的度量是算法无关的,因此它可以用于各种增强算法。增强方法的测度可分为基于空间测度和基于变换域测度。在本文中,我们提出了一种DCT变换域增强措施,以评估机器人应用中图像采集过程中受加性噪声影响的彩色图像。与增强方法的空间域度量不同,我们提出的度量独立于图像属性,不需要选择参数。该方法适用于压缩图像和非压缩图像。该度量可以作为灰度图像和彩色图像增强方法的增强度量。
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TDMEC, a new measure for evaluating the image quality of color images acquired in vision systems
In robotic imaging systems, images are often subject to additive Gaussian noise and additive noise in the color components during image acquisition. These distortions can arise from poor illumination, excessive temperatures, or electronic circuit noise. Imaging sensors required to perform real time enhancement of images that is best suited to the human visual system often need parameter selection and optimization. This is achieved by using a quality metric for image enhancement. Most image quality assessment algorithms require parameter selection of their own to best assess the image quality. Some measures require a reference image to be used alongside the test image for comparison. In this article, we introduce a no-parameter no-reference metric that can determine the best visually pleasing image for human visual perception. Our proposed metric is algorithm independent such that it can be utilized for a variety of enhancement algorithms. Measure of enhancement methods can be categorized as either spatial or transform domain based measures. In this article, we present a DCT transform domain measure of enhancement to evaluate color images impacted by additive noise during image acquisition in robotics applications. Unlike the spatial domain measure of enhancement methods, our proposed measure is independent of image attributes and does not require parameter selection. The proposed measure is applicable to compressed and non-compressed images. This measure could be used as an enhancement metric for different image enhancement methods for both grayscale and the color images.
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