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首页> 外文期刊>The international arab journal of information technology >Measure of Singular Value Decomposition (M-SVD) based Quality Assessment for Medical Images with Degradation
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Measure of Singular Value Decomposition (M-SVD) based Quality Assessment for Medical Images with Degradation

机译:基于奇异值分解(M-SVD)质量评估的降解测量

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摘要

We use images in several important areas such as military, health, security, and science. Images can be distorted during the capturing, recording, processing, and storing. Image quality metrics are the techniques to measure the quality and quality accuracy level of the images and videos. Most of the quality measurement algorithms does not affect by small distortions in the image. Magnetic Resonance Imaging (MRI), Computed Tomography (CT), and Ultrasonic Imaging (UI) are widely used in the health sector. Because of several reasons it might be artifacts in the medical images. Doctor decisions might be affected by these image artifacts. Image quality measurement is an important and challenging area to work on. There are several metrics that have been done in the literature such as mean square error, peak signal-noise ratio, gradient similarity measure, structural similarity index, and universal image quality. Patient information can be an embedded corner of the medical image as a watermark. Watermark can be considered one of the image distortions types. The most common objective evaluation algorithms are simple pixel based which are very unreliable, resulting in poor correlation with the human visual system. In this work, we proposed a new image quality metric which is a Measure of Singular Value Decomposition (M-SVD). Experimental results show that novel M-SVD algorithm gives very promising results against Peak Signal to Noise Ratio (PSNR), the Mean Square Error (MSE), Structural Similarity Index Measures (SSIM), and 3.4. Universal Image Quality (UIQ) assessments in watermarked and distorted images such as histogram equalization, JPEG compression, Gamma Correction, Gaussian Noise, Image Denoising, and Contrast Change.
机译:我们在几个重要领域使用图像,如军事,健康,安全和科学。图像可以在捕获,录制,处理和存储期间失真。图像质量指标是测量图像和视频的质量和质量准确度水平的技术。大多数质量测量算法不会影响图像中的小扭曲。磁共振成像(MRI),计算机断层扫描(CT)和超声成像(UI)广泛用于卫生部门。由于几种原因,它可能是医学图像中的文物。医生决策可能受到这些图像伪影的影响。图像质量测量是一个重要而充满挑战的地区。在文献中有几个度量,例如均方误差,峰值信噪比,梯度相似度,结构相似度指标和通用图像质量等若干指标。患者信息可以是医学图像的嵌入角,作为水印。水印可以被认为是图像扭曲类型之一。最常见的客观评估算法是基于简单的像素,这是非常不可靠的,导致与人类视觉系统相关不良。在这项工作中,我们提出了一种新的图像质量指标,其是奇异值分解的量度(M-SVD)。实验结果表明,新颖的M-SVD算法对峰值信号(PSNR),均方误差(MSE),结构相似性指标措施(SSIM)和3.4来表示非常有前途的结果。通用图像质量(UIQ)在水印和扭曲图像中的评估,如直方图均衡,JPEG压缩,伽马校正,高斯噪声,图像去噪和对比变化。

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