...
首页> 外文期刊>Signal Processing. Image Communication: A Publication of the the European Association for Signal Processing >No-reference image quality assessment using statistical characterization in the shearlet domain
【24h】

No-reference image quality assessment using statistical characterization in the shearlet domain

机译:使用小波域中的统计表征进行无参考图像质量评估

获取原文
获取原文并翻译 | 示例

摘要

Image and video quality measurements are crucial for many applications, such as acquisition, compression, transmission, enhancement, and reproduction. Nowadays, no-reference (NR) image quality assessment (IQA) methods have drawn extensive attention because it does not rely on any information of original images. However, most of the conventional NR-IQA methods are designed only for one or a set of predefined specific image distortion types, which are unlikely to generalize for evaluating image/video distorted with other types of distortions. In order to estimate a wide range of image distortions, in this paper, we present an efficient general-purpose NR-IQA algorithm which is based on a new multiscale directional transform (shearlet transform) with a strong ability to localize distributed discontinuities. This is mainly based on distorted natural image that leads to significant variation in the spread discontinuities in all directions. Thus, the statistical property of the distorted image is significantly different from that of natural images in fine scale shearlet coefficients, which are referred to as 'distorted parts'. However, some 'natural parts' are reserved in coarse scale shearlet coefficients. The algorithm relies on utilizing the natural parts to predict the natural behavior of distorted parts. The predicted parts act as 'reference' and the difference between the reference and distorted parts is used as an indicator to predict the image quality. In order to achieve this goal, we modify the general sparse autoencoder to serve as a predictor to get the predicted parts from natural parts. By translating the NR-IQA problem into classification problem, the predicted parts and distorted parts are utilized to form features and the differences between them are identified by softmax classifier. The resulting algorithm, which we name SHeArlet based No-reference Image quality Assessment (SHANIA), is tested on several database (LIVE, Multiply Distorted LIVE and TID2008) and shown to be suitable for many common distortions, consistent with subjective assessment and comparable to full-reference IQA methods and state-of-the-art general purpose NR-IQA algorithms.
机译:图像和视频质量测量对于许多应用至关重要,例如采集,压缩,传输,增强和再现。如今,无参考(NR)图像质量评估(IQA)方法已引起广泛关注,因为它不依赖于原始图像的任何信息。但是,大多数常规NR-IQA方法仅针对一种或一组预定义的特定图像失真类型进行设计,这不太可能普遍用于评估因其他类型的失真而失真的图像/视频。为了估计大范围的图像失真,在本文中,我们提出了一种有效的通用NR-IQA算法,该算法基于一种新的多尺度方向变换(切尔利特变换),具有强大的定位不连续性的能力。这主要基于扭曲的自然图像,该图像导致各个方向上的扩展不连续性发生明显变化。因此,失真图像的统计特性与自然图像的统计特性在细尺度的小波系数上有显着差异,这被称为“失真部分”。但是,某些“自然部分”保留在粗尺度小波系数中。该算法依靠利用自然零件来预测变形零件的自然行为。预测部分充当“参考”,参考部分和失真部分之间的差异用作预测图像质量的指标。为了实现此目标,我们修改了通用稀疏自动编码器以用作从自然部分中获取预测部分的预测器。通过将NR-IQA问题转化为分类问题,利用预测的零件和变形的零件形成特征,并通过softmax分类器识别它们之间的差异。生成的算法(我们命名为基于SHeArlet的无参考图像质量评估(SHANIA))已在多个数据库(LIVE,Multiply Distorted LIVE和TID2008)上进行了测试,结果证明适用于许多常见的失真,与主观评估相一致并且具有可比性。全参考IQA方法和最新的通用NR-IQA算法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号