IEEE Trans Image Process. 2016 Sep;25(9):4286-4297. doi: 10.1109/TIP.2016.2585884. Epub 2016 Jun 28.
During the past few years, there have been various kinds of content-aware image retargeting operators proposed for image resizing. However, the lack of effective objective retargeting quality assessment metrics limits the further development of image retargeting techniques. Different from traditional image quality assessment (IQA) metrics, the quality degradation during image retargeting is caused by artificial retargeting modifications, and the difficulty for image retargeting quality assessment (IRQA) lies in the alternation of the image resolution and content, which makes it impossible to directly evaluate the quality degradation like traditional IQA. In this paper, we interpret the image retargeting in a unified framework of resampling grid generation and forward resampling. We show that the geometric change estimation is an efficient way to clarify the relationship between the images. We formulate the geometric change estimation as a backward registration problem with Markov random field and provide an effective solution. The geometric change aims to provide the evidence about how the original image is resized into the target image. Under the guidance of the geometric change, we develop a novel aspect ratio similarity (ARS) metric to evaluate the visual quality of retargeted images by exploiting the local block changes with a visual importance pooling strategy. Experimental results on the publicly available MIT RetargetMe and CUHK data sets demonstrate that the proposed ARS can predict more accurate visual quality of retargeted images compared with the state-of-the-art IRQA metrics.
在过去几年中,已经提出了各种用于图像缩放的内容感知图像重定目标算子。然而,缺乏有效的客观重定目标质量评估指标限制了图像重定目标技术的进一步发展。与传统图像质量评估(IQA)指标不同,图像重定目标过程中的质量下降是由人工重定目标修改引起的,并且图像重定目标质量评估(IRQA)的困难在于图像分辨率和内容的变化,这使得无法像传统IQA那样直接评估质量下降。在本文中,我们在重采样网格生成和前向重采样的统一框架中解释图像重定目标。我们表明,几何变化估计是阐明图像之间关系的有效方法。我们将几何变化估计表述为具有马尔可夫随机场的反向配准问题,并提供了一种有效的解决方案。几何变化旨在提供有关原始图像如何缩放到目标图像的证据。在几何变化的指导下,我们开发了一种新颖的宽高比相似性(ARS)指标,通过利用具有视觉重要性池化策略的局部块变化来评估重定目标图像的视觉质量。在公开可用的麻省理工学院RetargetMe和香港中文大学数据集上的实验结果表明,与现有最先进的IRQA指标相比,所提出的ARS可以更准确地预测重定目标图像的视觉质量。