Quality Assessment of Image Retargeting based on Importance of Objects

Chun-see Tsao, Po-Chyi Su
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Abstract

Many novel image retargeting algorithms have been proposed to adjust the size of images to suit different display devices while minimizing perceptual distortion. Assessing the quality of retargeted images has become an important task for developing such schemes. In this study, we propose an image retargeting quality assessment method based on the importance of objects in an image. We utilize semantic segmentation to classify pixels and assign them different importance values representing the sensitivity of human eyes to distortion. A visual saliency map is created to better match the subjective perception of humans and is then used in the "Aspect Ratio Similarity" measurement to improve its accuracy. Since human eyes tend to be more sensitive to the information loss in images without prominent foreground objects, we introduce an information loss adjustment strategy for such images. The experimental results demonstrate that the proposed method is effective in evaluating image retargeting algorithms and outperforms existing quality assessment methods.
基于目标重要性的图像重定位质量评价
许多新的图像重定向算法被提出来调整图像的大小以适应不同的显示设备,同时最小化感知失真。评估重定位图像的质量已成为开发此类方案的重要任务。在本研究中,我们提出了一种基于图像中物体重要性的图像重定向质量评估方法。我们利用语义分割对像素进行分类,并赋予它们不同的重要值,代表人眼对失真的敏感度。创建视觉显著性图以更好地匹配人类的主观感知,然后用于“宽高比相似性”测量以提高其准确性。由于人眼对前景不明显的图像的信息丢失更为敏感,我们引入了一种针对前景不明显的图像的信息丢失调整策略。实验结果表明,该方法能够有效地评价图像重定位算法,并优于现有的质量评价方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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