论文标题

细粒压缩图像的感知质量评估

Perceptual Quality Assessment for Fine-Grained Compressed Images

论文作者

Zhang, Zicheng, Sun, Wei, Wu, Wei, Chen, Ying, Min, Xiongkuo, Zhai, Guangtao

论文摘要

近年来,图像存储和传输系统的快速发展,其中图像压缩起着重要作用。一般而言,开发图像压缩算法是为了确保以有限的比特速率确保良好的视觉质量。但是,由于采用不同的压缩优化方法,压缩图像可能具有不同级别的质量,需要进行量化评估。如今,主流全参考度量(FR)指标可有效预测在粗粒水平下压缩图像的质量(压缩图像的比特速率差异很明显),但是,对于细粒度的压缩图像,其比特率差异非常微妙。因此,为了更好地提高经验质量(QOE)并为压缩算法提供有用的指导,我们建议对细粒级别的压缩图像进行全参考图像质量评估(FR-IQA)方法。具体而言,首先将参考图像和压缩图像转换为$ ycbcr $颜色空间。梯度特征是从对压缩伪影敏感的区域中提取的。然后,我们采用对数 - 盖尔转换来进一步分析纹理差异。最后,获得的功能融合成质量分数。提出的方法在细粒度的压缩图像质量评估(FGIQA)数据库中进行了验证,该数据库尤其是用于评估近距离比特率的压缩图像质量的构建。实验结果表明,我们的公制优于FGIQA数据库上的主流FR-IQA指标。我们还可以在其他常用的压缩IQA数据库上测试我们的方法,结果表明,我们的方法在粗粒度的压缩IQA数据库上也获得了竞争性能。

Recent years have witnessed the rapid development of image storage and transmission systems, in which image compression plays an important role. Generally speaking, image compression algorithms are developed to ensure good visual quality at limited bit rates. However, due to the different compression optimization methods, the compressed images may have different levels of quality, which needs to be evaluated quantificationally. Nowadays, the mainstream full-reference (FR) metrics are effective to predict the quality of compressed images at coarse-grained levels (the bit rates differences of compressed images are obvious), however, they may perform poorly for fine-grained compressed images whose bit rates differences are quite subtle. Therefore, to better improve the Quality of Experience (QoE) and provide useful guidance for compression algorithms, we propose a full-reference image quality assessment (FR-IQA) method for compressed images of fine-grained levels. Specifically, the reference images and compressed images are first converted to $YCbCr$ color space. The gradient features are extracted from regions that are sensitive to compression artifacts. Then we employ the Log-Gabor transformation to further analyze the texture difference. Finally, the obtained features are fused into a quality score. The proposed method is validated on the fine-grained compression image quality assessment (FGIQA) database, which is especially constructed for assessing the quality of compressed images with close bit rates. The experimental results show that our metric outperforms mainstream FR-IQA metrics on the FGIQA database. We also test our method on other commonly used compression IQA databases and the results show that our method obtains competitive performance on the coarse-grained compression IQA databases as well.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源