Deep learning-based quality metrics have recently given significant improvement in Image Quality Assessment (IQA). In the field of stereoscopic vision, information is evenly distributed with slight disparity to the left and right eyes. However, due to asymmetric distortion, the objective quality ratings for the left and right images would differ, necessitating the learning of unique quality indicators for each view. Unlike existing stereoscopic IQA measures which focus mainly on estimating a global human score, we suggest incorporating left, right, and stereoscopic objective scores to extract the corresponding properties of each view, and so forth estimating stereoscopic image quality without reference. Therefore, we use a deep multi-score Convolutional Neural Network (CNN). Our model has been trained to perform four tasks: First, predict the left view's quality. Second, predict the quality of the left view. Third and fourth, predict the quality of the stereo view and global quality, respectively, with the global score serving as the ultimate quality. Experiments are conducted on Waterloo IVC 3D Phase 1 and Phase 2 databases. The results obtained show the superiority of our method when comparing with those of the state-of-the-art. The implementation code can be found at: https://github.com/o-messai/multi-score-SIQA
翻译:最近,基于深层次学习的质量指标在图像质量评估(IQA)方面有了显著改善。在立体视觉领域,信息分布均匀,左眼和右眼之间略有差异。然而,由于不对称的扭曲,左面和右面图像的客观质量评级将有所不同,需要为每种观点学习独特的质量指标。与主要侧重于估计全球人类得分的现有立体、右面和立体质量指标衡量方法不同,我们建议将左面、右面和立体目标分数合并,以提取每种观点的相应属性,从而不参考地估算立体图像质量。因此,我们使用深多极相交神经网络(CNN)对信息进行均衡分布。我们的模型已经接受了四项任务的培训:第一,预测左面和右面图像的质量。第二,预测左面观点的质量。第三和第四,分别以全球得分作为最终质量。在Waterloo IVC 3D 阶段和第二阶段数据库中进行了实验。我们获得的结果显示我们的方法的优越性,在比较执行者-Absma-Commaisal 时,可以比较执行者-Q。