The 4K content can deliver a more immersive visual experience to consumers due to the huge improvement of spatial resolution. However, existing blind image quality assessment (BIQA) methods are not suitable for the original and upscaled 4K contents due to the expanded resolution and specific distortions. In this paper, we propose a deep learning-based BIQA model for 4K content, which on one hand can recognize true and pseudo 4K content and on the other hand can evaluate their perceptual visual quality. Considering the characteristic that high spatial resolution can represent more abundant high-frequency information, we first propose a Grey-level Co-occurrence Matrix (GLCM) based texture complexity measure to select three representative image patches from a 4K image, which can reduce the computational complexity and is proven to be very effective for the overall quality prediction through experiments. Then we extract different kinds of visual features from the intermediate layers of the convolutional neural network (CNN) and integrate them into the quality-aware feature representation. Finally, two multilayer perception (MLP) networks are utilized to map the quality-aware features into the class probability and the quality score for each patch respectively. The overall quality index is obtained through the average pooling of patch results. The proposed model is trained through the multi-task learning manner and we introduce an uncertainty principle to balance the losses of the classification and regression tasks. The experimental results show that the proposed model outperforms all compared BIQA metrics on four 4K content quality assessment databases.
翻译:由于空间分辨率的大幅改进,4K内容可以向消费者提供更隐蔽的视觉经验。然而,现有的盲人图像质量评估方法(BIQA)由于分辨率的扩大和具体的扭曲,不适合原始和升级的4K内容。在本文中,我们建议为4K内容建立一个基于深层次学习的BIQA模型,该模型一方面可以识别真实和假4K内容,另一方面可以评价其视觉质量。考虑到高空间分辨率能够代表更多高频信息的特点,我们首先提议基于质谱的灰级共同度矩阵(GLCM)基于质谱复杂度,从4K图像中选择三个有代表性的图像补丁,这可以降低计算复杂性,并证明对通过实验对总体质量预测非常有效。然后,我们从革命神经网络的中间层提取不同类型的视觉特征,并将其纳入质量认知特征表达中。最后,我们利用两个多层次认知(MLP)网络将质量测试特性特征绘制成一个基于质谱的模型,从4K图像质量模型中挑选出四个质量原则。我们经过培训的测试的模型质量分级质量评分数。我们通过学习的模型,通过学习的每个分级计算结果,分别展示了四个质量评分。