Several metrics exist to quantify the similarity between images, but they are inefficient when it comes to measure the similarity of highly distorted images. In this work, we propose to empirically investigate perceptual metrics based on deep neural networks for tackling the Image Quality Assessment (IQA) task. We study deep perceptual metrics according to different hyperparameters like the network's architecture or training procedure. Finally, we propose our multi-resolution perceptual metric (MR-Perceptual), that allows us to aggregate perceptual information at different resolutions and outperforms standard perceptual metrics on IQA tasks with varying image deformations. Our code is available at https://github.com/ENSTA-U2IS/MR_perceptual
翻译:在这项工作中,我们提议对基于深神经网络的感知度进行实验性调查,以解决图像质量评估任务。我们根据不同超参数(如网络的结构或培训程序)研究深度感知度。最后,我们提议多分辨率感知度(MR-Pervitual),使我们能够将感知性信息汇集到不同的分辨率上,并超越关于IQA任务的标准感知度,其图像变形各异。我们的代码可以在 https://github.com/ENSTA-U2IS/MR_persitual上查阅。