Nowadays, image-to-image translation methods, are the state of the art for the enhancement of natural images. Even if they usually show high performance in terms of accuracy, they often suffer from several limitations such as the generation of artifacts and the scalability to high resolutions. Moreover, their main drawback is the completely black-box approach that does not allow to provide the final user with any insight about the enhancement processes applied. In this paper we present a path planning algorithm which provides a step-by-step explanation of the output produced by state of the art enhancement methods, overcoming black-box limitation. This algorithm, called eXIE, uses a variant of the A* algorithm to emulate the enhancement process of another method through the application of an equivalent sequence of enhancing operators. We applied eXIE to explain the output of several state-of-the-art models trained on the Five-K dataset, obtaining sequences of enhancing operators able to produce very similar results in terms of performance and overcoming the huge limitation of poor interpretability of the best performing algorithms.
翻译:目前,图像到图像翻译方法,是提高自然图像的先进程度。即使它们通常在准确性方面表现出很高的性能,它们也经常受到若干限制,例如,艺术品的生成和高分辨率的可缩放性。此外,它们的主要缺点是完全的黑箱方法,它无法向最终用户提供关于所应用的增强过程的任何洞察力。在本文中,我们提出了一个路径规划算法,它提供了对以先进技术的状态产生的产出的逐步解释,克服了黑箱限制。这个算法称为 eXIE,它使用A* 算法的变种,通过应用同等的增强操作者序列来模仿另一种方法的增强过程。我们应用eXIE来解释在五K数据集方面受过训练的几种最先进的模型的输出,获得能够产生非常相似的性能效果的增强操作者序列,并克服最佳算法解释性差的巨大限制。