Livieris Ioannis E, Pintelas Emmanuel, Kiriakidou Niki, Pintelas Panagiotis
Department of Statistics & Insurance, University of Piraeus, GR 185-34 Piraeus, Greece.
Department of Mathematics, University of Patras, GR 265-00 Patras, Greece.
J Imaging. 2023 Oct 14;9(10):224. doi: 10.3390/jimaging9100224.
With the proliferation of image-based applications in various domains, the need for accurate and interpretable image similarity measures has become increasingly critical. Existing image similarity models often lack transparency, making it challenging to understand the reasons why two images are considered similar. In this paper, we propose the concept of explainable image similarity, where the goal is the development of an approach, which is capable of providing similarity scores along with visual factual and counterfactual explanations. Along this line, we present a new framework, which integrates Siamese Networks and Grad-CAM for providing explainable image similarity and discuss the potential benefits and challenges of adopting this approach. In addition, we provide a comprehensive discussion about factual and counterfactual explanations provided by the proposed framework for assisting decision making. The proposed approach has the potential to enhance the interpretability, trustworthiness and user acceptance of image-based systems in real-world image similarity applications.
随着基于图像的应用在各个领域的不断涌现,对准确且可解释的图像相似性度量的需求变得越来越关键。现有的图像相似性模型往往缺乏透明度,这使得理解为何两张图像被认为相似变得具有挑战性。在本文中,我们提出了可解释图像相似性的概念,其目标是开发一种方法,该方法能够在提供相似性分数的同时,给出视觉上的事实性和反事实性解释。沿着这一思路,我们提出了一个新框架,该框架整合了孪生网络和Grad-CAM以提供可解释的图像相似性,并讨论了采用这种方法的潜在益处和挑战。此外,我们还对所提出的框架为辅助决策提供的事实性和反事实性解释进行了全面讨论。所提出的方法有潜力在实际的图像相似性应用中提高基于图像的系统的可解释性、可信度和用户接受度。