Deep visual models have widespread applications in high-stake domains. Hence, their black-box nature is currently attracting a large interest of the research community. We present the first survey in Explainable AI that focuses on the methods and metrics for interpreting deep visual models. Covering the landmark contributions along the state-of-the-art, we not only provide a taxonomic organization of the existing techniques, but also excavate a range of evaluation metrics and collate them as measures of different properties of model explanations. Along the insightful discussion on the current trends, we also discuss the challenges and future avenues for this research direction.
翻译:深视模型在高接触域具有广泛应用性。 因此,其黑箱性质目前吸引了研究界的极大兴趣。 我们以可解释的AI 中介绍第一次调查,重点是解释深视模型的方法和衡量标准。 覆盖了最新技术的里程碑式贡献,我们不仅提供了现有技术的分类组织,而且还挖掘了一系列评价指标,并把它们整理为模型解释不同特性的衡量标准。 在对当前趋势的深刻讨论的同时,我们还讨论了这一研究方向的挑战和未来途径。