User-guided global explanations for deep image recognition: A user study

Applied AI letters Pub Date : 2021-10-19 DOI:10.1002/ail2.42
Mandana Hamidi-Haines, Zhongang Qi, Alan Fern, Fuxin Li, Prasad Tadepalli
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Abstract

We study a user-guided approach for producing global explanations of deep networks for image recognition. The global explanations are produced with respect to a test data set and give the overall frequency of different “recognition reasons” across the data. Each reason corresponds to a small number of the most significant human-recognizable visual concepts used by the network. The key challenge is that the visual concepts cannot be predetermined and those concepts will often not correspond to existing vocabulary or have labeled data sets. We address this issue via an interactive-naming interface, which allows users to freely cluster significant image regions in the data into visually similar concepts. Our main contribution is a user study on two visual recognition tasks. The results show that the participants were able to produce a small number of visual concepts sufficient for explanation and that there was significant agreement among the concepts, and hence global explanations, produced by different participants.

Abstract Image

深度图像识别的用户导向全局解释:用户研究
我们研究了一种用户导向的方法,用于生成用于图像识别的深度网络的全局解释。全局解释是根据测试数据集产生的,并给出了数据中不同“识别原因”的总体频率。每个原因对应于网络使用的少数最重要的人类可识别的视觉概念。关键的挑战是,视觉概念不能预先确定,这些概念通常不对应于现有的词汇表或有标记的数据集。我们通过交互式命名界面解决了这个问题,该界面允许用户自由地将数据中的重要图像区域聚类到视觉上相似的概念中。我们的主要贡献是对两个视觉识别任务的用户研究。结果表明,参与者能够产生少量足以解释的视觉概念,并且这些概念之间存在显著的一致性,因此不同参与者产生的整体解释。
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