Perspective: Leveraging Human Understanding for Identifying and Characterizing Image Atypicality

Shahin Sharifi Noorian, S. Qiu, Burcu Sayin, Agathe Balayn, U. Gadiraju, Jie Yang, A. Bozzon
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Abstract

High-quality data plays a vital role in developing reliable image classification models. Despite that, what makes an image difficult to classify remains an unstudied topic. This paper provides a first-of-its-kind, model-agnostic characterization of image atypicality based on human understanding. We consider the setting of image classification “in the wild”, where a large number of unlabeled images are accessible, and introduce a scalable and effective human computation approach for proactive identification and characterization of atypical images. Our approach consists of i) an image atypicality identification and characterization task that presents to the human worker both a local view of visually similar images and a global view of images from the class of interest and ii) an automatic image sampling method that selects a diverse set of atypical images based on both visual and semantic features. We demonstrate the effectiveness and cost-efficiency of our approach through controlled crowdsourcing experiments and provide a characterization of image atypicality based on human annotations of 10K images. We showcase the utility of the identified atypical images by testing state-of-the-art image classification services against such images and provide an in-depth comparative analysis of the alignment between human- and machine-perceived image atypicality. Our findings have important implications for developing and deploying reliable image classification systems.
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透视:利用人类的理解识别和表征图像的非典型性
高质量的数据对于建立可靠的图像分类模型至关重要。尽管如此,是什么使图像难以分类仍然是一个未研究的话题。本文提供了一种基于人类理解的图像非典型性的首个与模型无关的表征。我们考虑了“野外”图像分类的设置,其中大量未标记的图像是可访问的,并引入了一种可扩展和有效的人工计算方法来主动识别和表征非典型图像。我们的方法包括i)图像非典型性识别和表征任务,向人类工作人员展示视觉上相似图像的局部视图和感兴趣类别图像的全局视图;ii)自动图像采样方法,根据视觉和语义特征选择不同的非典型图像集。我们通过控制众包实验证明了我们方法的有效性和成本效益,并提供了基于10K图像的人工注释的图像非典型化特征。我们通过测试最先进的图像分类服务来展示识别的非典型图像的效用,并对人类和机器感知的图像非典型性之间的一致性进行了深入的比较分析。我们的发现对开发和部署可靠的图像分类系统具有重要意义。
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