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Toward a Taxonomy and Computational Models of Abnormalities in Images
Accepted manuscript   Open access   Peer reviewed

Toward a Taxonomy and Computational Models of Abnormalities in Images

Babak Saleh, Ahmed Elgammal, Jacob Feldman and Ali Farhadi
Proceedings of the Thirtieth AAAI Conference on Artificial Intelligence and the Twenty-Eighth Innovative Applications of Artificial Intelligence Conference
Phoenix, AZ, 02/2016
02/2016
DOI:
https://doi.org/10.7282/T3319XTQ

Abstract

Abnormal images Image processing Taxonomies Computer Vision
The human visual system can spot an abnormal image, and reason about what makes it strange. This task has not received enough attention in computer vision. In this paper we study various types of atypicalities in images in a more comprehensive way than has been done before. We propose a new dataset of abnormal images showing a wide range of atypicalities. We design human subject experiments to discover a coarse taxonomy of the reasons for abnormality. Our experiments reveal three major categories of abnormality: object-centric, scene-centric, and contextual. Based on this taxonomy, we propose a comprehensive computational model that can predict all different types of abnormality in images and outperform prior arts in abnormality recognition.
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